
Prediction‐based PSO algorithm for MIMO radar antenna deployment in dynamic environment
Author(s) -
Wang Ziqin,
Zhang Tianxian,
Kong Lingjiang,
Cui Guolong
Publication year - 2019
Publication title -
the journal of engineering
Language(s) - English
Resource type - Journals
ISSN - 2051-3305
DOI - 10.1049/joe.2019.0188
Subject(s) - particle swarm optimization , autoregressive model , computer science , interval (graph theory) , radar , software deployment , algorithm , mimo , mathematical optimization , mathematics , statistics , telecommunications , combinatorics , channel (broadcasting) , operating system
Under the circumstance of simultaneously scanning multiple regions in an environment which can change as time goes by, the authors study an optimal algorithm to solve antenna deployment problem for MIMO radar systems here. It is solved by multi‐objective particle swarm optimisation algorithm (MOPSO) combining an autoregressive (AR) prediction model (MOPSO‐AR). In a time period and dynamic environment, the MOPSO‐AR method uses the previous optimal information to calculate the current deployment schemes before PSO optimisation starts up. It greatly reduces computational load and the error of the solutions. First, by discretising the time period into several time intervals, the problem in each time interval can be seen as a static problem. However, there may be relationship between these time intervals. Second, use the previous information and an AR model to predict temporally optimal solutions. Then, to get the exact optimal solutions, the predicted solutions and PSO method was applied to compute. Simulations show that the prediction strategy improves algorithm performance.