Diagnosis of failures in Solar Plants based on Performance monitoring

Authors

  • Ana P. Talayero Author
  • Andrés Llombart Author
  • Julio J. Melero Author

DOI:

https://doi.org/10.24084/repqj18.248

Keywords:

PV Solar plants, Efficiency, failures and Diagnosis

Abstract

Photovoltaic (PV) solar energy has become a reference in electrical generation. The plants currently installed, and those planned have a huge capacity and occupy large areas. The increase in size of the plants presents new challenges in operation and maintenance areas, such as the optimization of the number of sensors installed, large data management and the reduction of the timework in maintenance. The aim of this paper is to show a methodology, to diagnose failures, based on the measured data in the plant. The methodology used is supervised regression machine learning and comparison algorithms. This methodology allows the study of the sensors, the inverters, the joint boxes and the power reduction caused by soiling. The result would allow the detection of around 1-5% of production loss in the plant. The algorithms have been tested with real data of PV plants, and have detected common failures such as production drops in strings and losses due to soiling.

Author Biographies

  • Ana P. Talayero

    Instituto Universitario de Investigación Mixto CIRCE (Fundación CIRCE

    -Universidad de Zaragoza). Spain

  • Andrés Llombart

    Instituto Universitario de Investigación Mixto CIRCE (Fundación CIRCE

    -Universidad de Zaragoza). Spain

  • Julio J. Melero

    Instituto Universitario de Investigación Mixto CIRCE (Fundación CIRCE

    -Universidad de Zaragoza). Spain

Published

2024-01-12

Issue

Section

Articles