PV Module Fault Detection Using Combined Artificial Neural Network and Sugeno Fuzzy Logic
Romênia G. Vieira, Mahmoud Dhimish, Fábio Meneghetti Ugulino de Araújo, Maria I. S. Guerra
Abstract
This work introduces a new fault detection method for photovoltaic systems. The method identifies short-circuited modules and disconnected strings on photovoltaic systems combining two machine learning techniques. The first algorithm is a multilayer feedforward neural network, which uses irradiance, ambient temperature, and power at the maximum power point as input variables. The neural network output enters a Sugeno type fuzzy logic system that precisely determines how many faulty modules are occurring on the power plant. The proposed method was trained using a simulated dataset and validated using experimental data. The obtained results showed 99.28% accuracy on detecting short-circuited photovoltaic modules and 99.43% on detecting disconnected strings.