Transmission capacity of CDMA ad hoc networks

Similar documents
Admission Control for Variable Spreading Gain CDMA Wireless Packet Networks

Bluetooth voice and data performance in DS WLAN environment

ALOHA Performs Delay-Optimum Power Control

Optimizing the SINR operating point of spatial networks

Comparison of Network Coding and Non-Network Coding Schemes for Multi-hop Wireless Networks

CDMA Performance under Fading Channel

IN THIS PAPER, we study the delay and capacity trade-offs

Rethinking MIMO for Wireless Networks: Linear Throughput Increases with Multiple Receive Antennas

Packet Queueing Delay in Wireless Networks with Multiple Base Stations and Cellular Frequency Reuse

Communication in wireless ad hoc networks

EE4367 Telecom. Switching & Transmission. Prof. Murat Torlak

Distributed Power Control and Routing for Clustered CDMA Wireless Ad Hoc Networks

Attenuation (amplitude of the wave loses strength thereby the signal power) Refraction Reflection Shadowing Scattering Diffraction

PART 5D TECHNICAL AND OPERATING CHARACTERISTICS OF MOBILE-SATELLITE SERVICES RECOMMENDATION ITU-R M.1188

An Algorithm for Automatic Base Station Placement in Cellular Network Deployment

Log-Likelihood Ratio-based Relay Selection Algorithm in Wireless Network

IEEE TRANSACTIONS ON SIGNAL PROCESSING, VOL. 55, NO. 1, JANUARY

A Study of Network assisted Device-to- Device Discovery Algorithms, a Criterion for Mode Selection and a Resource Allocation Scheme

System Design in Wireless Communication. Ali Khawaja

Inter-Cell Interference Coordination (ICIC) Technology

Dynamic Reconfiguration & Efficient Resource Allocation for Indoor Broadband Wireless Networks

Applying Active Queue Management to Link Layer Buffers for Real-time Traffic over Third Generation Wireless Networks

Optimum Frequency-Domain Partial Response Encoding in OFDM System

How performance metrics depend on the traffic demand in large cellular networks

Location management Need Frequency Location updating

Subscriber Maximization in CDMA Cellular Networks

Wireless LAN Concepts

Power Control is Not Required for Wireless Networks in the Linear Regime

On the Traffic Capacity of Cellular Data Networks. 1 Introduction. T. Bonald 1,2, A. Proutière 1,2

A survey on Spectrum Management in Cognitive Radio Networks

Performance Analysis of the IEEE Wireless LAN Standard 1

Efficient Data Recovery scheme in PTS-Based OFDM systems with MATRIX Formulation

How To Understand And Understand The Power Of A Cdma/Ds System

This article has been accepted for inclusion in a future issue of this journal. Content is final as presented, with the exception of pagination.

CS263: Wireless Communications and Sensor Networks

ERLANG CAPACITY EVALUATION IN GSM AND CDMA CELLULAR SYSTEMS

Dynamic Load Balance Algorithm (DLBA) for IEEE Wireless LAN

MICROWAVE ANTENNA PATTERN WITH DIFFERENT PARAMETER EVALUATION IN MOBILE ENVIRONMENT

Mobility Increases the Capacity of Ad-hoc Wireless Networks

Cooperative Multiple Access for Wireless Networks: Protocols Design and Stability Analysis

Digital Modulation. David Tipper. Department of Information Science and Telecommunications University of Pittsburgh. Typical Communication System

CHAPTER - 4 CHANNEL ALLOCATION BASED WIMAX TOPOLOGY

WIRELESS communication channels have the characteristic

Mobility Increases the Capacity of Ad Hoc Wireless Networks

International Journal of Advanced Research in Computer Science and Software Engineering

Multiple Access Techniques

communication over wireless link handling mobile user who changes point of attachment to network

Lecture 1. Introduction to Wireless Communications 1

4 Cellular systems: multiple access

Algorithms for Interference Sensing in Optical CDMA Networks

8. Cellular Systems. 1. Bell System Technical Journal, Vol. 58, no. 1, Jan R. Steele, Mobile Communications, Pentech House, 1992.

Competitive Analysis of On line Randomized Call Control in Cellular Networks

Mobile Phone Tracking & Positioning Techniques

Lecture 18: CDMA. What is Multiple Access? ECE 598 Fall 2006

Complexity-bounded Power Control in Video Transmission over a CDMA Wireless Network

AN INTRODUCTION TO DIGITAL MODULATION

A Novel Decentralized Time Slot Allocation Algorithm in Dynamic TDD System

Technology White Paper Capacity Constrained Smart Grid Design

Frequency Hopping Spread Spectrum (FHSS) vs. Direct Sequence Spread Spectrum (DSSS) in Broadband Wireless Access (BWA) and Wireless LAN (WLAN)

Tranzeo s EnRoute500 Performance Analysis and Prediction

Wi-Fi and Bluetooth - Interference Issues

1 Lecture Notes 1 Interference Limited System, Cellular. Systems Introduction, Power and Path Loss

Rapid Prototyping of a Frequency Hopping Ad Hoc Network System

Smart Mobility Management for D2D Communications in 5G Networks

Characterization of Ultra Wideband Channel in Data Centers

Hybrid Passive and Active Surveillance Approach with Interchangeable Filters and a Time Window Mechanism for Performance Monitoring

CDMA TECHNOLOGY. Brief Working of CDMA

Revision of Lecture Eighteen

CONVERGECAST, namely the collection of data from

Multihopping for OFDM based Wireless Networks

Planning of UMTS Cellular Networks for Data Services Based on HSDPA

Abstract. 1. Introduction

COMPATIBILITY STUDY FOR UMTS OPERATING WITHIN THE GSM 900 AND GSM 1800 FREQUENCY BANDS

PERFORMANCE STUDY AND SIMULATION OF AN ANYCAST PROTOCOL FOR WIRELESS MOBILE AD HOC NETWORKS

RESULTS OF TESTS WITH DOMESTIC RECEIVER IC S FOR DVB-T. C.R. Nokes BBC R&D, UK ABSTRACT

Jitter Measurements in Serial Data Signals

Module 5. Broadcast Communication Networks. Version 2 CSE IIT, Kharagpur

IEEE/ACM TRANSACTIONS ON NETWORKING, VOL. 17, NO. 6, DECEMBER /$ IEEE

MASSACHUSETTS INSTITUTE OF TECHNOLOGY 6.436J/15.085J Fall 2008 Lecture 5 9/17/2008 RANDOM VARIABLES

Effects of natural propagation environments on wireless sensor network coverage area

Frequency Assignment in Mobile Phone Systems

An Efficient Hybrid Data Gathering Scheme in Wireless Sensor Networks

Performance of networks containing both MaxNet and SumNet links

is the power reference: Specifically, power in db is represented by the following equation, where P0 P db = 10 log 10

MULTIHOP cellular networks have been proposed as an

Full- or Half-Duplex? A Capacity Analysis with Bounded Radio Resources

A Novel Routing and Data Transmission Method for Stub Network of Internet of Things based on Percolation

Voice Service Support over Cognitive Radio Networks

A New Look at Bluetooth Density for the Office: Expanded Simulation Results Deliver Real-World Opportunities for Audio Deployments

IRMA: Integrated Routing and MAC Scheduling in Multihop Wireless Mesh Networks

Probability and Random Variables. Generation of random variables (r.v.)

Measurement, Modeling and Simulation of Power Line Channel for Indoor High-speed Data Communications

How To Balance Network Load In A Wireless Sensor Network

Performance of TD-CDMA systems during crossed slots

Metric Spaces. Chapter Metrics

CHARACTERIZING OF INFRASTRUCTURE BY KNOWLEDGE OF MOBILE HYBRID SYSTEM

LTE Evolution for Cellular IoT Ericsson & NSN

PERFORMANCE OF MOBILE AD HOC NETWORKING ROUTING PROTOCOLS IN REALISTIC SCENARIOS

MOBILE CONVERGED NETWORKS: FRAMEWORK, OPTIMIZATION, AND CHALLENGES

Broadcasting in Wireless Networks

Transcription:

Transmission capacity of CDA ad hoc networks Steven Weber Dept. of ECE Drexel University Philadelphia PA 904 sweber@ece.drexel.edu Xiangying Yang, Gustavo de Veciana, Jeffrey G. Andrews Dept. of ECE The Univ. of Texas at Austin Austin TX 787 yangxy,gustavo,jandrews@ece.utexas.edu Abstract Spread spectrum technologies are appropriate for ad hoc networking because they permit interference averaging and tolerate co-located simultaneous transmissions. We develop analytic results on the transmission capacity of a CDA ad hoc network. Transmission capacity is defined as the maximum permissible density of simultaneous transmissions that allows a certain probability of successful reception. Three models of increasing generality are analyzed: a trivial model with two transmitters, a Poisson point process model where each node transmits with fixed power, and a Poisson point process model where nodes use variable transmission powers. We obtain upper and lower bounds on the transmission capacity for both frequency hopped F-CDA and direct sequence DS-CDA implementations of CDA for the latter two models. Our analysis shows that F- CDA obtains a higher transmission capacity than DS-CDA on the order of, where is the spreading factor and > is the path loss exponent. The interpretation is that F- CDA is generally preferable to DS-CDA for ad hoc networks, particulary when the path loss exponent is large. I. INTRODUCTION Ad hoc networks offer the benefit of wireless communication without requiring planned infrastructure. Spread spectrum technologies, such as CDA, are appropriate for ad hoc networking because they permit interference averaging and tolerate colocated simultaneous transmissions, e.g., [], []. Interference averaging permits a receiver to successfully decode its intended transmission provided the aggregate interference power from other transmissions is sufficiently small relative to the received power of the intended transmission. We study both frequency hopped F-CDA and direct sequence DS-CDA implementations of CDA. We let denote the spreading factor for both. F-CDA divides the available bandwidth, W, into sub-channels, each of bandwidth W. A receiver attempting to decode a signal from a transmitter on sub-channel m only sees interference from other simultaneous transmissions on sub-channel m. Whereas F-CDA uses the spreading factor,, to thin out the set of interfering transmitters, DS-CDA uses the spreading factor to reduce the minimum SINR required for successful reception. If the nominal SINR requirement for F-CDA is β, then DS-CDA reduces the SINR requirement to β, assuming a typical PN code cross-correlation [3]. Thus, a receiver on a network using F-CDA only sees interference from transmitters on sub-channel m and the aggregate subchannel interference must be such that the received SINR exceeds β, while a receiver on a network using DS-CDA sees interference from all transmitters but the aggregate interference must be such that the received SINR exceeds β. Important recent results [4] demonstrate that per node transport capacity, measured in bit-meters/second, decreases in the node density. We use a different definition of capacity, termed transmission capacity, defined as the maximum permissible density of simultaneous transmissions that satisfies a constraint on the probability of successful reception. Formally, let Π = X i denote a homogeneous Poisson point process on a plane, where the points X i denote the locations of transmitting nodes. We define the transmission capacity, λ, as the maximum density of points in Π such that the probability a typical receiver is unable to decode its transmission is less than ɛ, for some 0 < ɛ. ere, ɛ is the outage probability requirement. Essentially, the transmission capacity is an intuitive and practical measure of the usefulness of an ad hoc network, since it determines how many users can be supported at a given data rate and bandwidth. In this work the transmission capacity is derived for three increasingly sophisticated models of a CDA ad hoc network. The first is a trivial model consisting of a single receiver and two transmitters. The purpose for studying this model is to introduce some intuition behind why F-CDA yields a superior system capacity over DS-CDA. The second model assumes the nodes comprising the ad hoc network form a homogeneous Poisson point process on the plane. The third model utilizes a marked Poisson point process, where the marks denote the transmission distance for each node. As will be explained, we assume nodes utilize pairwise power control, meaning that each transmitter chooses its transmission power such that the received signal power will be constant. To our knowledge, this research is the first to analytically compare the system capacity of DS-CDA and F-CDA in the ad hoc network scenario. Some previous results compare aspects of F-CDA and DS-CDA for ad hoc networks [5] and cellular networks [6], [7], [8]. Specifically, previous results in [7], [8], which focused on the bit-error rate BER performance under various channel models, have shown F- CDA achieves better performance than DS-CDA when centralized power control is not available. Instead of focusing on BER like prior research, we directly approach the comparison of DS-CDA and F-CDA from the perspective of system capacity and show that F-CDA offers capacity improvement above DS-CDA on the order of for interference constrained ad hoc wireless networks. II. BASE ODEL: TWO TRANSITTERS AND ONE RECEIVER Consider the case shown in Figure where we have a receiver at the origin and two transmitters at random locations

within a circle of radius r of the receiver. Transmitter is trying to communicate with the receiver and transmitter is transmitting to some other receiver, and therefore is causing interference for the receiver at the origin. We are interested in studying the probability that the receiver can successfully receive the transmission from transmitter when the nodes use F-CDA and DS-CDA. Fig.. Transmitter, at distance R from the receiver at the origin, sends a signal to the receiver, while transmitter, at distance R, causes interference. If we assume that transmitters and are uniformly and independently distributed in the ball b0, r, then it is easily seen that the CDF for their distance from the origin is F R r = F R r = r r with corresponding PDF fr r = f R r = r r. We define R = R R as the ratio of the distances. Straightforward analysis shows the CDF for R to be F R r = r, 0 r r, r Our propagation model ignores shadowing and multi-path effects and focuses just on path loss. Specifically, we use a simplified path loss model where the received power P r = ρr, where > is the path loss exponent and ρ is the transmitted power multiplied by some constant we will simply refer to ρ as the transmit power. The actual value for depends on the environment, but [3, 5] is a fairly typical range [9]. We will assume for this model that both transmitters use a fixed power level ρ. Consider first the case where the transmitters and receivers use DS-CDA with a nominal SINR requirement of β and a spreading factor. The outage probability for DS-CDA, p DS o ρr P β ρr p DS o, is the probability the SINR is inadequate, i.e., p DS. Simple analysis shows = P R R β ρr β = F R = o = β. Next consider the outage probability for the F-CDA case, p F o. ere we assume there are sub-channels available, and that each transmitter chooses a channel independently, so the outage probability is multiplied by, i.e., the probability that the two transmitters choose the same sub-channel: ρr p F o = P β = F R β = β 3 Taking the ratio of the loss probability for DS over the loss probability for F we obtain: p DS o p F o = β β =. 4 Note the loss probability ratio is for = and monotonically increases in for >. Thus the benefit of F-CDA over DS-CDA is more pronounced in transmission areas with high attenuation. This simple model illustrates that when an ad hoc network is interference constrained, avoiding interference by random hopping F-CDA is preferable to interference suppression DS-CDA. Notably, the gain offered by F-CDA is significant even when there are only a few interfering sources for a typical path loss exponent of [3, 5] [9]. This is reminiscent of the well-known near-far problem in wireless communications especially CDA, where an interfering transmitter in near proximity to a receiver causes such a high level of interference that successful reception is impossible at the receiver. This near-far problem is inevitable for ad hoc networks and poses a particularly significant obstacle for regions with a large path loss exponent. For F-CDA, the outage probability is independent of neighboring interference power provided the interfering nodes are not simultaneously contending for the same sub-channel as the receiver. For DS- CDA, however, the outage probability is very sensitive to the interference power level. This translates directly to an increased outage probability for DS-CDA, for a given configuration of node positions. The two transmitter model is obviously unrealistic this motivates us to consider a more general ad hoc network, described in the next section. III. SECOND ODEL: POINT PROCESS AD OC NETWORK WIT FIXED TRANSISSION DISTANCE Our second model utilizes a homogeneous Poisson point process Π = X i on the plane R to represent the locations of all nodes transmitting at some time t. The transmission capacity of the network, as defined earlier, is the maximum intensity λ of the process Π such that outage probability is less than ɛ, for 0 < ɛ. We will write R i = X i for the distance from node i to the origin. Note that the transmission capacity may be improved through local scheduling or mobility we assume nodes are fixed and always transmitting; these topics are left for future work. To evaluate the outage probability we will condition on a typical transmitter at the origin giving what is known as the Palm distribution for transmitters on the plane [0]. It follows by Slivnyak s Theorem [0] that this conditional distribution corresponds to a homogenous Point process with the same intensity and an additional point at the origin. Now shifting this entire point process so that the receiver associated with the typical transmitter lies at the origin, we see that the conditional distribution of potential interferers is a homogenous Poisson point process with the same intensity. We will denote this process by Π and denote probability with respect to this distribution by P 0. For the F-CDA case we assume each transmitter chooses its sub-channel independently. We let Π m denote the set of transmitters which select sub-channel m, for m =,...,.

Because of the independent sampling assumption, each process Π m is a homogeneous Poisson point process with intensity λ. The ambient noise density is denoted by N o. For F-CDA W the total ambient noise power is N o η, i.e., only the power from the frequency sub-band corresponding to the active subchannel causes noise for the receiver. For DS-CDA the total ambient noise power is N o W = η, i.e., power from the entire band, W, causes noise for the receiver. We assume for simplicity that i all transmitters utilize the same transmission power, ρ, and ii all transmission distances are over the same distance d. These assumptions will be removed in the third model. It is easily seen that the appropriate requirements on λ are given below: F P 0 ρr η + i Π m ρr β ɛ, 5 i DS P 0 ρr η + β ɛ. 6 i Π ρr i We will obtain upper and lower bounds on λ in the form λ λ λ. The lower bound λ is such that λ < λ ensures p o < ɛ, i.e., the QoS requirement is definitely met, and the upper bound λ is such that λ > λ ensures p o > ɛ, i.e., the QoS requirement is definitely violated. These bounds, and the transmission capacity ratio obtained of F-CDA over DS- CDA, are given in the following theorem. Theorem 3.: For small ɛ, the lower and upper bounds on transmission capacity for F-CDA and DS-CDA when transmitters employ a fixed transmission power ρ and a fixed transmission distance r are: ɛ π κ κ λ DS ɛ π 7 ɛ π κ λ F ɛ π κ 8 where κ = r β η ρ. The transmission capacity ratio is γ fixed = λf λ DS = λ,f λ,ds =. 9 See appendix for proof. Theorem 3. shows the capacity improvement of F-CDA over DS-CDA equals the outage probability ratio obtained in Section II. The intuition follows from the same argument, i.e., that F-CDA is less sensitive to the near-far problem than DS-CDA. In addition, we observe a capacity gain the capacity improves linearly F-CDA and sub-linearly DS- CDA in the spreading gain when >. ence, if the traffic in an ad hoc network does not require a very high data rate, e.g., voice traffic, it is desirable to use a high spreading gain in order to achieve robust interference tolerance or high transmission capacity. IV. TIRD ODEL: POINT PROCESS AD OC NETWORK WIT VARIABLE TRANSISSION DISTANCE For our third model we remove the assumption that all transmitters use the same transmission power and have the same transmission distance. In real ad hoc networks transmission relay distances will be variable as will interference power levels. Both factors suggest transmitters use power control since too high of a signal power level causes unnecessary interference and too low of a signal power level will not be successfully received. Finding a system-wide optimal set of transmission power levels is the subject of recent work [] and has shown that efficient distributed algorithms for global power control are difficult. For this work we take a simpler approach and assume that transmitters choose their transmission power as a function of their distance from their intended receiver and independent of the interference level of the receiver. We call this pairwise power control since each transmitter and receiver pair determines the transmission power independently of other pairs. Specifically, the transmitter chooses its transmission power such that the signal power at the receiver will be some fixed level ϱ. Thus if a transmitter and receiver are separated by a distance d then the transmitter will employ a transmission power ϱd so that the received signal power will be ϱ. We make no particular assumption on the value of ϱ, other than ϱ > η β, which is required to keep the received signal power above the noise floor. Formally, our third model consists of a marked homogeneous Poisson point process Φ = X i, D i where the points X i again denote transmitter locations and the marks D i denote the distance from transmitter i to its intended receiver. We assume the marks are independent and identically distributed with CDF F D d, and that the marks are also independent of the points. We again use R i = X i to denote the distance from node i to the origin. Similar to the second model, we evaluate the outage probability using the Palm distribution P 0 which places a typical receiver at the origin. Also similar to the second model, we define the sampled sub-process Φ m as a homogeneous marked Poisson point processes consisting of all transmitters on sub-channel m, for m =,...,. We define the function gr, d as giving the signal power level at a distance r from the transmitter when the transmitter s. d intended recipient is at a distance d. Thus, gr, d = ϱ r Note in particular that gd, d = ϱ, i.e., at the distance of the intended receiver the signal power is the desired level. Note that the transmission power is g, d = ϱd. Devices are assumed to have a maximum transmission power of ϱ. Solving ϱd ϱ for d gives a maximum transmission distance of = ϱ ϱ. We stated above that the transmission distances are assumed to be iid with CDF F D d. We assume that a transmitter is equally likely to choose any one of the receivers within a circle of radius of it. The probability a transmitter will have a transmission distance d should be proportional to d, i.e., f D d d. Normalizing this distribution with the constraint that d gives the CDF and PDF as F D d = d and fd d = d. It is easily seen that the appropriate requirements on λ are given below: F P 0 ϱ η + i Φ m gr i, D i β ɛ, 0 DS P 0 ϱ η + i Φ gr i, D i β ɛ. We define similar bounds, λ, λ as for the second model. These bounds, and the transmission capacity ratio obtained

of F-CDA over DS-CDA, are given in the following theorem. Theorem 4.: For small ɛ, the lower and upper bounds on transmission capacity for F-CDA and DS-CDA when transmitters employ variable transmission powers are ɛ π δ λ DS 4 ɛ π δ ɛ π δ λ F 4 ɛ π δ 3 where δ = β η ϱ. The transmission capacity ratio is γ fixed = λf λ DS = λ,f λ,ds =. 4 See appendix for proof. Power control in cellular networks solves the near-far problem by equalizing receiving powers at the central base station. The pair-wise power control scheme in ad hoc networks can not fully solve the near-far problem since transmitters have different intended receivers, but it offers a simple and distributed means by which to mitigate the interference across concurrent transmissions. V. CONCLUSION We have compared the performance of F-CDA and DS- CDA in ad hoc networks in terms of transmission capacity. When capacity is constrained by neighboring interference, either because of high path loss or because of clustered interference, F-CDA is more appropriate for achieving high transmission capacity than DS-CDA, especially when a large spreading gain is possible. The advantage of F-CDA also increases as the path loss exponent increases. This implies that in more severe propagation environments such as indoor wireless systems with walls and obstacles, frequency hopping enjoys an even larger advantage over direct sequence spreading. APPENDIX Please note that the appendices may be shortened for the camera-ready version. They are included in this submission for completeness. point process. Define the following events: F = ω R i ω κ F = F = Π mω ω Π m ω b0, s ω R i ω κ Π mω b0,s 7 8 9 The event F consists of all outage outcomes, F consists of all outcomes where there are one or more transmitters within s of the origin, and the event F consists of all outcomes where the set of transmitters outside the ball b0, s generate enough interference power to cause an outage at the origin. Lemma.: For s = κ then F F F F. Proof For s = κ even one transmitter within b0, s can cause an outage, thus F F. Note we actually have F = F F. Lemma.: P 0 F = e λ πs. Proof Note P 0 F is the probability there are no transmitters in b0, s, which is simply the void probability [0]. For a Poisson process in the plane with intensity λ the void probability for b0, s is e λπs. Lemma.3: λ = ln ɛ π κ. Proof Clearly P 0 F P 0 F. If we can find a λ such that λ > λ P 0 F > ɛ then it follows that P 0 F > ɛ. We find such a λ by solving P 0 F = ɛ and substituting s = κ. Lemma.4: If P 0 F < + ɛ and P 0 F < + ɛ then P 0 F < ɛ Proof Clearly P 0 F P 0 F F. Also, by definition, P 0 F F = P 0 F F +P 0 F F +P 0 F F. Next note that F, F are independent since they concern disjoint regions on the plane, implying P 0 F F = P 0 F P 0 F + P 0 F P 0 F + P 0 F P 0 F. Using the weak bound of P 0 F and P 0 F, we get P 0 F F + ɛ + + ɛ + ɛ = ɛ. 0 PROOF OF TEORE 3. The QoS constraints can be written as F P 0 κ ɛ, 5 DS P 0 R i Π m Π R i κ ɛ. 6 for κ = r β η ρ. We first address the F-CDA case. Let Ω, F, P 0 represent the underlying probability triple for the process Π, let ω Ω represent outcomes, i.e., particular realization of the Lemma.5: P 0 F < + ɛ if λ < ln + ɛ π κ Proof Similar to Lemma.3, we solve P 0 F = + ɛ for λ. Lemma.6: Consider 0 ɛ, κ > 0, a homogeneous Poisson point process Π = X i on the plane of intensity λ, and Y = Π gx i for g a non-negative continuous function such that the integrals gxdx and gx dx R R exist. If λ < κ ɛ then P 0 Π gx i κ ɛ, where = λ V ar Π gx i.

Proof Let µ = E[Y ]. By Chebychev s inequality, λ P 0 Y κ P 0 Y µλ κ µλ λ κ µλ for λµ κ. We can rearrange equation for λ: Solving for λ gives λ κ µλ = ɛ as a quadratic µ λ µκ + ɛ λ + κ = 0. 3 λ = κ µ + µ + 4κµɛ ɛ. 4 We find the first three terms in the aclaurin expansion of + aɛ as + aɛ + a ɛ a 8 ɛ. Applying this for a = 4κµ and rearranging gives λ κ ɛ. Lemma.7: P 0 F < + ɛ if λ < + ɛ π κ Proof Define = λ V ar Π m b0,s R i. In words, λ is the variance of a function of a homogeneous Poisson point process on the plane with intensity λ, where the function is the normalized aggregate interference power seen at the origin caused by all transmitters outside the circle b0, s. By the previous lemma, P 0 F + ɛ if λ < κ + ɛ. Straightforward application of Campbell s Theorem [0] yields = R b0,s x dx = πs. Note that Π m has intensity λ. Thus we require λ κ + ɛ. Sub- + ɛ. Substituting and rearranging yields the lemma. stituting we get λ κ πs s = κ Lemma.8: λ = ln + ɛ π κ. Proof Combining Lemmas.4,.5 and.7 we know that if λ < min ln + ɛ, + ɛ π κ then PF < ɛ. We take the aclaurin expansion of the two functions inside the minimum and find ln + ɛ ɛ and + ɛ ɛ. Since > this means that ln + ɛ is the smaller function for small ɛ. This yields the lemma. Lemma s.3 and.8 give us λ F = ln ɛ π κ and λ,f = ln + ɛ π κ respectively. Taking the aclaurin expansion of ln ɛ and ln + ɛ gives λ F ɛ π κ and λ,f ɛ π κ for small ɛ. Thus the spread of our bound is λ F =, so we know the transmission λ F capacity of the F-CDA system within a factor of. Looking at equations 5 and 6, it s clear that the exact same analysis for DS-CDA holds provided we replace λ with λ and κ with κ. Thus, if ɛ π κ λ F ɛ π κ holds for F, then ɛ π κ λ DS ɛ π κ holds for DS. It s clear that the transmission capacity ratio of F-CDA over DS-CDA is γ fixed =. PROOF OF TEORE 4. The QoS constraints can be written as F P 0 D i δ ɛ, 5 R i DS Φ m P 0 D i δ ɛ. 6 R i Φ for δ = β η ρ. We first address the F-CDA case. Let Ω, F, P 0 represent the underlying probability triple for the process Π, let ω Ω represent outcomes, i.e., particular realization of the point process. Define the following events: D i ω F = ω > δ 7 R i ω Φ m ω F = ω Φ m ω b0, s [sδ, 8 F = ω Φ m ω b0, s R + 9 D i ω F 3 = ω > δ 30 R i ω Φ mω b0,s The event F consists of all outage outcomes. The event F consists of all outcomes where there are one or more transmitters within s of the origin with transmission distances exceeding sδ. This threshold is the smallest transmission distance such that even one transmitter in b0, s with such a transmission distance will cause an outage at the origin. The event F consists of all outcomes with one or more transmitters in b0, s; but note that not all outcomes in F will cause an outage. Finally, the event F 3 consists of all outcomes where the interference power at the origin caused by all the transmitters outside b0, s is adequate to cause an outage at the origin. Lemma.9: For all s, F F F F 3 Proof The proof is straightforward and is omitted. Note, contrary to Lemma., we don t have F = F F 3. Lemma.0: For arbitrary s, P 0 F = e λ πs sδ For s = δ,. 3 P 0 F = e λ πs. 3 Proof Since the marks are independent of the point locations, we can decompose the probability into the product of the probabilities that there aren t any points in b0, s times the probability that a given point has a mark in [sδ,. The probability of the former is e λ m πs and the probability of the latter is sδ. This yields the first equation in the Lemma. The second equation is immediate for the specified s. Lemma.: λ = ln ɛδ π Proof Clearly P 0 F P 0 F. If we can find a λ such that λ > λ P 0 F > ɛ then it follows that P 0 F > ɛ.

We find such a λ by solving P 0 F = ɛ and substituting s = δ. Lemma.: If P 0 F < + ɛ and P 0 F < + ɛ then P 0 F < ɛ. Proof Same as Lemma.4. Lemma.3: P 0 F < + ɛ if λ < ln +ɛδ π. Proof Similar to Lemma., we find P 0 F = e λ πs, set this equal to + ɛ, solve for λ, and substitute s =. δ Lemma.4: Consider 0 ɛ, δ > 0, a homogeneous marked Poisson point process Φ = X i, D i on the plane of intensity λ, and Y = Φ gx i, D i for g, a non-negative continuous function such that the integrals R 0 gx, d dx dd and R 0 gx, d dx dd exist. If λ < δ ɛ then P 0 Φ gx i, D i δ ɛ, where = λ V ar Φ gx i, D i. Proof Same as Lemma.6. Lemma.5: P 0 F 3 < + ɛ if λ < +ɛ δ π. Proof Define = λ V ar Di Φ m b0,s R i. In words, λ is the variance of a function of a homogeneous marked Poisson point process on the plane with intensity λ, where the function is the normalized aggregate interference power seen at the origin caused by all transmitters outside the circle b0, s. By the previous lemma, P 0 F 3 + ɛ if λ < δ + ɛ. Straightforward application of Campbell s Theorem [0] yields = R b0,s 0 d x πs fd d dx dd = +. Note that Φ m has intensity λ. Thus we require λ δ + ɛ. Substituting we get λ +ɛ +δ Substituting s = δ πs. gives λ < + +ɛ δ π. For 6, a reasonable range for, we have + >, which we substitute in to simplify the bound. Looking at equations 5 and 6, it s clear that the exact same analysis for DS-CDA holds provided we replace λ with λ and δ with δ. Thus, if ɛ π δ λ F 4 ɛ π δ holds for F, then ɛ π δ λ DS 4 ɛ π δ holds for DS. It s clear that the transmission capacity ratio of F-CDA over DS-CDA is γ variable =. REFERENCES []. B. Pursley, The role of spread spectrum in packet radio networks, Proceedings of the IEEE, vol. 75, no., pp. 6 34, Jan. 987. [] Timothy J. Shepard, A channel access scheme for large dense packet radio networks, in AC SIGCO, Stanford University, Aug. 996. [3] K. S. Gilhousen and et. al., On the capacity of a cellular CDA system, IEEE Trans. on Veh. Technology, vol. 40, no., pp. 303, ay 99. [4] P. Gupta and P.R. Kumar, The capacity of wireless networks, IEEE Trans. on Info. Theory, vol. 46, no., pp. 388 404, ar. 000. [5]. Pursley and D.J. Taipale, Error probabilities for spread-spectrum packet radio with convolutional codes and viterbi decoding, IEEE Trans. on Communications, vol. 35, no., pp., Jan. 987. [6] A. J. Viterbi, Spread spectrum communications myths and realities, IEEE Communications agazine, pp. 8, ay 979. [7] J.. Gass Jr. and. B. Pursley, A comparison of slow-frequency-hop and direct-sequence spread-spectrum communications over frequencyselective fading channels, in IEEE Trans. on Communications, ay 999, vol. 47, pp. 73 74. [8] G. Andersson, Performance of spread-spectrum radio techniques in an interference-limited hf environment, in Proc. IEEE ILCO, November 995, vol., pp. 347 35. [9] Theodore S. Rappaport, Wireless Communications: Principles and Practice, Prentice-all, Upper Saddle River, New Jersey, second edition, 00. [0] Dietrich Stoyan, Wilfred Kendall, and Joseph ecke, Stochastic Geometry and Its Applications, nd Edition, John Wiley and Sons, 996. [] T. ElBatt and A. Ephremides, Joint scheduling and power control for wireless ad hoc networks, in Proc., IEEE INFOCO, June 00, pp. 976 84. Lemma.6: λ = + ɛ π δ. Proof Combining Lemmas.,.3 and.5 we know that if λ < min ln + ɛ, + ɛ π δ then PF < ɛ. We take the aclaurin expansion of the two functions inside the minimum and find ln + ɛ ɛ and + ɛ ɛ, so that + ɛ is the smaller function for small ɛ. Lemma s. and.6 give us λ F = ln ɛ π δ and λ,f = + ɛ π δ respectively. Taking the aclaurin expansion of ln ɛ and + ɛ gives λ F 4 ɛ π δ and λ,f ɛ π δ for small ɛ. Thus the spread of our bound is λ F = 8, so we know the transmission λ F capacity of the F-CDA system within a factor of 8.