Multi‐objective design of energy harvesting enabled wireless networks based on evolutionary genetic optimisation
Sustainable operation of energy‐restrained wireless network services requires multiple objectives to be satisfied synchronously. Among these objectives, reduced spectrum outage, energy conservation, and minimal packet transmission failures considerably affect the energy harvesting operation of these...
Main Author: | |
---|---|
Format: | Article |
Language: | English |
Published: |
Wiley
2020-11-01
|
Series: | IET Networks |
Subjects: | |
Online Access: | https://doi.org/10.1049/iet-net.2020.0093 |
id |
doaj-5e038b6fb3bc422ca8e58c20b64b58ed |
---|---|
record_format |
Article |
spelling |
doaj-5e038b6fb3bc422ca8e58c20b64b58ed2021-08-26T06:35:47ZengWileyIET Networks2047-49542047-49622020-11-019636036610.1049/iet-net.2020.0093Multi‐objective design of energy harvesting enabled wireless networks based on evolutionary genetic optimisationRidhima Mehta0School of Computer and Systems SciencesJawaharlal Nehru UniversityNew DelhiIndiaSustainable operation of energy‐restrained wireless network services requires multiple objectives to be satisfied synchronously. Among these objectives, reduced spectrum outage, energy conservation, and minimal packet transmission failures considerably affect the energy harvesting operation of these networks. These three objectives are associated with disparate protocol layers incorporating the transport, medium access control, and physical layers of traditional networking architecture. The authors investigate energy harvesting wireless communications by formulating the multi‐objective optimisation problem comprising these global networking criteria, which are simultaneously optimised with the heuristic design procedure. For this, they employ a Pareto‐based evolutionary genetic algorithm technique built in the wireless network design and operation to find the optimal set of all non‐dominated solutions traversing the entire design search space. Besides, iterative implementation of the presented genetic optimisation model with distinct feasible integrations of crossover and mutation operations is performed to evaluate the proficiency of the proposed scheme for evaluating the Pareto‐optimal frontier set. The influence of different combinations of these operations is examined and adaptively applied with appropriate genetic parameters tuning for efficient meta‐heuristic search through the candidate solution space. Simulation results demonstrate that the proposed hybrid genetic mechanism outperforms the existing methods in terms of throughput, energy efficiency, and loss rate.https://doi.org/10.1049/iet-net.2020.0093evolutionary genetic optimisationenergy‐restrained wireless network servicesenergy conservationspectrum outagegenetic optimisation modelenergy efficiency |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Ridhima Mehta |
spellingShingle |
Ridhima Mehta Multi‐objective design of energy harvesting enabled wireless networks based on evolutionary genetic optimisation IET Networks evolutionary genetic optimisation energy‐restrained wireless network services energy conservation spectrum outage genetic optimisation model energy efficiency |
author_facet |
Ridhima Mehta |
author_sort |
Ridhima Mehta |
title |
Multi‐objective design of energy harvesting enabled wireless networks based on evolutionary genetic optimisation |
title_short |
Multi‐objective design of energy harvesting enabled wireless networks based on evolutionary genetic optimisation |
title_full |
Multi‐objective design of energy harvesting enabled wireless networks based on evolutionary genetic optimisation |
title_fullStr |
Multi‐objective design of energy harvesting enabled wireless networks based on evolutionary genetic optimisation |
title_full_unstemmed |
Multi‐objective design of energy harvesting enabled wireless networks based on evolutionary genetic optimisation |
title_sort |
multi‐objective design of energy harvesting enabled wireless networks based on evolutionary genetic optimisation |
publisher |
Wiley |
series |
IET Networks |
issn |
2047-4954 2047-4962 |
publishDate |
2020-11-01 |
description |
Sustainable operation of energy‐restrained wireless network services requires multiple objectives to be satisfied synchronously. Among these objectives, reduced spectrum outage, energy conservation, and minimal packet transmission failures considerably affect the energy harvesting operation of these networks. These three objectives are associated with disparate protocol layers incorporating the transport, medium access control, and physical layers of traditional networking architecture. The authors investigate energy harvesting wireless communications by formulating the multi‐objective optimisation problem comprising these global networking criteria, which are simultaneously optimised with the heuristic design procedure. For this, they employ a Pareto‐based evolutionary genetic algorithm technique built in the wireless network design and operation to find the optimal set of all non‐dominated solutions traversing the entire design search space. Besides, iterative implementation of the presented genetic optimisation model with distinct feasible integrations of crossover and mutation operations is performed to evaluate the proficiency of the proposed scheme for evaluating the Pareto‐optimal frontier set. The influence of different combinations of these operations is examined and adaptively applied with appropriate genetic parameters tuning for efficient meta‐heuristic search through the candidate solution space. Simulation results demonstrate that the proposed hybrid genetic mechanism outperforms the existing methods in terms of throughput, energy efficiency, and loss rate. |
topic |
evolutionary genetic optimisation energy‐restrained wireless network services energy conservation spectrum outage genetic optimisation model energy efficiency |
url |
https://doi.org/10.1049/iet-net.2020.0093 |
work_keys_str_mv |
AT ridhimamehta multiobjectivedesignofenergyharvestingenabledwirelessnetworksbasedonevolutionarygeneticoptimisation |
_version_ |
1721195995456339968 |