A Machine Learning-Based Novel Energy Optimization Algorithm in a Photovoltaic Solar Power System

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Abstract

Performance, cost, and aesthetics are all difficult to beat in today's expanding distributed rooftop solar sector, and flat-plate PV is no exception. Photovoltaics will be able to take advantage of some of their most significant advantages as a result of this marketplace, including the elimination of transmission losses and the generation of power at the point of sale. Concentrated photovoltaic (CPV) technology, on the other hand, represents a viable alternative in the quest for ever-lower normalised energy costs and ever-shorter energy payback times. Material, components, and manufacturing techniques from allied sectors, particularly the power electronics industry, have been adapted to lower system costs and time-to-market for the system under development. The LFR is less than 30 mm wide to maximise thermal efficiency, and a densely packed cell array has been used to maximise electrical output. The Matlab simulations show that the proposed machine learning-based LFR technique has a greater concentration rate than the present LFR method, as demonstrated by the results.

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Prasad, K., Samson Isaac, J., Ponsudha, P., Nithya, N., Shinde, S. K., Gopal, S. R., … Hadish, K. M. (2022). A Machine Learning-Based Novel Energy Optimization Algorithm in a Photovoltaic Solar Power System. International Journal of Photoenergy, 2022. https://doi.org/10.1155/2022/2845755

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