Intelligent Solar Power Management Based on Fuzzy Logic Control

This paper presents the intelligent charging and discharging management method for the solar power management circuitry based on fuzzy logic control theory. The mathematical model of DCDC circuit is established, and through Matlab theoretical derivation the feasibility of the maximum power point tracking by the method of obtaining the maximum output current through control is proven. And the experimental results confirm the theoretical rationality and correctness of the tracking of the maximum power point through the method of by sampling the maximum output current, to achieve the optimal solar charging

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