Energy Conservation of Heat, Ventilation & Air- Conditioning System with the help of Fuzzy Controller
|
|
|
- Julie Powers
- 10 years ago
- Views:
Transcription
1 Energy Conservation of Heat, Ventilation & Air- Conditioning System with the help of Fuzzy Controller i Harkamaljeet Singh Bhullar, Vikram Kumar Kamboj Abstract: The Management and Automation of a Commercial building Heating, Ventilation and Air Conditioning (H.V.A.C) System has got enormous benefits from the use of all the available information sources. The modern H.V.A.C using direct digital control methods have provided useful performance data from the building occupants. The untapped data can be cultivated with the help of modern maintenance management databases. This research work has got the integration and application of these fundamental sources of information, using some modern and novel techniques. The cost and scalability of these techniques can be positively influenced by the recent technological advancement in computing power, sensors and databases. The important theme of this research paper is to increase the computational efficiency and practical usefulness of techniques, via some clever approximations. Index Terms Direct Digital Control (D.D.C.), Energy Conservation, Fuzzy Controller, H.V.A.C., PID Controller 1 INTRODUCTION E NERGY savings and thermal comfort are important for both facility managers and occupants. As a result, they are open to new and innovative ways to improve or even replace currently existing practical methods that might not keep pace with the most recent advancement in the technology. In the large commercial buildings modern Direct Digital Control (D.D.C.) systems are becoming more favorable with the use of new sophisticated hardware. The H.V.A.C System components are used together and monitored remotely from a central location positions. The general trend in the design and commissioning of new commercial buildings includes the new types of these systems. However, larger contingent of older buildings are existed that still use pneumatic H.V.A.C systems. Many facility managers are assigned with the operation of hybrid mix of older pneumatic building controls and modern D.D.C. There are also certain nuances that need to be handled properly, such as the geographical climate, weather, seasonal patterns' influence on the management of H.V.A.C system operation, perimeter vs. core zones, as well as building occupancy trends due to varied shifts and operating schedules. Harkamaljeet Singh Bhuller is Assistant Professor in School of Electronics and Electrical Engineering in Lovely Professional University,(Punjab), India. [email protected] Vikram Kumar Kamboj is Assistant Professor in School of Electronics and Electrical Engineering in Lovely Professional University, Phagwara (Punjab), India. [email protected] Due to the deregulation of energy markets both domestically and abroad, the cost of energy and pricing/rate structures is another variable within the vast array of issues in a complicated operation that all building managers and their technicians must contend with. There are several different business processes as well as physical operating systems that existed in facility management which are often mapped onto supervisory management information systems. Hence there is often a repository of stove-piped information sources that are not necessarily linked and more often used on an ad- hoc/heuristic basis. As a result, the opportunity for widespread potential cost savings has been lost due to lack of knowledge or research concerning the intelligent use of these information-rich sources. The most recent technological advancement in computing has taken advantage to achieve the desired objectives of reduced energy usage and improved building occupant thermal comfort. 2 PROBLEM FORMULATION The purpose of this research work is to provide an alternative to conventional PID (Proportional-Integral- Derivative) control modules embedded in large D.D.C panels. This research paper has focused on designing a Rule Based Expert System that combines fuzzy logic techniques with the engineering software, MATLAB. The conventional methods of improving chiller plant efficiency tend to focus on increasing the peak efficiency of individual components. Primarily, because the energy performance of constant speed chillers pumps and towers is maximized when components are operated as close to full load as possible. These methods generally involve the sizing and
2 ii sequencing of plant equipment to fit a variety of load conditions, while minimizing the amount of online equipment. Simple D.D.C algorithms has been able to coordinate the operation of chillers, pumps and tower fans based on demand for cooling, which is determined by cooling coil valve position, chilled water temperature and tower leaving water temperature float within preset limits. These allow components to operate at their highest efficiency at all times. The demand based control sequences, which replaced PID control has been able to coordinate the operation of the condenser pumps and tower fans based on chiller power (kilowatts). Demand based control is an effective means of operating an ultra efficient all variable speed chilled water plant. This research work focuses on solving two basic problems associated with modern H.V.A.C applications. compression chiller system consists of following components. (a) Compressor: It acts as a reclaiming agent. (b) Condenser and Evaporator: These acts as a heat exchangers. (c) Expansion Device: It acts as a throttling device to expand the liquid refrigerant. (d) Refrigerant: It acts as a working fluid which absorbs heat from the fluid to be cooled and rejects heat to the atmosphere, through evaporation and condensation. The schematic of a vapour compression chiller system is as shown in fig.1 (A) With the focus of modern H.V.A.C systems is to optimize energy efficiency. PID based control is an inherently inefficient method of control for several reasons. A problem with local loop control is that it can be difficult to detect a badly performing loop, because only a few variables in a building will be monitored and the effect of one bad loop may be masked from these variables by other loops that will compensate. (B) The purpose of building HVAC systems is to maintain comfortable spaces and provide good indoor air quality. A second serious problem with PID (Proportional-Integral- Derivative) control in modern systems is that the operation of various system components is not effectively coordinated. 3. APPLICATION OF FUZZY CONTROL FOR OPTIMAL OPERATION OF COMPLEX CHILLING SYSTEMS 3.1 Description of the Chilling System The chilling system described here supplies chill water to the air conditioning systems (AC-systems) installed in basement at Ansal Highway Plaza, Jalandhar (Punjab), India as shown in fig.1. The research conditions are ensured by the AC systems by supplying conditioned air to the building. The amount of cooling power for the building is the sum of internal cooling load (produced by occupants, equipment and computers) and the external cooling load, which depends on outdoor air temperature (Tout) and sun radiation through the windows. The compression cooling method is made use of by the cooling machines installed here. The principle of a compression cooling machine can be described in two thermodynamically processes. In the first step of the cooling process, the heat energy will be transferred from the system to the heat exchanger (evaporator) of the cooling machine, and therefore the liquid gas will evaporate by absorbing the heating energy. After the compression of the heated gas, in the second part of the process, the gas condenses again by cooling the gas through the air cooling system. In that step of the process, the heat transfer is from the condensation system to the outdoor air space. The process is continuous, and based on the second law of the thermodynamics. The vapour Fig.1: Schematic of a water-cooled chiller system. During the operation of the cooling machines, the air cooling systems will be used and the condensation energy of the cooling machine is transferred to the outdoor air space. If the outdoor air temperature is much lower than user net return temperature on heat exchanger one, the air cooling system should serve as a free cooling system and replace the cooling machine. 3.2 Thermal analysis of the building and chilling system The aim of the thermal analysis of the building is to find measurable information for the needed current cooling load. Alternation for internal cooling load of computers and machines could not be exactly registered or measured. It has been proven by measurement of current cooling power of the building as shown in fig.2 that there is not a significant correlation between Tout and the current cooling power. Also, at higher internal load, there is a heat transmission to the outdoor air space, if Tout is lower than 33 C. The current cooling power will increase, if Tout gets higher than 33 C. Although the equipment and computers are on service for 24 hours a day, there is a big alternation of cooling power. In the summer time, when the Tout increases to about 45 C, the current cooling power will be more influenced by Tout. So Tout can be used for forecasting the maximum cooling power. Additional information is necessary, in order to analyze the thermal behavior of the building. This information is gained by measuring the user net return temperature (Tr-un). Any change of total cooling load will influence Tr-un and is an important input for the fuzzy controller.
3 iii Fig.2: Alternation of current cooling power and outdoor air temperature. 3.3 Requirements for the design of the fuzzy control system The fuzzy control system is needed to ensure supply of the required cooling power during the operating time of the building by the lowest cost and the shortest system operating time with a low range of set point error for the supply temperature. The concept of knowledge engineering by measurement and analysis of system behavior is necessary, since no expert knowledge has existed for the formulation of the fuzzy rules. Measurement of two physical values of the system is necessary, in order to consider system behavior. These process values are: the outdoor air temperature Tout, which partially presents the thermal behavior of the building, and the user net return temperature (Tr-un), which contains the total cooling load alternation of the building. These requirements focus on three different fuzzy controllers for the different components of the chilling system. The design data for fuzzy controllers has been organized in various tables for the assistance of membership function values of various input variables to a mamdani type fuzzy inference system (FIS). TABLE-1 FUZZY CONTROLLER S TEMPERATURE DISTRIBUTION DESIGN DATA SUPPLY TEMPERATURE ( ) SUPPLY TEMPERATURE ( ) EXTERNAL TEMPERATURE (K) temperature. The fuzzy controller s set point error difference design data is as shown in table 4.3. Here error (e1) and error (e2) gives the difference between the SP (set point value) & MV (measured value) for condenser and evaporator. Tr-un gives the user net return temperature due to individual zone and internal load (occupants, equipments, computers etc). Tr-un gives the difference between user net return temperature and set point temperature. Tout gives the difference between user net return temperature and outdoor air temperature and dtout/dt gives the difference between outdoor air temperature by cycle and cycle. The assessment of refrigeration is made from the coefficient of performance (COP). It depends upon evaporator temperature Te and condensing temperature Tc. COPcarnot = COP in industry calculated for type of compressor: COP = 3.4 Fuzzy controller 1 for operation of the cooling load storage system The optimum start point for the discharge of the cooling load storage system depends on the maximum cooling power needed, which can differ every day. For calculation of maximum cooling power, Tout must be processed by the fuzzy controller, since the maximum cooling power in the summertime will be influenced extremely by Tout. A feedback of current cooling power calculated by Fuzzy control Block 2 is also necessary, in order to estimate the maximum cooling power. If the peak of a maximum cooling power is estimated by the fuzzy controller, then this will be compensated by optimally discharging the cooling load storage system parallel to the cooling machines. A mamdani type fuzzy inference system (FIS) is designed in MATLAB software comprising of defining the fuzzy inputs, applying fuzzy operator, applying implication method, aggregating all outputs and defuzzification of aggregate outputs. Here, HE2 and HE1 are the respective heat exchangers for evaporator and condenser and Tout is the outdoor air
4 iv Fig.3: Fuzzy controller 1 for optimally discharging cooling load storage system The input variables of the controller 1 are: (1) Outdoor air temperature Tout (2) Differential of Tout (3) Current cooling power of the cooling machines. For the fuzzification of the Tout, we have following system knowledge. Observation of the system has shown that above Tout of 45 C, a second cooling machine is necessary, in order to meet demand for increasing cooling load. Therefore the fuzzyfication will be around Tout 45 C with only three fuzzy sets. The second fuzzy variable is calculated by eqn (3.1) dt out /dt = (T out (k) - T out ( k-1)) With Tout (k) = outdoor air temperature by Tout ( k-1) = outdoor air temperature by (3.1) cycle. cycle. The third input variable is the output value of the Fuzzy controller 2, and represents the current cooling power. The output of the fuzzy controller 1 is the estimated maximum cooling power CP-max. The membership function used for the fuzzy variables are available as P, Z, trapmf, trimf and S- functions. For the defuzzification, "Centre of maximum" has been supported by the Mamdani type FIS (Fuzzy Inference System) Fig.4 shows the P membership function as calculated by equation 3.2 (3.2) With =degree of membership X= process variable as input variable A,B,C = parameters for the membership functions in value of the input variable, eg. Membership function P type The rule viewer for fuzzy controller 1 is as shown in Fig.4 Fig.4: Rule viewer for fuzzy controller 3.5 Fuzzy controller 2 for the operation of the cooling machines The fuzzy controller 2 (FC-2) is the important part of the optimization control system, so that the cooling potential of the outdoor air is used, before starting any cooling machine. If "e1" is zero, or negative, then the capacity of free cooling system is enough for the required cooling power. The output signal of FC- 2 will be zero. In other cases, FC- 2 is responsible for the operation of the cooling machines. This controller consists of 3 input variables as following: (1) Set point error" e1" at heat exchanger 1 (2) Set point error "e2" at heat exchanger 2 (3) Difference between user net return temperature (Tr-un) and Tsetpoint The input variable 1, is calculated as the difference between user net set point temperature (Tset point), and output temperature of the heat exchanger (THE1) according to equation 3.3. e1= T setpoint - T HE1 For this variable, only three sets are necessary, in order to define if, e1 is NS, ZR or PS. The range of e1 is between +1k and -1k. The second input variable is calculated as the difference between (T set point), and output temperature of heat exchanger 2 (THE2) according to equation 3.4 e2 = T set point - T HE2 (3.4) The third input variable is determined by equation 3.5 Tr-un = Tr-un - T set point (3.5) Calculation of Tr-un is necessary, because Tsetpoint is variable, and therefore Tr-un contains the real information about the cooling load of the building. As soon as the first variable of the controller "e1" reaches the values of PS or ZR, this indicates that the capacity of FC-system is enough to cover the demanded cooling power, and the output signal for cooling machines is zero. In cases, where the capacity of the free cooling system is not enough, "e" will have values of NS, so that output of the controller will be determined by other rules. In that case the third input variable Tr-un is more weighted for the output value of the controller, because Trun represents the real alternation of the cooling load of the
5 v building. As shown in fig.5, the mamdani type fuzzy inference system (FIS) consists of calculation of input variables such as supply temperature HE1 set point error e1,supply temperature HE2 set point error e2 and user net return temperature Trun, then through the process of fuzzification, fuzzy inference and defuzzification. The processing of output for current cooling power (CCP) takes place takes place in mamdani type fuzzy inference system (FIS). necessary in order to supply the demanded cooling power for the building. Fig.7 shows the fuzzy controller block 3. Fig.7: Fuzzy controller 3 for optimal operation of the free cooling system The rule viewer for fuzzy controller 3 is as shown in fig.8 Fig.5: Fuzzy controller 2 for optimal operation of cooling machines The rule viewer for fuzzy controller 2 is as shown in fig.6 Fig.6: Rule viewer for fuzzy controller 3.6 Fuzzy controller 3 for operation of the free cooling system This control block is necessary, so that to the cooling potential of the outdoor air is used, and the air cooling systems of the cooling machines are run as free cooling systems. The cooling potential depends on the difference between user net return temperature Tr-un and the outdoor air temperature Tout. The input variables of the control block 3 are: (1) Difference between Tr-un and set point ( Tr-un) (2) Set point error 1 at heat exchanger 1 (3) Difference between Tout, and Tr-un ( Tout) Calculation of input variables 1 and 2 has been explained by control block 2. The third input variable of this controller contains the cooling potential of the outdoor air and is given by equation 3.6. Fig.8: Rule viewer for fuzzy controller 3 Thus the combined fuzzy controller s works in effective coordination with each other in such a way that the output of fuzzy controller 2 i.e. current cooling power (CCP) becomes the input of fuzzy controller 1. Also the inputs to the fuzzy controller 2 become the inputs for the fuzzy controller 3. In this way the controllers gains of three fuzzy controllers can be tuned to match the dynamic characteristics of the vapour chiller system process it is controlling without regard for the other processes. Hence the temperature and pressure outputs in a fuzzy control system results in energy optimization. The combined fuzzy controllers required for the optimal operation of a complex chilling system is as shown in fig.9 T out = Tr-un- T out (3.6) An important aspect for the formulation of the rules for this controller is the cooling potential of the system, which is represented by the input variable 3, Tout. The higher the value of this variable is, the fewer FC-system components are
6 vi Fig.10: SIMULINK Block Diagram Fig.9: Combined Fuzzy Controllers 4. RESULT AND DISCUSSION 4.1 Results of system optimization by Fuzzy control The results have been derived from MATLAB/SIMULINK (SIMULATION LINK) library browser comprising of various blocks such as Sinks, Sources, Continuous, Discrete, Discontinuities, Math Operations, Signal Attributes, User Defined Functions, Ports and Subsystems, Signal Routing, Logic and Bit Operations, Lookup Tables, Model Verification, Model Wide Utilities, Additional Math and Discrete blocks. The SIMULINK block diagram showing the comparison between a PID (Proportional Integral Derivative) Controller and Fuzzy Controller is as shown in fig 5.1. Figure 5.2 shows the course of supply air temperature, before the optimization of system operation by PID (Proportional Integral Derivative) control. The alternation of the supply air temperature is between 10.5 C and 4.8 C. The reason for such a big set point error range lies in the discontinuous operation of the chilling system by a PID (Proportional Integral Derivative) control system. This high alternation of the supply temperature is a reflected image of the alternation of the system status. This unsatisfied system behaviour was realized by Fuzzy Controllers which have the ability of fine tuning the controller gains to match the dynamic characteristics of process it is controlling without regard for the other processes. In this way the various nonlinearities are minimized in a fuzzy control system. Thus effective coordination and adequate operation takes place with the help of fuzzy logic techniques. The set point error discontinuities obtained by operation of the chilling system with PID control system is as shown in fig.11 Fig.11: Course of supply air temperature by operation of the chilling system by PID control system As to the set point error, it can be seen from fig.12 that it is between 6.2 C and 5 C. This set point error of supply air temperature is a result of the working principle of the compression cooling machines. As the feature of compression cooling machines they have a discontinuous output range for the maximum cooling power, and therefore it is not possible to keep the supply air temperature within a smaller error range as shown here in figure 5.3. The course of the supply air temperature as shown in figure 5.3 indicates a remarkable improvement of the system behaviour. This relatively constant supply air temperature will ensure research and working conditions in the building, by using air conditioning systems in combination with the chilling system. The SIMULINK block diagram comprising of various blocks is as shown in fig.10 Fig.12: Course of supply air temperature by operation of the chilling system with fuzzy control Wide acceptance of individual control is predicated on its associated energy cost relative to the conventional approach.
7 vii In this implementation, the optimized HIYW Have-It-Your- Way has been tested and compared with OSFA One-Size- Fits-All. Optimized HIYW has also been compared with an optimized version of OSFA in order to get the best-case comparison with optimized HIYW. The optimized OSFA has been constrained to 10% average population dissatisfaction. With ANFIS( Adaptive neuro fuzzy inference system), the set point error of supply temperature is minimized and comes out to be which is less than the set point error as calculated from the trained Sugeno type fuzzy inference system. The significant potential yearly energy savings through gradient optimization, compared to OSFA are as summarized in fig.13. Here zone1 stands for perimeter shops, zone2 for neighboring shops & zone3 for corner shops. Fig.13: Energy savings per year with respect to OSFA The energy savings per year with respect to optimized OSFA are as shown in fig.14. It is also shown that a constrained fuzzy approximation is able to mimic these results, thus sensor connectivity requirements are simplified. Energy consumption is strongly related to the cost of building operation, but environmental comfort in a work place, such as a typical cubicle, is strongly related to occupant satisfaction and productivity. Energy consumption and comfort usually affect each other in the opposite way. Unlike the previous studies, individual satisfaction has been the heart of this study. Enhanced thermal comfort and satisfaction has been provided for all occupants, while energy consumption is minimized in our implementation. 5.CONCLUSIONS The research work analyzed a general methodology to evaluate different schemes for dynamic scheduling and optimal control of complex primary HVAC systems that would explicitly include the overlooked aspect of how various uncertainties are to be considered in a decision framework. This methodology would thus consider both the technical system optimization aspect as well as individual preference of those who operate the plant. Conclusion of the present work can be summarized as follows: (1)Three fuzzy controllers were necessary in order to reach maximum efficiency by operation of different components of the chilling system. (2)The realized fuzzy control system is able to forecast not only the maximum cooling power of the building, but the cooling potential of outdoor air can also be determined. (3) Operation of chilling system by fuzzy control enormously reduces the cost of cooling power. (4) The communication of all sensors with each other is not required in the fuzzy logic approximation for improving occupants comfort & reducing energy consumption. (5) Reduction of sensor connectivity would reduce system complexity & cost at a modest decrease in energy savings. (6) Under the real time pricing rates structure, least costs paths are equally least energy paths because no demand charges are considered. (7) As expected during those hours with low electricity rate, operation of the vapour compression chiller is preferred. (8) As regards the CV (Coefficient of Variation) of operating cost, model inherenty uncertainty is relatively more important than load uncertainty; however model uncertainty has less effect on probability of loss of cooling capability than load prediction uncertainty. (9) Results of decision analysis are very much dependent on the relative cooling load capacity & building load profile. (10) Technologies that reduce the installed cost of building controls & diagnostics can improve their economic attractiveness. ACKNOWLEDGMENT The authors wish to thanks Dr. S. K. Bath, Associate Professor, Gyani Zail Singh College of Engineering & Technology, Bathinda (Punjab), India and Dr. J.S. Dhillon, Professor, Sant Longowal Institute of Engineering and Technology, Punjab (India) and Ms. Ria Kalra, Assistant Professor, Department of Electronics and Communication Engineering in Lovely Professional University, Punjab (India) for their guidance, continuous support and encouragement. REFERENCES Fig.14: Energy savings per year with respect to optimized OSFA [1] Ahn, B.C. and Mitchell, J.W., Optimal control for central cooling plant and proceedings of building simulation, Volume 1: pp , [2] Braun, J. E. and Klein, S. A., Effectiveness models for cooling towers and cooling coils, ASHRAE Trans. Volume 95: No:(2), pp , [3] Fanger, P.O., Thermal comfort analysis and applications in environmental engineering, McGraw-Hill, New York, [4] Gertler, J., Fault Detection and Diagnosis in Engineering Systems,
8 viii Marcel Dekker, New York, [5] Ghiaus, C., Fault diagnosis of air-conditioning systems based on qualitative bond graph, Energy and Buildings, Volume 30: pp , [6] Gordon, J.M. and Ng, K.C., Cool Thermodynamics, Cambridge International Science Publishing, Cambridge, U.K., [7] Hartman, Thomas., why PID control is outdated for modern building applications, march2006/articles, [8] Koeppel, E.A. and Flake, B.A., Optimal supervisory control of an absorption chiller system, HVAC&R Research, Vol. 1: No:4, October [9] Mendes, N. and Coelho, L S., A MATLAB based simulation tool for building thermal performance analysis, 8th International IBPSA Conference, [10] Phelan, J. and Krarti, M., Performance testing of fans and pumps for energy analysis, ASHRAE Transactions, Volume:103, 1997.
ENERGY SAVING STUDY IN A HOTEL HVAC SYSTEM
ENERGY SAVING STUDY IN A HOTEL HVAC SYSTEM J.S. Hu, Philip C.W. Kwong, and Christopher Y.H. Chao Department of Mechanical Engineering, The Hong Kong University of Science and Technology Clear Water Bay,
MODELLING AND OPTIMIZATION OF DIRECT EXPANSION AIR CONDITIONING SYSTEM FOR COMMERCIAL BUILDING ENERGY SAVING
MODELLING AND OPTIMIZATION OF DIRECT EXPANSION AIR CONDITIONING SYSTEM FOR COMMERCIAL BUILDING ENERGY SAVING V. Vakiloroaya*, J.G. Zhu, and Q.P. Ha School of Electrical, Mechanical and Mechatronic Systems,
your comfort. our world. DNSS EcoSave A/C remote monitoring and malfunction prediction
your comfort. our world. DNSS EcoSave A/C remote monitoring and malfunction prediction What is DNSS EcoSave? The Daikin Network Service System (DNSS EcoSave) is a Daikin developed internet based remote
How To Save Energy With High Pressure Control
Energy savings in commercial refrigeration equipment : High Pressure Control July 2011/White paper by Christophe Borlein AFF and IIF-IIR member Make the most of your energy Summary Executive summary I
Ener.co & Viridian Energy & Env. Using Data Loggers to Improve Chilled Water Plant Efficiency. Randy Mead, C.E.M, CMVP
Ener.co & Viridian Energy & Env. Using Data Loggers to Improve Chilled Water Plant Efficiency Randy Mead, C.E.M, CMVP Introduction Chilled water plant efficiency refers to the total electrical energy it
CHILLER PLANT CONTROL MULTIPLE CHILLER CONTROLS
CHILLER PLANT CONTROL MULTIPLE CHILLER CONTROLS By: Michael J. Bitondo, Mark J. Tozzi Carrier Corporation Syracuse, New York August 1999 INTRODUCTION In December of 1998, the American Refrigeration Institute
Commissioning - Construction Documents (Page 1 of 6)
Commissioning - Construction Documents (Page 1 of 6) A. General Information Climate Zone: Building Type: Conditioned Area (sf): Reviewer's Name: Reviewer's Agency: Note: Design Review for each system/subsystem
Chapter 3.4: HVAC & Refrigeration System
Chapter 3.4: HVAC & Refrigeration System Part I: Objective type questions and answers 1. One ton of refrigeration (TR) is equal to. a) Kcal/h b) 3.51 kw c) 120oo BTU/h d) all 2. The driving force for refrigeration
Creating Efficient HVAC Systems
Creating Efficient HVAC Systems Heating and Cooling Fundamentals for Commercial Buildings Heating, ventilating, and air conditioning (HVAC) systems account for nearly half of the energy used in a typical
CONCEPTUALIZATION OF UTILIZING WATER SOURCE HEAT PUMPS WITH COOL STORAGE ROOFS
CONCEPTUALIZATION OF UTILIZING WATER SOURCE HEAT PUMPS WITH COOL STORAGE ROOFS by Dr. Bing Chen and Prof. John Bonsell Passive Solar Research Group University of Nebraska-Lincoln Omaha campus and Richard
Energy savings in commercial refrigeration. Low pressure control
Energy savings in commercial refrigeration equipment : Low pressure control August 2011/White paper by Christophe Borlein AFF and l IIF-IIR member Make the most of your energy Summary Executive summary
ALONE. small scale solar cooling device Project No TREN FP7EN 218952. Project No TREN/FP7EN/218952 ALONE. small scale solar cooling device
Project No TREN/FP7EN/218952 ALONE small scale solar cooling device Collaborative Project Small or Medium-scale Focused Research Project DELIVERABLE D5.2 Start date of the project: October 2008, Duration:
Optimization of Water - Cooled Chiller Cooling Tower Combinations
Optimization of Water - Cooled Chiller Cooling Tower Combinations by: James W. Furlong & Frank T. Morrison Baltimore Aircoil Company The warm water leaving the chilled water coils is pumped to the evaporator
Modeling and Simulation of HVAC Faulty Operations and Performance Degradation due to Maintenance Issues
LBNL-6129E ERNEST ORLANDO LAWRENCE BERKELEY NATIONAL LABORATORY Modeling and Simulation of HVAC Faulty Operations and Performance Degradation due to Maintenance Issues Liping Wang, Tianzhen Hong Environmental
Building HVAC Load Profiling Using EnergyPlus
Building HVAC Load Profiling Using EnergyPlus Dong Wang School of EEE Nanyang Technological University Singapore Email: [email protected] Abhisek Ukil, Senior Member, IEEE School of EEE Nanyang Technological
Fundamentals of HVAC Control Systems
ASHRAE Hong Kong Chapter Technical Workshop Fundamentals of HVAC Control Systems 18, 19, 25, 26 April 2007 2007 ASHRAE Hong Kong Chapter Slide 1 Chapter 5 Control Diagrams and Sequences 2007 ASHRAE Hong
SPECIAL ISSUE: NATIONAL SCIENCE FOUNDATION WORKSHOP
research journal 2013 / VOL 05.01 www.perkinswill.com SPECIAL ISSUE: NATIONAL SCIENCE FOUNDATION WORKSHOP ARCHITECTURE AND ENGINEERING OF SUSTAINABLE BUILDINGS Current Trends in Low-Energy HVAC Design
Impact of Control System Technologies on Industrial Energy Savings
Impact of Control System Technologies on Industrial Energy Savings Priyam Parikh Industrial Assessment Center Texas A&M University Bryan P. Rasmussen Industrial Assessment Center Texas A&M University http://farolconsulting.com/?page_id=110
HOT & COLD. Basic Thermodynamics and Large Building Heating and Cooling
HOT & COLD Basic Thermodynamics and Large Building Heating and Cooling What is Thermodynamics? It s the study of energy conversion using heat and other forms of energy based on temperature, volume, and
Data Center. Ultra-Efficient chilled water system optimization. White paper. File No: 9.236 Date: december 03, 2015 Supersedes: new Date: new
Data Center Ultra-Efficient chilled water system optimization White paper File No: 9.236 Date: december 03, 2015 Supersedes: new Date: new Data Center - Ultra-Efficient white paper 3 abstract The primary
Rev. No. 0 January 5, 2009
ENERGY & ENVIRONMENTAL ENERGY ISSUES COMMITTEE 415 Main Building Telephone (574) 631-6666 Notre Dame, Indiana Facsimile (574) 631-5883 46556 USA Energy Conservation Plan For HVAC Systems Rev. No. 0 January
HVAC Systems: Overview
HVAC Systems: Overview Michael J. Brandemuehl, Ph.D, P.E. University of Colorado Boulder, CO, USA Overview System Description Secondary HVAC Systems Air distribution Room diffusers and air terminals Duct
AIR COOLED CHILLER CHILLED WATER PUMP CONTROL: The chilled water pump with the lowest runtime will automatically start when the outside air temperature rises above the system enable setpoint. When the
DIABLO VALLEY COLLEGE CATALOG 2015-2016
HEATING, VENTILATION, AIR CONDITIONING, REFRIGERATION - HVACR Tish Young, Dean Physical Sciences and Engineering Division Physical Sciences Building, Room 263 Possible career opportunities Upon successful
Digital Realty Data Center Solutions Digital Chicago Datacampus Franklin Park, Illinois Owner: Digital Realty Trust Engineer of Record: ESD Architect
Digital Realty Data Center Solutions Digital Chicago Datacampus Franklin Park, Illinois Owner: Digital Realty Trust Engineer of Record: ESD Architect of Record: SPARCH Project Overview The project is
Training Engineers for Managing Intelligent HVAC Systems in Modern Office Buildings
Training Engineers for Managing Intelligent HVAC Systems in Modern Office Buildings Bethany Robinson, Matthew Knowles, and Jian-Qiao Sun, University of California, Merced ABSTRACT In today s changing climate
3/29/2012 INTRODUCTION HVAC BASICS
INTRODUCTION HVAC BASICS AND HVAC SYSTEM EFFICIENCY IMPROVEMENT SECTION O HVAC systems or Heating, Ventilating and Air-Conditioning systems control the environment for people and equipment in our facilities.
HEATING, VENTILATION & AIR CONDITIONING
HEATING, VENTILATION & AIR CONDITIONING as part of the Energy Efficiency Information Grants Program Heating and cooling can account for approximately 23 % of energy use in pubs and hotels 1. Reducing heating
How Ground/Water Source Heat Pumps Work
How Ground/Water Source s Work Steve Kavanaugh, Professor Emeritus of Mechanical Engineering, University of Alabama Ground Source s (a.k.a. Geothermal s) are becoming more common as the costs of energy
CONTROL STRATEGIES FOR HVAC SYSTEMS
CONROL SRAEGIES FOR HVAC SYSEMS ZBIGNIEW POPIOLEK Department of Heating, Ventilation and Dust Removal echnology Silesian University of echnology, Poland 1 Definition of control: to apply a regulating influence
Design Guide. Retrofitting Options For HVAC Systems In Live Performance Venues
Design Guide Retrofitting Options For HVAC Systems In Live Performance Venues Heating, ventilation and air conditioning (HVAC) systems are major energy consumers in live performance venues. For this reason,
Presentation Outline. Common Terms / Concepts HVAC Building Blocks. Links. Plant Level Building Blocks. Air Distribution Building Blocks
Presentation Outline Common Terms / Concepts HVAC Building Blocks Plant Level Building Blocks Description / Application Data Green opportunities Selection Criteria Air Distribution Building Blocks same
Variable Capacity Compressors, a new dimension for refrigeration engineers to explore
Variable Capacity Compressors, a new dimension for refrigeration engineers to explore By: Marcos G. Schwarz, VCC Group Leader Corporate Research & Development, EMBRACO SA Abstract: This paper presents
DAikin Altherma low temperature heat pump. end user leaflet
DAikin Altherma low temperature heat pump HEATING, COOLING & DOMESTIC HOT WATER end user leaflet 2 The natural choice D 3 in1: heating, cooling and hot water Daikin Altherma is a total heating and domestic
In the compression-refrigeration loop (air conditioning), which is likely to be warmer? 1. Condenser coil 2. Evaporator coil
In the compression-refrigeration loop (air conditioning), which is likely to be warmer? 1. Condenser coil 2. Evaporator coil Answer: (1) Condenser coil See the video. A.R.E. Building Systems Study Guide
POLK STATE COLLEGE CHILLER PLANT EVALUATION WINTER HAVEN, FLORIDA APRIL 2, 2014. C arastro & A ssociates, C&A# 5747
POLK STATE COLLEGE WINTER HAVEN, FLORIDA CHILLER PLANT EVALUATION APRIL 2, 2014 C&A# 5747 C arastro & A ssociates, c o n s u l t i n g e n g i n e e r s inc. 2609 W. De Leon Street, Tampa, Florida 33609
COMMERCIAL HVAC CHILLER EQUIPMENT. Air-Cooled Chillers
COMMERCIAL HVAC CHILLER EQUIPMENT Air-Cooled Chillers Technical Development Programs (TDP) are modules of technical training on HVAC theory, system design, equipment selection and application topics. They
ASTACEA4 Inspect complex/central air conditioning systems
Overview This Unit covers the competences required to inspect complex/central air conditioning systems as defined by the CIBSE TM 44 Figure 1.1: Summary of system types and their component parts. The air
Building Energy Systems. - HVAC: Heating, Distribution -
* Some of the images used in these slides are taken from the internet for instructional purposes only Building Energy Systems - HVAC: Heating, Distribution - Bryan Eisenhower Associate Director Center
ORC TURBOGENERATOR TYPE CHP - Organic Rankine Cycle Turbogenerator fed by thermal oil, for the combined production of electric energy and heat -
Doc. : 08C00031_e Date : 10.02.2009 Page : 1 / 9 ORC TURBOGENERATOR TYPE CHP - Organic Rankine Cycle Turbogenerator fed by thermal oil, for the combined production of electric - (Preliminary) Doc. : 08C00031_e
AQUACIAT2 HYBRID THE COMPACT DUAL-ENERGY SOLUTION HEAT PUMP & GAS BOILER. Cooling and heating capacities of 45 to 80 kw AVAILABLE 2 ND QUARTER OF 2014
AVAILABLE 2 ND QUARTER OF 2014 HEAT PUMP & GAS BOILER C O M F O R T A I R Q U A L I T Y E N E R G Y O P T I M I S A T I O N AQUACIAT2 HYBRID Cooling and heating capacities of 45 to 80 kw THE COMPACT DUAL-ENERGY
Yijun Gao, Wei Wu, Zongwei Han, Xianting Li *
Study on the performance of air conditioning system combining heat pipe and vapor compression based on ground source energy-bus for commercial buildings in north China Yijun Gao, Wei Wu, Zongwei Han, Xianting
Percent per Degree Rule of Thumb for Refrigeration Cycle Improvement
7 Percent per Degree Rule of Thumb for Refrigeration Cycle Improvement Steve Doty, PE, CEM [email protected] ABSTRACT A value of 1-1.5% power reduction per degree Fahrenheit (F) has been used successfully
PERFORMANCE ANALYSIS OF VAPOUR COMPRESSION REFRIGERATION SYSTEM WITH R404A, R407C AND R410A
Int. J. Mech. Eng. & Rob. Res. 213 Jyoti Soni and R C Gupta, 213 Research Paper ISSN 2278 149 www.ijmerr.com Vol. 2, No. 1, January 213 213 IJMERR. All Rights Reserved PERFORMANCE ANALYSIS OF VAPOUR COMPRESSION
EnergyPro Building Energy Analysis. Assisted Living Building
EnergyPro Building Energy Analysis Assisted Living Building EnergyPro Building Energy Analysis for an assisted living building Project Scope The purpose of the EnergyPro energy model was to evaluate the
The main steam enters the building in the basement mechanical room; this is where the condensate line also leaves the building.
MSV: Square Footage: 24,844 No. of Floors: 1 Year Built: 1963 Type of Use: Lounge and dining area open all night for snacks Steam Water-cooled condenser, 50-Ton York unit with a 6 cylinder-reciprocating
HOW TO CONDUCT ENERGY SAVINGS ANALYSIS IN A FACILITY VALUE ENGINEERING STUDY
HOW TO CONDUCT ENERGY SAVINGS ANALYSIS IN A FACILITY VALUE ENGINEERING STUDY Benson Kwong, CVS, PE, CEM, LEED AP, CCE envergie consulting, LLC Biography Benson Kwong is an independent consultant providing
Federation of European Heating, Ventilation and Air-conditioning Associations
Federation of European Heating, Ventilation and Air-conditioning Associations Address: Rue Washington 40 1050 Brussels Belgium www.rehva.eu [email protected] Tel: +32 2 514 11 71 Fax: +32 2 512 90 62 REHVA
SOLAR COOLING WITH ICE STORAGE
SOLAR COOLING WITH ICE STORAGE Beth Magerman Patrick Phelan Arizona State University 95 N. College Ave Tempe, Arizona, 8581 [email protected] [email protected] ABSTRACT An investigation is undertaken of a
Drives and motors. A guide to using variable-speed drives and motors in retail environments
Drives and motors A guide to using variable-speed drives and motors in retail environments Improving energy efficiency and lowering the carbon footprint Retailers across the UK take their corporate responsibility
HEAT RECOVERY FROM CHILLED WATER SYSTEMS. Applications for Heat Reclaim Chillers
HEAT RECOVERY FROM CHILLED WATER SYSTEMS Applications for Heat Reclaim Chillers April 2008 TABLE OF CONTENTS INTRODUCTION... 3 WASTE HEAT SOURCES... 3,4 Capturing Sufficient Heat for Useful Purposes...
www.hft-global.com/education Refrigeration & HVAC
www.hft-global.com/education The HFT Refrigeration and HVAC range has been designed and developed to allow study of the theoretical and practical operation of many types of refrigeration and air conditioning
A heat pump system with a latent heat storage utilizing seawater installed in an aquarium
Energy and Buildings xxx (2005) xxx xxx www.elsevier.com/locate/enbuild A heat pump system with a latent heat storage utilizing seawater installed in an aquarium Satoru Okamoto * Department of Mathematics
Drives and motors. A guide to using variable speed drives and motors in data centres Meeting your Carbon Reduction Commitment (CRC)
Drives and motors A guide to using variable speed drives and motors in data centres Meeting your Carbon Reduction Commitment (CRC) The power behind the data Private and public businesses, from banks to
Carnegie Mellon University School of Architecture, Department of Mechanical Engineering Center for Building Performance and Diagnostics
Carnegie Mellon University School of Architecture, Department of Mechanical Engineering Center for Building Performance and Diagnostics A Presentation of Work in Progress 4 October 2006 in the Intelligent
Building Analytics Improve the efficiency, occupant comfort, and financial well-being of your building.
Building Analytics Improve the efficiency, occupant comfort, and financial well-being of your building. Make the most of your energy SM Building confidence knowing the why behind your facility s operations
Todd M. Rossi, Ph.D. President
Residential Air Conditioning Fault Detection and Diagnostics (FDD) and Protocols to Support Efficient Operation DOE - Building America Program Residential Buildings Integration Meeting - July 20-22, 2010
HVAC Technologies for Building Energy Efficiency Improvements 2013 National Symposium on Market Transformation. Richard Lord Carrier Fellow
HVAC Technologies for Building Energy Efficiency Improvements 2013 National Symposium on Market Transformation Richard Lord Carrier Fellow HVAC Industry Challenges and Issues Ozone Deletion Global Warming
The Chilled Water and Hot Water Building Deferential Pressure Setpoint Calculation Chilled Water and Hot Water Pump Speed Control
The Chilled Water and Hot Water Building Deferential Pressure Setpoint Calculation Chilled Water and Hot Water Pump Speed Control Chenggang Liu Research Associate Homer L. Bruner, Jr., CEM Mechanical Systems
Study on Performance Evaluation of a Split Air Conditioning System Under the Actual Conditions
Purdue University Purdue e-pubs International Refrigeration and Air Conditioning Conference School of Mechanical Engineering 2006 Study on Performance Evaluation of a Split Air Conditioning System Under
A. The Commissioning Authority (CxA) has been contracted or will be contracted directly with the Owner for this project.
DIVISION 23 HEATING, VENTILATING, AND AIR CONDITIONING (HVAC) SECTION 23 08 02 PART 1 GENERAL 1.01 AUTHORITY (CxA) A. The Commissioning Authority (CxA) has been contracted or will be contracted directly
AN APPLICATION MANUAL FOR BUILDING ENERGY AND ENVIRONMENTAL MODELLING
AN APPLICATION MANUAL FOR BUILDING ENERGY AND ENVIRONMENTAL MODELLING D. Bartholomew *, J. Hand #, S. Irving &, K. Lomas %, L. McElroy # F. Parand $, D. Robinson $ and P. Strachan # * DBA, # University
Federal Wage System Job Grading Standards for Air Conditioning Equipment Operating, 5415. Table of Contents
Federal Wage System Job Grading Standards for Air Conditioning Equipment Operating, 5415 Table of Contents WORK COVERED... 2 WORK NOT COVERED...2 TITLES... 2 GRADE LEVELS... 2 HELPER AND INTERMEDIATE JOBS...
Seven Steps to Maximizing Central Plant Efficiency
White Paper Seven Steps to Maximizing Central Plant Efficiency David Klee Director, Channel Marketing & Strategy, HVAC Johnson Controls, Inc. Gary Gigot Vice President Business Development Optimum Energy,
HVACPowDen.xls An Easy-to-Use Tool for Recognizing Energy Efficient Buildings and HVAC Systems
HVACPowDen.xls An Easy-to-Use Tool for Recognizing Energy Efficient Buildings and HVAC Systems Fundamental Principles of Environmentally Responsible, Energy Efficient Buildings 1. Energy efficiency is
Absolute and relative humidity Precise and comfort air-conditioning
Absolute and relative humidity Precise and comfort air-conditioning Trends and best practices in data centers Compiled by: CONTEG Date: 30. 3. 2010 Version: 1.11 EN 2013 CONTEG. All rights reserved. No
Heating, ventilation and air conditioning equipment. A guide to equipment eligible for Enhanced Capital Allowances
Heating, ventilation and air conditioning equipment A guide to equipment eligible for Enhanced Capital Allowances 2 Contents Introduction 03 Background 03 Setting the scene 03 Benefits of purchasing ETL
PROTOCOL FOR BUILDING ENERGY ANALYSIS SOFTWARE For Class 3, 5, 6, 7, 8 and 9 buildings
PROTOCOL FOR BUILDING ENERGY ANALYSIS SOFTWARE For Class 3, 5, 6, 7, 8 and 9 buildings Version 2006.1 AUSTRALIAN BUILDING CODES BOARD JANUARY 2006 TABLE OF CONTENTS Foreword 1. Scope 2. Purpose and context
Water cooled chiller plant (cp/vs)
Data Center Water cooled chiller plant (cp/vs) Design Envelope File No: 9.573 Date: december 16, 2014 Supersedes: 9.573 Date: november 14, 2014 design envelope s performance improvements are among the
ULTRA-EFFICIENT HVAC DESIGN AND CONTROL
CASE STUDY ULTRA-EFFICIENT HVAC DESIGN AND CONTROL MAJOR HEATING, VENTILATING AND AIR- CONDITIONING REPLACEMENT AT THE COUNTY OF SAN DIEGO CRIME LAB December 30, 2005 8520 Tech Way, Suite 110 San Diego,
The Business Case Annual fuel cost savings of 26% worth more than 28,000 Annual fuel savings of 1.3million kwh Annual CO2 savings of over 245 tonnes
North Lanarkshire Council The Business Case Annual fuel cost savings of 26% worth more than 28,000 The Sir Matt Busby Sports Complex is an important local facility for the people of Bellshill, North Lanarkshire.
Heating / Ventilation / Air Conditioning Room Climate Control with ABB i-bus KNX
Heating / Ventilation / Air Conditioning Room Climate Control with ABB i-bus KNX Content Heating / Ventilation / Air Conditioning 3 The Right Room Climate 4 Optimised Energy Efficiency and well-being Room
BUILDING PERFORMANCE METRICS
BUILDING PERFORMANCE METRICS Hugh Crowther P. Eng. Executive Vice President, Product Management and Technology There is a steady and determined march towards designing better and better performing buildings.
Hybrid Modeling and Control of a Power Plant using State Flow Technique with Application
Hybrid Modeling and Control of a Power Plant using State Flow Technique with Application Marwa M. Abdulmoneim 1, Magdy A. S. Aboelela 2, Hassen T. Dorrah 3 1 Master Degree Student, Cairo University, Faculty
Information Guide Domestic Air Source Heat Pumps
Information Guide Domestic Air Source Heat Pumps Issue 41 Domestic Air Source Heat Pumps This is an independent guide produced by Mitsubishi Electric to enhance the knowledge of its customers and provide
Glossary of Heating, Ventilation and Air Conditioning Terms
Glossary of Heating, Ventilation and Air Conditioning Terms Air Change: Unlike re-circulated air, this is the total air required to completely replace the air in a room or building. Air Conditioner: Equipment
UNIT 2 REFRIGERATION CYCLE
UNIT 2 REFRIGERATION CYCLE Refrigeration Cycle Structure 2. Introduction Objectives 2.2 Vapour Compression Cycle 2.2. Simple Vapour Compression Refrigeration Cycle 2.2.2 Theoretical Vapour Compression
Modeling Guide for Daikin VRV in EnergyPro 6
Modeling Guide for Daikin VRV in EnergyPro 6 Table of Contents Introduction... 1 Program Installation... 2 Importing Designated VRV Product File... 3 System Modeling... 6 Modeling air-cooled outdoor units...
Application of Building Energy Simulation to Air-conditioning Design
Hui, S. C. M. and K. P. Cheung, 1998. Application of building energy simulation to air-conditioning design, In Proc. of the Mainland-Hong Kong HVAC Seminar '98, 23-25 March 1998, Beijing, pp. 12-20. (in
HVAC System Cloud Based Diagnostics Model
2496, Page 1 HVAC System Cloud Based Diagnostics Model Fadi ALSALEEM 1*, Robert ABIPROJO 2, Jeff ARENSMEIER 2, Gregg HEMMELGARN 1, 1 Emerson Climate Technologies, Residential Solutions, Sidney, OH, USA
HVAC Efficiency Definitions
HVAC Efficiency Definitions Term page EER - 2 SEER - 3 COP - 4 HSPF - 5 IPLV - 6 John Mix May 2006 Carrier Corporation 1 Energy Efficiency Ratio (EER) The energy efficiency ratio is used to evaluate the
Rittal White Paper 508: Economized Data Center Cooling Defining Methods & Implementation Practices By: Daniel Kennedy
Rittal White Paper 508: Economized Data Center Cooling Defining Methods & Implementation Practices By: Daniel Kennedy Executive Summary Data center owners and operators are in constant pursuit of methods
CGC s Hybrid System Loop Control
verview The CGC Group Hybrid Heat Pump System does NT operate with the same fluid loop temperatures as a conventional reversing Water Source Heat Pump system. The CGC system differs from a WSHP system
Lesson 36 Selection Of Air Conditioning Systems
Lesson 36 Selection Of Air Conditioning Systems Version 1 ME, IIT Kharagpur 1 The specific objectives of this chapter are to: 1. Introduction to thermal distribution systems and their functions (Section
Fuzzy Logic Based Reactivity Control in Nuclear Power Plants
Fuzzy Logic Based Reactivity Control in Nuclear Power Plants Narrendar.R.C 1, Tilak 2 P.G. Student, Department of Mechatronics Engineering, VIT University, Vellore, India 1 P.G. Student, Department of
State of the Art Energy Efficient Data Centre Air Conditioning
- White Paper - State of the Art Energy Efficient Data Centre Air Conditioning - Dynamic Free Cooling - Release 2, April 2008 Contents ABSTRACT... 3 1. WHY DO I NEED AN ENERGY EFFICIENT COOLING SYSTEM...
Get the FACTS about SEER and Deliver Better Customer Value
What is SEER? SEER stands for Seasonal Energy Efficiency Ratio. It s a number that describes how well air-conditioning equipment works. A higher SEER means better efficiency and lower energy bills. SEER
International Telecommunication Union SERIES L: CONSTRUCTION, INSTALLATION AND PROTECTION OF TELECOMMUNICATION CABLES IN PUBLIC NETWORKS
International Telecommunication Union ITU-T TELECOMMUNICATION STANDARDIZATION SECTOR OF ITU Technical Paper (13 December 2013) SERIES L: CONSTRUCTION, INSTALLATION AND PROTECTION OF TELECOMMUNICATION CABLES
Drives and motors. A guide to using variable-speed drives and motors in data centres
Drives motors A guide to using variable-speed drives motors in data centres The power behind the data Private public businesses, from banks to supermarkets, to telecommunications companies internet providers
QNET Experiment #06: HVAC Proportional- Integral (PI) Temperature Control Heating, Ventilation, and Air Conditioning Trainer (HVACT)
Quanser NI-ELVIS Trainer (QNET) Series: QNET Experiment #06: HVAC Proportional- Integral (PI) Temperature Control Heating, Ventilation, and Air Conditioning Trainer (HVACT) Student Manual Table of Contents
Heating, Ventilation & Air Conditioning Equipment
FinAnswer Express Utah Incentive Catalog Effective as of May 19, 2012 Heating, Ventilation & Air Conditioning Equipment Rocky Mountain Power provides incentives for many types of energy-efficient technologies.
Intelligent control system with integrated electronic expansion valves in an air-conditioning system operating at a Telecom telephone exchange
Intelligent control system with integrated electronic expansion valves in an air-conditioning system operating at a Telecom telephone exchange ING. TOMMASO FERRARESE Thermodynamics Laboratory Engineer
imagine SOLAR AIR CONDITIONING MADE EASY
imagine SOLAR AIR CONDITIONING MADE EASY WHY SOLAR COOLING? Imagine...being able to fit a solar air conditioning system to your building that would result in dramatic reductions in electricity consumption
C-Bus Application Messages & Behaviour Chapter 25 Air Conditioning
C-Bus Application Messages & Behaviour Chapter 25 Air Conditioning Document Number: CBUS-APP/25 Comments on this document should be addressed to: Engineering Manager Clipsal Integrated Systems PO Box 103
Case Study: Innovative Energy Efficiency Approaches in NOAA s Environmental Security Computing Center in Fairmont, West Virginia
Case Study: Innovative Energy Efficiency Approaches in NOAA s Environmental Security Computing Center in Fairmont, West Virginia Prepared for the U.S. Department of Energy s Federal Energy Management Program
PG Student (Heat Power Engg.), Mechanical Engineering Department Jabalpur Engineering College, India. Jabalpur Engineering College, India.
International Journal of Emerging Trends in Engineering and Development Issue 3, Vol. (January 23) EFFECT OF SUB COOLING AND SUPERHEATING ON VAPOUR COMPRESSION REFRIGERATION SYSTEMS USING 22 ALTERNATIVE
KU DESIGN GUIDELINES APPENDIX XVI RECOMMENDED BAS I/O CONTROL POINTS BY EQUIPMENT / SYSTEM
KU DESIGN GUIDELINES APPENDIX XVI RECOMMENDED BAS I/O CONTROL POINTS BY EQUIPMENT / SYSTEM AIR HANDLING UNITS... 1 CHILLERS... 2 COOLING TOWERS... 2 CLOSED LOOP COOLERS... 2 MISCELLANEOUS SUPPLY FANS...
Air Conditioning. The opportunity for energy efficiency. Low cost actions to reduce energy usage now
Fact Sheet #6 Air Conditioning In this fact sheet you will discover: The opportunity for energy efficiency How air conditioning works Low cost actions to reduce energy usage now Investments to reduce costs
Energy efficiency in building automation and control
Energy efficiency in building automation and control Proven applications for heating and cooling supply Answers for infrastructure. Efficient VAC control protects the environment and increases comfort
