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Optimization of Solar Panel Deployment Using Machine Learning

Shoaib Kamal, P. S. Ramapraba, Avinash Kumar, Bikash Chandra Saha, M. Lakshminarayana, Shailendra Kumar, G Anitha, Kuma Gowwomsa Erko

2022International Journal of Photoenergy32 citationsDOIOpen Access PDF

Abstract

In this work, we proposed a mechanism for topology reconfiguration or optimization of photovoltaic (PV) arrays using machine learning-assisted techniques. The study takes into concern several topologies that includes series parallel topology, parallel topology, bridge link topology, honeycomb topology, and total cross tied. The artificial neural network-based topology reconfiguration strategy allows for optimal working conditions for PV arrays. With this, machine learning-assisted topology reconfiguration or optimal solar panel deployment enables the proposed mechanism to achieve higher degree of testing accuracy precision, recall, and f-measure under standard ideal condition.

Topics & Concepts

Control reconfigurationTopology (electrical circuits)Network topologyComputer sciencePhotovoltaic systemSoftware deploymentTopology optimizationMathematicsEngineeringEmbedded systemComputer networkFinite element methodStructural engineeringCombinatoricsOperating systemElectrical engineeringPhotovoltaic System Optimization TechniquesSolar Radiation and Photovoltaicssolar cell performance optimization
Optimization of Solar Panel Deployment Using Machine Learning | Litcius