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Identification of PMSM Parameters With Time-Error Compensated Based on Contractile Factor Antipredator PSO

Yang Zhang, Mingfeng Zhou, Chao Zhang, Anping Shen, Bing Luo

2023IEEE Transactions on Transportation Electrification21 citationsDOI

Abstract

The identification error of permanent magnet synchronous motor (PMSM) parameters is influenced by the dead time of the voltage source inverter (VSI). In order to solve this problem, the Contractile Factor Anti-Predator Particle Swarm Optimization (CFAPSO) is proposed and applied to the identification of parameters of the PMSM. In the CFAPSO algorithm, the negative sequence current is injected into the d-axis, so the under-rank problem of the equation is solved and the full-rank equation is constructed. After establishing the full-rank equation, a time error compensation method is proposed to compensate the dead time of VSI, and the real-time recognition model is more accurate and the recognition error is reduced. In addition, the contractile factor is introduced to restrict the learning factor. By this way, the algorithm trapping in local optima is avoided and the recognition accuracy is enhanced. Furthermore, an anti-predator particle swarm algorithm is added to exclude the worst solution position, more unknown regions are explored, and the optimality seeking accuracy is improved. Finally, the simulated and experimental results are used to verify the correctness and effectiveness of the algorithm.

Topics & Concepts

Control theory (sociology)Particle swarm optimizationPosition (finance)CorrectnessComputer scienceIdentification (biology)AlgorithmMathematicsArtificial intelligenceBiologyEconomicsBotanyControl (management)FinanceSensorless Control of Electric MotorsElectric Motor Design and AnalysisMetaheuristic Optimization Algorithms Research
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