Adaptive Power Control for Energy Harvesting Communication Systems

Sustaining energy requirement for wireless devices is the main barrier in building autonomous communication systems and service-free networks. Specifically, in large-scale networks where normally wired energy infrastructures are unavailable, regular battery maintenance for each individual node is in...

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Main Author: Masoud, Badiei Khuzani
Language:en
Published: 2013
Online Access:http://hdl.handle.net/10012/8063
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spelling ndltd-LACETR-oai-collectionscanada.gc.ca-OWTU.10012-80632014-06-18T03:51:39Z Adaptive Power Control for Energy Harvesting Communication Systems Masoud, Badiei Khuzani Sustaining energy requirement for wireless devices is the main barrier in building autonomous communication systems and service-free networks. Specifically, in large-scale networks where normally wired energy infrastructures are unavailable, regular battery maintenance for each individual node is inefficient or unfeasible. To resolve this problem, current and future state of the art technologies are focused on development of perpetual energy resources by harvesting free energy in the environment such as kinetic, thermal, solar, or wind energies. However, the integration of energy harvesting architectures with communication systems requires innovating adaptive transmission power policies. In this thesis, we investigate the structure of efficient transmission power policies for a multiple access communication system with energy harvesting nodes where the utility function is taken to be the long-term average sum-throughput. We assume a causal structure for energy arrivals and study the problem in the continuous time regime. For this setting, we first characterize a \textit{storage dam} model that captures the dynamics of a battery with energy harvesting and variable transmission power. Using this model, we next establish an upper bound on the throughput problem as a function of battery capacity. We also formulate a non-linear optimization problem to determine optimal achievable power policies for transmitters. Applying the calculus of variation technique, we derive Euler-Lagrange equations as necessary conditions for optimum power policies in terms of a system of coupled partial integro-differential equations (PIDEs). Based on a Gauss-Seidel algorithm, we then devise an iterative algorithm to solve these equations. Finally, we propose a fixed-point algorithm for the symmetric multiple access setting in which the statistical descriptions of energy harvesters are identical. To support our iterative algorithms, comprehensive numerical results are also obtained. 2013-12-06T20:43:52Z 2013-12-06T20:43:52Z 2013-12-06 2013-11-29 Thesis or Dissertation http://hdl.handle.net/10012/8063 en
collection NDLTD
language en
sources NDLTD
description Sustaining energy requirement for wireless devices is the main barrier in building autonomous communication systems and service-free networks. Specifically, in large-scale networks where normally wired energy infrastructures are unavailable, regular battery maintenance for each individual node is inefficient or unfeasible. To resolve this problem, current and future state of the art technologies are focused on development of perpetual energy resources by harvesting free energy in the environment such as kinetic, thermal, solar, or wind energies. However, the integration of energy harvesting architectures with communication systems requires innovating adaptive transmission power policies. In this thesis, we investigate the structure of efficient transmission power policies for a multiple access communication system with energy harvesting nodes where the utility function is taken to be the long-term average sum-throughput. We assume a causal structure for energy arrivals and study the problem in the continuous time regime. For this setting, we first characterize a \textit{storage dam} model that captures the dynamics of a battery with energy harvesting and variable transmission power. Using this model, we next establish an upper bound on the throughput problem as a function of battery capacity. We also formulate a non-linear optimization problem to determine optimal achievable power policies for transmitters. Applying the calculus of variation technique, we derive Euler-Lagrange equations as necessary conditions for optimum power policies in terms of a system of coupled partial integro-differential equations (PIDEs). Based on a Gauss-Seidel algorithm, we then devise an iterative algorithm to solve these equations. Finally, we propose a fixed-point algorithm for the symmetric multiple access setting in which the statistical descriptions of energy harvesters are identical. To support our iterative algorithms, comprehensive numerical results are also obtained.
author Masoud, Badiei Khuzani
spellingShingle Masoud, Badiei Khuzani
Adaptive Power Control for Energy Harvesting Communication Systems
author_facet Masoud, Badiei Khuzani
author_sort Masoud, Badiei Khuzani
title Adaptive Power Control for Energy Harvesting Communication Systems
title_short Adaptive Power Control for Energy Harvesting Communication Systems
title_full Adaptive Power Control for Energy Harvesting Communication Systems
title_fullStr Adaptive Power Control for Energy Harvesting Communication Systems
title_full_unstemmed Adaptive Power Control for Energy Harvesting Communication Systems
title_sort adaptive power control for energy harvesting communication systems
publishDate 2013
url http://hdl.handle.net/10012/8063
work_keys_str_mv AT masoudbadieikhuzani adaptivepowercontrolforenergyharvestingcommunicationsystems
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