vimarsana.com

In this paper, a novel hybrid Maximum Power Point Tracking (MPPT) algorithm using Particle-Swarm-Optimization-trained machine learning and Flying Squirrel Search Optimization (PSO_ML-FSSO) has been proposed to obtain the optimal efficiency for solar PV systems. The proposed algorithm was compared with other well-known methods viz. Perturb & Observer (P&O), Incremental Conductance (INC), Particle Swarm Optimization (PSO), Cuckoo Search Optimization (CSO), Flower Pollen Algorithm (FPA), Gray Wolf Optimization (GWO), Neural-Network-trained Machine Learning (NN_ML), Genetic Algorithm (GA), and PSO-trained Machine Learning. The proposed algorithm was modelled in the MATLAB/Simulink environment under different operating conditions, for example, with step changes in temperature, solar irradiance, and partial shading. The proposed algorithm improved the efficiency up to 0.72% and reduced the settling time up to 76.4%. The findings of the research highlight that PSO_ML-FSSO is a potential approach that outperforms all other well-known algorithms tested herein for solar PV systems.

Related Keywords

,Perturb Observer Po Incremental Conductance ,Maximum Power Point Tracking ,Flying Squirrel Search Optimization ,Incremental Conductance ,Particle Swarm Optimization ,Cuckoo Search Optimization ,Flower Pollen Algorithm ,Gray Wolf Optimization ,Neural Network Trained Machine Learning ,Genetic Algorithm ,

© 2025 Vimarsana

vimarsana.com © 2020. All Rights Reserved.