Mathematics (Mar 2023)

Realization of Intelligent Observer for Sensorless PMSM Drive Control

  • Dwi Sudarno Putra,
  • Seng-Chi Chen,
  • Hoai-Hung Khong,
  • Chin-Feng Chang

DOI
https://doi.org/10.3390/math11051254
Journal volume & issue
Vol. 11, no. 5
p. 1254

Abstract

Read online

An observer is a crucial part of the sensorless control of a permanent magnet synchronous motor (PMSM). An observer, based on mathematical equations, depends on information regarding several parameters of the controlled motor. If the motor is replaced, then we need to know the motor parameter values and reset the observer’s parameters. This article discusses an intelligent observer that can be used for several motors with different parameters. The proposed intelligent observer was developed using machine learning methods. This observer’s core algorithm is a modified Jordan neural network. It processes Iα, Iβ, vα, and vβ to produce Sin θ and Cos θ values. It is combined with a phase-locked loop function to generate position and speed feedback information. The offline learning process is carried out using data acquired from the simulations of PMSM motors. This study used five PMSMs with different parameters, three as the learning reference sources and two as testing sources. The proposed intelligent observer was successfully used to control motors with different parameters in both simulation and experimental hardware. The average error in position estimated for the simulation was 0.0078 p.u and the error was 0.0100 p.u for the experimental realization.

Keywords