Cooperative Diversity in Wireless Communications using the Estimate-and-Forward Strategy

DOI : 10.17577/IJERTV1IS6062

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Cooperative Diversity in Wireless Communications using the Estimate-and-Forward Strategy

Adeleke, O.Aa and Salleh, M.F.Mb

School of Electrical and Electronic Engineering, University Sains Malaysia, Nibong Tebal, 14300, Pulau Pinang, Malaysia

Abstract

Cooperative communication or cooperative diversity is a technique aimed at improving the channel capacity of wireless networks, through the enhancement of transmit and spatial diversity. This is brought about by an exploitation of the antennas on wireless devices. A major benefit of this technique is that this gain in diversity is achieved without the physical installation of these multiple antennas at the transmitter or even the receiver. In this paper, we investigate this concept of cooperation among nodes in a wireless communication system, using one of the cooperative diversity schemes, that is, the estimate- and-forward scheme. The work involves evaluating the effect of employing relays on the channel capacity as well as finding the effect while varying the number of relays. The results show that when relays are used, the channel capacity is about 106 times that when only direct transmission is considered.

  1. Introduction

    Cooperative Communication or Diversity has, not too long ago been proposed as an effective approach to combat fading and to ensure better system performance in wireless communication networks [1]. Because of the broadcast nature of a wireless channel, when data is transmitted by a node or user to another node or user, other neighbouring users can also receive the transmitted signal. In this concept of cooperation, these

    neighbouring nodes can act as relays or partners to forward the data received from the source node to the destination node. These kinds of supportive networks are known as relay networks [2].

    To illustrate the basic idea behind cooperative communication, a simplified topology with one source node, two relay nodes and one destination node is depicted in Fig.1. Cooperative communication is carried out in two phases or in two time slots. In phase 1, the source node sends a data to the destination and relay nodes, whereas in phase 2, the relay node sends information to the destination node (possibly on different orthogonal channels). At the destination node, the data from both the source and relay nodes are combined. It has been shown that the capacity region of this communication channel can be increased significantly by this technique of relaying [3][4].

    Different protocols employed in cooperative cooperation include but not limited to, 1. Amplify- and-Forward, 2. Decode-and-Forward, 3. Estimate- and-Forward, 4. Coded Cooperation. In the amplify-and-forward scheme, the relay, upon the receipt of data from the source node, amplifies it and forwards to the destination node. In the decode-and-forward scheme, the relay decodes the received signal, encodes it and forwards to the destination, while the relay sends an estimate of the signal received to the destination in the estimate- and-forward scheme. The destination then uses the relays information as side information to decode the direct transmission of Phase 1. In the coded cooperation protocol, there is an integration of relay cooperation with channel coding [5][3].

    has been shown that the capacity region of this

    r1 communication channel can be increased significantly by this technique of relaying.

    s

    s d X

    Phase 1

    Phase 1

    Phase 2

    Yd

    d

    (combining)

    Yri

    r2 Yr r Xr

    Fig. 1. Simplified topology of a 1-source, 2-relay cooperative communication system

    Majority of the works done in the past in this area of cooperative diversity are based on the amplify- and-forward scheme. However this paper seeks to

    Fig. 2. 3-node cooperative communication system model

    In phase 1, the signal Yd received as a result of direct transmission at the destination node is given as

    examine the same concept of cooperation from the perspective of the estimate-and-forward scheme. The authors in [6] worked on cooperative communication without the use of relaying partner. But in [7], the authors showed that cooperative communication with the help of partners (or relays) provides better resource usage efficiency than communication without a relay. In [8], an adhoc

    Yd Ps Gsd X nd

    while the signal Yr received at the relay r is expressed as

    Yr Ps Gsr X nr

    (1)

    (2)

    network model which uses mobile clients as relays to route peer-to-peer traffic within the network, was proposed, but it lacks availability guarantee. Some techniques for relay selection for amplify-and- forward and decode-and-forward-based networks are presented in [9], while in [10], the performance of cooperative networks using different types of signal modulation schemes such as phase-shift- keying (PSK), and quadrature-amplitude modulation (QAM) was compared.

    The rest of this paper is organised as follows. Section 2 discusses the system model and mathematical formulation. Section 3 gives the simulation, while the simulation results are discussed in Section 4. Section 5 concludes the

    where Ps is the transmit power from the source node, X is the unit-energy information transmitted by the source node in Phase 1, Gsd and Gsr denote the channel gains from source to destination, and from source to relay, respectively, and nd and nr represent samples of additive white Gaussian noise (AWGN). It is assumed, without any loss of

    generality, that the noise power, 2 is the same for all the channels.

    Without employing the use of the relaying partners (direct transmission), the signal-to-noise ratio (SNR), denoted by from the source node to the destination node is expressed as

    P G

    paper.

  2. System model and mathematical

    DT s sd

    sd 2

    (3)

    formulation

    Fig. 2 shows a simplified cooperative

    While the capacity of the direct-transmission channel, denoted by Rsd is given as in (4)

    )

    DT

    communication system model with s as the source node, r as the relay or partner node and d as the

    Rsd

    W log 2 (1 sd

    (4)

    destination node. As mentioned earlier, cooperative communication is carried out in two phases or in two time slots. In phase 1, the source node sends a data to the destination and relay nodes, whereas in phase 2, the relay node sends information to the destination node (possibly on different orthogonal channels). At the destination node, the data from both the source and relay nodes are combined. It

    where W is the bandwidth of transmission

    Now for the Estimate-and-Forward cooperative diversity scheme being considered, the signal-to- noise ratio (SNR) from the source node to the destination node, via the relay node is written as

    EF

    srd

    2 [P G

    Ps Pr Gsr Grd

    P (G G ) 2 ]

    r rd

    s sd

    sr

    (5)

  3. Simulation results and discussion

    This work was carried out in the MATLAB

    from which the channel capacity resulting can be obtained, and given as

    environment. It was done in two ways: Firstly, the channel capacities for both the direct transmission (without relays) and for the estimate-and-forward

    R

    EF

    srd

    W log2 1 sd

    EF

    srd

    DT

    (6)

    cooperative diversity scheme were compared. Secondly, for the estimate-and-forward scheme, an increase was made in the number of relays that can

    where the superscripts EF and DT represent estimate-and-forward and direct transmission respectively.

    be used for fowarding of information to the destination, and the effects on the channel capacity were found out.

    x 10

    6 plot of Ps vs Rdt

    6

    5.5

    5

    channel capacity

    4.5

    4

    3.5

    3

    estimate and forward direct transmission

    2.5

    1 2 3 4 5 6 7 8 9 10

    transmit power

    Fig.3 Plots of the source transmit power against channel capacities for the direct and the relayed transmissions

    x 10

    6 plot of Ps vs Ref

    6.5

    6

    5.5

    channel capacity

    5

    4.5

    4

    r=1 r=2

    r=3

    r=4

    3.5

    1 2 3 4 5 6 7 8 9 10

    transmit power

    Fig.4. Plots of the source transmit power against channel capacity with varying number of relays

    Fig. 3 shows the plots of the source transmit power Ps against the channel capacity for a direct transmission from source node to the destination node without the use of a relaying partner in the first instance; and in the second instance, the plots when a relay is employed with the estimate-and- forward topology. It can be seen from the plots that there is a higher transmission channel capacity between the source node and the destination node when a relay node is employed in helping to forward the data from the source to the destination. From the figure, using a relay yields a channel capacity that is about 1.42 times that without a relay.

    In Fig.4, results of the scenario where the number of relays used in the cooperation is increased from one to four (r = 1 to r = 4). As can be observed from the figure, as the number of the relays used is increased, there is a corresponding increase in the channel capacity, even at fixed source transmit power. These results further confirm the importance of employing the use of relays in cooperative diversity.

  4. Conclusion

    In this paper, we have been able to further establish, by using the estimate-and-forward cooperative diversity protocol, that user cooperation or cooperative communication brings about a higher channel capacity and that increasing the number of relays used further increases the capacity.

  5. References

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    Cambridge, USA, 1998

  2. Lin, Chen and Blum, Minimum error probability cooperative relay design, IEEE Transactions on Signal Processing, 2007

  3. Z. Han, D. Niyato, W. Saad, T. Basar and Are Hjorungnes, Game Theory in Wireless and Communication Networks, Cambridge Press, 2012

  4. J. Laneman, D. Tse and G. Wornell, Cooperative Diversity in wireless networks: Efficient protocols and outage behaviour, IEEE Transactions on Information Theory 50 (12): 3062 3080, 2004

  5. T. Hunter and A. Nostratinia, Performance analysis of coded cooperation diversity, In Proc. IEEE Int. Conf. On Communications, pp 2688 2692, Anchorage, AK, USA, 2003

  6. A. Sendonaris, E. Erkip and B. Aazhang, User Cooperation diversity, Part I, System Description, IEEE Transactions on Communications, vol. 51, pp.1927 1938, 2003

  7. A. S Ibrahim, A.K Sadek, W. Su and K.J.R Liu, Cooperative Communications with Relay Selection: when to cooperate and whom to cooperate with, IEEE Transactions on Wireless Communications, vol. 7, pp.2814 2827, 2008

  8. J. Broch, D.A Maltz, D.B Johnson, Y.C Hu and J. Jetcheva, A Performance Comparison of Multi-Hop

    Wireless Ad Hoc Network Routing Protocols, Proc.

    MobiCom, pp.85 97, 1998

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  10. A. K Sadek, Weifeng Su and K.J.R Liu, Multinode cooperative communications in wireless networks, IEEE Transactions on Signal Processing, vol. 55, No. 1, Pp. 341 355, 2007

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