Premium
A multi‐objective distance vector‐hop localization algorithm based on differential evolution quantum particle swarm optimization
Author(s) -
Han Dezhi,
Wang Jing,
Tang Canren,
Weng TienHsiung,
Li KuanChing,
Dobre Ciprian
Publication year - 2021
Publication title -
international journal of communication systems
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.344
H-Index - 49
eISSN - 1099-1131
pISSN - 1074-5351
DOI - 10.1002/dac.4924
Subject(s) - computer science , algorithm , particle swarm optimization , wireless sensor network , hop (telecommunications) , distance vector routing protocol , convergence (economics) , differential evolution , mathematical optimization , wireless , wireless ad hoc network , mathematics , telecommunications , computer network , optimized link state routing protocol , economics , economic growth
Summary Wireless sensor networks (WSNs) have actively been considered in vast amount of applications in fields of science and engineering. The node location technology is one of the most critical technologies of WSNs. Aiming at the problem of distance vector‐hop (DV‐HOP) algorithm's excessive estimation error, we propose in this article a multi‐objective DV‐HOP localization algorithm based on differential evolution quantum particle swarm optimization (DQPSO‐DV‐HOP). First, the set of anchor nodes generated during the deployment phase that would cause large errors is eliminated, and a correction factor is introduced to modify the average hop distance to reflect the actual situation of the network better. In the node localization phase, the objective function we propose is optimized under a combination of the DE and QPSO algorithms, so the estimated results of unknown nodes are optimized and modified by using the QPSO algorithm of fast convergence, which is easy to converge to the optimal global value. Simulation results show that the localization stability, accuracy, and convergence given by the proposed DQPSO‐DV‐HOP algorithm are better than other schemes. High precision positioning algorithm can improve the accuracy of energy consumption monitoring and provide more accurate data for energy saving management.