Solar Panel Rotational Alignment & Yeild Boosting System -AI

Authors

  • Dr. D. Banumathy ME Phd Head of the Department , Paavai Engineering College
    Author
  • K. Dhikshanth Student , Paavai Engineering College
    Author
  • S. Ajay Student , Paavai Engineering College
    Author
  • C. Arunkumar Student , Paavai Engineering College
    Author

DOI:

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Keywords:

solar tracking, automatic cleaning, IoT, predictive maintenance, photovoltaic efficiency.

Abstract

This paper presents SPRAYS — a unified, intelligent framework that combines dual-axis solar tracking, condition-based cleaning, and AI-driven monitoring to maximize photovoltaic energy capture and minimize maintenance. SPRAYS continuously aligns photovoltaic modules to the sun using real-time sensor feedback and adjusts orientation through a motorized dual-axis mechanism. An automated cleaning subsystem activates only when optical contamination (dust, bird droppings) is detected, conserving water and energy. A machine-learning module performs fault detection, energy-yield forecasting, and predictive maintenance scheduling. Prototype design choices, hardware/software architecture, control algorithms, and experimental results from a testbed are reported. Results show notable yield improvement and reduced efficiency loss from soiling compared to fixed installations.

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Published

2025-11-19

How to Cite

[1]
Dr. D. Banumathy ME Phd , “Solar Panel Rotational Alignment & Yeild Boosting System -AI”, Int. J. Web Multidiscip. Stud. pp. 333-339, 2025-11-19 doi: . .