From Big Data to Smart Data Thomas Hahn



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Transcription:

Siemens Future Forum @ HANNOVER MESSE 2014 From Big to Smart Hannover Messe 2014

The Evolution of Big Digital data ~ 1960 warehousing ~1986 ~1993 Big data analytics Mining ~2015 Stream processing Digital data collection cubes Relational databases Statistics Artificial intelligence Machine learning Massively distributed NoSQL databases Heterogeneous data and knowledge First databases Financial data Unstructured data Petabytes of data Page 2

Big Analytics is key for protecting and extending existing businesses and creating new services Technology push Proliferation of smart sensors, smart devices, apps and Internet of Things leading to data volume doubling every two years Combination of data analytics with system and sensor understanding enables complex decision support embedded into operational processes sensor networks Internet of Things smart devices 60 40 20 0 Today: ~3 Zettabyte New SW and HW architectures enabling massive data processing cloud deployment massively distributed computing NoSQL databases Page 3

Big Analytics is key for protecting and extending existing businesses and creating new services Market pull Rising customer expectations IT players moving into Siemens home turf Competitors M&As yielding tangible offerings analytics technologies enables optimized service business and will differentiate our Siemens systems and solutions New business models (e.g. DaaS) and eco-systems Mgmt. Operation Control Page 4

Focus of data analytics is changing: From description of past to decision support Value and Complexity Inform Descriptive What happened? Examples Plant operation report Fault report Analyze Current penetration across all industries (according to Gartner 2013) 99% Adopt by vast majority but not all data Diagnostic Why did it happen? Alarm management Root cause identification 30% Adopted by minorities Act Predictive What will happen? Power consumption prediction Fault prediction 13% Still few adopters Prescriptive What shall we do? Operation point optimization Load balancing 3% Very few early adopters Page 5

Smart data to business principle: Combination of domain, device and analytics from Siemens Products and Solutions Domain data ''Smart data to business'' Installed products & systems, processes, sensor data analytics Intelligence Innovation E.g. Power plants E.g. Power grids E.g. Factories E.g. Hospitals Value Generation Customer benefit Performance increase Energy saving Cost reduction Risk avoidance / security Domain Device Analytics + + = Smart Page 6

Smart data to business example (1/9): Optimization of gas turbine operation Results Reduced NOx Emissions Extension of service intervals Energy system Market drivers Customer needs Product cycles Gas turbines Mechanical Engineering Thermodynamics Combustion chemistry Sensor properties Autonomous Learning Neural Networks Smart Architecture processes data from 5000 sensors per sec. Domain Device Analytics + + = Smart Page 7

Smart data to business example (2/9): Service intelligence for gas turbine fleet Energy system Market drivers Customer needs Product cycles Gas turbines Mechanical Engineering Thermodynamics Combustion chemistry Sensor properties Service analytics Integration of more than 30 data sources Six millions records per day Results Faster outage planning Faster issue resolution Improved forecast of service events Domain Device Analytics + + = Smart Page 8

Smart data to business example (3/9): Optimization of wind parks (Project ALICE, CeBIT) A Q C tanh target = r t 1 - B A Q C tanh B Results 1% increase of annual energy with optimized control policy s t a t s t D tanh E a Wind power Market drivers Customer needs Aerodynamics Meteorologics Wind turbines ~12,000 installed Mechanical Engineering Sensor properties Controller design Autonomous Learning Neural Networks Robust policy generation despite very noisy data Domain Device Analytics + + = Smart Page 9

Smart data to business example (4/9): Health check for CERN s Large Hadron Collider Results Early warnings to increase Operating Hours Automation infrastruct. Market leader in industry automation Strong presence in all business areas Autom. components Complex: hundreds of SCADA systems and SIMATIC control systems Rule and pattern mining >1 terabyte of operational data generated per day Detect fault patterns Domain Device Analytics + + = Smart Page 10

Smart data to business example (5/9): Image-guided diagnosis and therapy for heart valves Healthcare Ecosystem Cost / effectiveness Accurate diagnosis / therapy Less invasive surgery Imaging Scanners Robotic imaging Interventional imaging Low radiation Reconstruction & fusion Machine Learning Image databases Fast machine learning Identify relevant structures Results Industry wide unique feature that automates workflow and guides the surgeon Applied to thousands of valve implants Next generation in the pipeline Domain Device Analytics + + = Smart Page 11

Smart data to business example (6/9): Smart City Research Aspern, Vienna Objective My clear goal now is to become the greenest city in the world. City infrastructure Market drivers Customer needs Power networks Building technology Smart Grid / Smart building Electrical engineering Power storage Smart meters Smart City Cockpit Integration of smart grid, smart buildings, water and mobility Analytics dashboard Michael Häupl, Mayor of Vienna Domain Device Analytics + + = Smart Page 12

Smart data to business example (7/9): Procurement and Trading based on Neural Network Forecasts Economics Commodity market and commodity prices Market Behavior Financials Computer cluster Operation/ Utilization of Multicore CPU Clusters (500+ cores) Multicore computing Econometrics w/ neural nets Time Series Management Modeling and Analysis Results Predict commodity prices for optimal procurement decisions and trading Prescriptive: Decision support based on expectation and risk Domain Device Analytics + + = Smart Page 13

Smart data to business example (8/9): Condition Monitoring for Water Supply Networks Levee Building Hydrology Geology Weather Forecasting Levee Sensors Pressure Temperature Geometrical deviation Neural Networks Time Series Management Anomaly detection (Slipping) Results Effectiveness of levee reinforcement has to be increased by a factor 4 which is impossible without innovation. Peter Jansen, Waternet Domain Device Analytics + + = Smart + Customer Page 14

Smart data to business example (9/9): Advanced Traffic Forecast from Floating Car Traffic Management Traffic Flow Models Traffic Planning Traffic Sensors Induction Loops (traffic lights and guidance systems) GPS and Car Neural Networks Time Series Traffic Forecasting Optimization of Traffic Flow Objective Highly accurate traffic forecast Improve shortterm traffic prediction by combining data sources Domain Device Analytics + + = Smart + Customer Page 15

Smart data to business examples: Lessons learned For all use cases/ business cases the data value stream needs to be specifically designed or adapted due to varying data types, data amount, data quality, data sources, data models One-sizedoesn t-fit-all Based on today s technologies the combination of analytics know how and application know how can generate new business and value add (Smart data to business examples 1 9) To create new business, new technologies need to be developed e.g. in the areas of multicore computing and cloud computing, but also new mathematics for analytics are necessary (artificial intelligence, neural networks ) The combination of different data from different data sources (e.g. customer data + Siemens data) and their common analysis leads to advantages for both partners e.g. floating car data combined with Siemens traffic management systems data Security and data protection need to be integral part of all technical solutions along the data value chain (data value stream) Page 16

Smart Innovation Lab: Siemens and Fraunhofer jointly leading the Smart Cities Working Group Lenkung Innovation Communities Industrie 4.0 Energie Smart Cities Medizin Arbeitsgruppe Curation Arbeitsgruppe Recht Betrieb Plattform & Werkzeuge Page 17

Smart data to business outlook: The way to an ecosystem partner framework value stream based on Siemens Products and Solutions Domain data Installed products & systems, processes, sensor data Installed products & systems, processes, sensor data Domain data analytics analytics ''Smart data to business'' Intelligence Intelligence ''Smart data to business'' Innovation Innovation value stream based on Ecosystem partner s Products and Solutions Value Generation Value Generation Customer benefit Performance increase Energy saving Cost reduction Risk avoidance / security Customer benefit Performance increase Energy saving Cost reduction Risk avoidance / security Page 18

Smart data to business outlook: The way to an ecosystem partner framework Sharing & Algorithms value stream based on Siemens Products and Solutions Domain data Installed products & systems, processes, sensor data Installed products & systems, processes, sensor data Domain data analytics Algorithms analytics ''Smart data to business'' Intelligence Intelligence ''Smart data to business'' Innovation Innovation value stream based on Ecosystem partner s Products and Solutions Value Generation Value Generation Customer benefit Performance increase Energy saving Cost reduction Risk avoidance / security Customer benefit Performance increase Energy saving Cost reduction Risk avoidance / security Page 19

Smart data to business outlook: The way to an ecosystem partner framework: Using an unified Analytics Framework value stream based on Siemens Products and Solutions Features Customer Domain Modular data and serviceoriented Performance Pre- ''Smart data to business'' Analytics Framework benefit Management Modeling & Analysis Integration increase sentation Installed Workflow-based products Multiple & systems, operation Value Energy saving modes processes, analytics Intelligence Innovation Generation Cloud (public, private, Cost reduction sensor hybrid) data Risk avoidance / security On-premise Algorithms Integrated security Customer Protection of data at rest Installed products & systems, Value Performance benefit and in transit, during the Workflow management whole lifecycle processes, analytics Intelligence Communication Security Operations Innovation Generation increase Management Protection of algorithms / sensor data Energy saving Cloud / On-Premise models Cost reduction Domain Compliance data to industry ''Smart data to business'' IT Infrastructure Risk avoidance / standards value stream based on Ecosystem partner s Products and Solutions security Physical data integration Virtual data integration structure model mgmt. Stream processing Low information density / Time series storage High information density storage Analytical model mgmt. mining / machine learning Natural Language Processing / Search Reasoning / Semantics Optimization Reporting / Dashboards Visual analytics Page 20

Smart data to business outlook: The way to an ecosystem partner framework: IT security architecture with world class reliability required value stream based on Siemens Products and Solutions Domain data Installed products & systems, processes, sensor data Installed products & systems, processes, sensor data Domain data analytics Algorithms analytics ''Smart data to business'' Intelligence Intelligence ''Smart data to business'' Innovation = IT Security Innovation value stream based on Ecosystem partner s Products and Solutions Value Generation Value Generation Customer benefit Performance increase Energy saving Cost reduction Risk avoidance / security Customer benefit Performance increase Energy saving Cost reduction Risk avoidance / security Page 21

Smart data to business outlook: The way to an ecosystem partner framework: Cloud based architectures to be developed value stream based on Siemens Products and Solutions Domain data Installed products & systems, processes, sensor data Installed products & systems, processes, sensor data Domain data analytics Algorithms analytics ''Smart data to business'' Intelligence Intelligence ''Smart data to business'' Innovation = IT Security Innovation value stream based on Ecosystem partner s Products and Solutions Value Generation Value Generation Customer benefit Performance increase Energy saving Cost reduction Risk avoidance / security Customer benefit Performance increase Energy saving Cost reduction Risk avoidance / security Page 22

Smart data to business requires the collaboration of researchers, scientists and specialists from different areas with different competencies Area Computer Science Mathematics & Statistics Competencies/ Know how Machine Learning base Theory Software Enegineering Numerical Mathematics Statistics Optimization (discrete, continuously, dynamic ) Physics & Engineering Economics Communications engineering Control engineering Automation engineering Econometrics Finances Science E.g. Mechanics Fluid mechanics Experimental physics Page 23

Leveraging opportunities via Smart Ecosystems value stream based on Siemens Products and Solutions Domain data Installed products & systems, processes, sensor data Installed products & systems, processes, sensor data Domain data analytics ''Smart data to business'' We make Smart a reality analytics Intelligence Intelligence ''Smart data to business'' Innovation Innovation value stream based on Ecosystem partner s Products and Solutions Value Generation Creating a data analytics ecosystem with strong partners to enhance Algorithms = IT Security business value. Thank you for your attention. Value Generation Customer benefit Performance increase Energy saving Cost reduction Risk avoidance / security Customer benefit Performance increase Energy saving Cost reduction Risk avoidance / security Page 24

Siemens Future Forum @ HANNOVER Messe 2014 Thank you! Page 25

Contact Information Many thanks for your attention! Chief Key Expert Engineer Siemens AG / Germany / CT RTC CES Günther-Scharowsky-Straße 1 91058 Erlangen Phone: +49 (9131) 7-23912 Fax: +49 (89) 636-34098 Mobile: +49 (172) 8352610 E-mail: hahn.th@siemens.com siemens.com/innovation Page 26