Applied Mathematics and Nonlinear Sciences (Jan 2024)

Research on photovoltaic energy storage unit charge state detection method based on improved limit learning machine

  • Ma Xue,
  • Li Fang,
  • Li Xiantao,
  • Ying Zhiping,
  • Gong Siyu,
  • Xiao Yu

DOI
https://doi.org/10.2478/amns-2024-0176
Journal volume & issue
Vol. 9, no. 1

Abstract

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In order to accurately detect the photovoltaic energy storage unit charge state, this paper selects the parameter charge state as the detection quantity in the equivalent model, establishes the PSO-ELM method to detect the charge state of photovoltaic energy storage unit, optimizes the limit learning machine network using the particle swarm optimization algorithm, and improves the problems such as redundancy of neurons in the implicit layer of the limit learning machine and the poor ability to identify the unknown input parameter, so as to increase the detection accuracy of the PSO-ELM method to improve the detection accuracy of photovoltaic energy storage unit charge state. The relative error between the method established in this paper and the results of the PV storage unit charge state detected by the definition method in the charging state is kept within ±1.9%, and the detection accuracy of the improved method in the dynamic working condition can reach about 97%. The PSO-ELM method established in this paper can accurately detect the charge state of PV energy storage units under various conditions, as demonstrated experimentally.

Keywords