4.7 Article

Comparing multilayer perceptron and probabilistic neural network for PV systems fault detection

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EXPERT SYSTEMS WITH APPLICATIONS
卷 201, 期 -, 页码 -

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PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.eswa.2022.117248

关键词

Solar Energy; Photovoltaic modules; String disconnection; Short-circuit; Fault detection; Neural network

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This work presents the development of a fault detection method for photovoltaic systems using artificial neural networks. The method is capable of identifying short-circuited modules and disconnected strings. What sets this research apart is its adaptability, as it uses long-term datasets and considers datasets contaminated with random noise, making it suitable for any photovoltaic power plant and eliminating the need for pre-existing system data or new sensor installation. The proposed method consists of two unique algorithms, namely the Multilayer Perceptron and the Probabilistic Neural Network. The research utilized modeling, simulation, and experimental data, with both algorithms trained on simulated datasets and tested on data from two different photovoltaic systems. Despite the inclusion of noisy situations in the training dataset, the results demonstrate superior accuracy for the Multilayer Perceptron neural network. The findings show a maximum accuracy of 99.1% for detecting short-circuited modules and 100% for detecting disconnected strings.
This work introduces the development of a fault detection method for photovoltaic (PV) systems using artificial neural networks (ANN). The faults identified by the method are short-circuited modules and disconnected strings. This research's novel part is its adaptability as a long-term dataset has been used in the ANN training and validation phase and also examined situations considering datasets contaminated with random noise. It makes the method suitable for any photovoltaic power plant, also does not require long datasets from pre-existing systems or installing new sensors. The proposed method comprises two unique algorithms for PV fault detection, a Multilayer Perceptron, and a Probabilistic Neural Network. The research method used modeling, simulation, and experiment data since both algorithms were trained using simulated datasets and tested through experimental data from two different photovoltaic systems. Even though the training dataset includes noisy situations, the results indicated a superior precision for the Multilayer Perceptron neural network. The findings showed a maximum accuracy of 99.1% in detecting short-circuited modules and 100% in detecting disconnected strings.

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