Performance Evaluation of Grid Connected SPV System Through FRC and ANFIS Techniques

Inexhaustible grid interfacing framework is being elevated generally with a specific end goal to safe watch the utilization of ordinary sources of energy. Grid interconnection of high end inexhaustible sources with that of the grid causes unsettling influences and prompts the perpetual shutdown of the inverter. Customary controller, for example, linear controller and nonlinear controller perform well under adjusted state of activity; however, this controller ends up slow amid grid unsettling influences. Controller in view of AI techniques has been created in this way to deal with make the controller stable amid adjusted and un-adjusted state of activity. MATLAB Simulink-based framework has been created for checking the legitimacy of the proposed controller.

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