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dc.contributor.advisorChockalingam, A
dc.contributor.authorNagaraja, Srinidhi
dc.date.accessioned2018-04-23T15:53:14Z
dc.date.accessioned2018-07-31T04:49:30Z
dc.date.available2018-04-23T15:53:14Z
dc.date.available2018-07-31T04:49:30Z
dc.date.issued2018-04-23
dc.date.submitted2013
dc.identifier.urihttps://etd.iisc.ac.in/handle/2005/3442
dc.identifier.abstracthttp://etd.iisc.ac.in/static/etd/abstracts/4309/G25963-Abs.pdfen_US
dc.description.abstractIn this thesis, our focus is on low-complexity, high-performance detection algorithms for multi-antenna communication receivers. A key contribution in this thesis is the demonstration that efficient algorithms from metaheuristics and machine learning can be gainfully adapted for signal detection in multi- antenna communication receivers. We first investigate a popular metaheuristic known as the reactive tabu search (RTS), a combinatorial optimization technique, to decode the transmitted signals in large-dimensional communication systems. A basic version of the RTS algorithm is shown to achieve near-optimal performance for 4-QAM in large dimensions. We then propose a method to obtain a lower bound on the BER performance of the optimal detector. This lower bound is tight at moderate to high SNRs and is useful in situations where the performance of optimal detector is needed for comparison, but cannot be obtained due to very high computational complexity. To improve the performance of the basic RTS algorithm for higher-order modulations, we propose variants of the basic RTS algorithm using layering and multiple explorations. These variants are shown to achieve near-optimal performance in higher-order QAM as well. Next, we propose a new receiver called linear regression of minimum mean square error (MMSE) residual receiver (referred to as LRR receiver). The proposed LRR receiver improves the MMSE receiver by learning a linear regression model for the error of the MMSE receiver. The LRR receiver uses pilot data to estimate the channel, and then uses locally generated training data (not transmitted over the channel) to find the linear regression parameters. The LRR receiver is suitable for applications where the channel remains constant for a long period (slow-fading channels) and performs well. Finally, we propose a receiver that uses a committee of linear receivers, whose parameters are estimated from training data using a variant of the AdaBoost algorithm, a celebrated supervised classification algorithm in ma- chine learning. We call our receiver boosted MMSE (B-MMSE) receiver. We demonstrate that the performance and complexity of the proposed B-MMSE receiver are quite attractive for multi-antenna communication receivers.en_US
dc.language.isoen_USen_US
dc.relation.ispartofseriesG25963en_US
dc.subjectMulti Antenna Communication Receiversen_US
dc.subjectMachine Learning Algorithmsen_US
dc.subjectWireless Communication Systemsen_US
dc.subjectMultiple-Input Multiple-Output (MIMO) Systemsen_US
dc.subjectReactive Tabu Search (RTS)en_US
dc.subjectLinear Regression MMSE Residual Recivers (LRR)en_US
dc.subjectMetaheuristicsen_US
dc.subjectTabu Search Algorithmen_US
dc.subjectMulti Antenna Communication Systemsen_US
dc.subjectMIMO Systemsen_US
dc.subjectMMSE Residualen_US
dc.subjectMMSE Reciversen_US
dc.subjectMinimum Mean Square Erroren_US
dc.subject.classificationCommunication Engineeringen_US
dc.titleMulti-Antenna Communication Receivers Using Metaheuristics and Machine Learning Algorithmsen_US
dc.typeThesisen_US
dc.degree.namePhDen_US
dc.degree.levelDoctoralen_US
dc.degree.disciplineFaculty of Engineeringen_US


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