Machine Learning Approach for Fault Detection and Diagnosis of PV Modules
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I.O.E. Pulchowk Campus
Abstract
Fault analysis in solar Photovoltaic (PV) arrays is a crucial aspect that helps to increase
the PV system’s efficiency, safety, and reliability. Faults and defects, if not detected, it
not only compromises the system’s generation but also accelerate system aging and
jeopardizes the functionality of the overall system. Currently, the solution involves
manual monitoring by system operators, but this approach is time-consuming, prone to
inaccuracies, and poses safety risks. Therefore, it is imperative to implement automatic
detection and diagnosis methods to detect faults to ensure the PV systems’ safety and
reliability. Existing techniques either lack the precision to provide detailed fault
information or are overly complex. This research introduces a fault detection and
diagnosis method in solar PV systems using a machine learning approach. The research
extends to defining normal conditions and four distinct fault categories for the proposed
fault detection and classification algorithm. A predictive model is prepared using a
machine learning approach to forecast the DC output power. The trained Multilayer
Neural Network (MNN) model is found to have the Root Mean Square Error (RMSE)
of 6.74 and 6.11 for the training and validation sets. By analyzing the difference
between the power predicted by the MNN model and the actual PV system power, the
predefined fault types in the PV modules are detected.
Description
Fault analysis in solar Photovoltaic (PV) arrays is a crucial aspect that helps to increase
the PV system’s efficiency, safety, and reliability. Faults and defects, if not detected, it
not only compromises the system’s generation but also accelerate system aging and
jeopardizes the functionality of the overall system