AI-Powered Dynamic Fault Detection and Performance Assessment in Photovoltaic Systems
Nelson Salazar-Pena, Alejandra Tabares, Andres Gonzalez-Mancera

TL;DR
This paper introduces an AI-driven dynamic fault detection and performance assessment method for photovoltaic systems, utilizing a neural network model trained on synthetic data to improve accuracy and reduce costs.
Contribution
It presents a novel PV system model with dynamic loss quantification and an AI-based fault detection algorithm that does not require specialized equipment.
Findings
PV system model with 6.0% mean absolute error in energy estimation
Fault detection accuracy of 82.2% mean, 92.6% maximum
Dynamic loss quantification effective without specialized tools
Abstract
The intermittent nature of photovoltaic (PV) solar energy, driven by variable weather, leads to power losses of 10-70% and an average energy production decrease of 25%. Accurate loss characterization and fault detection are crucial for reliable PV system performance and efficiency, integrating this data into control signal monitoring systems. Computational modeling of PV systems supports technological, economic, and performance analyses, but current models are often rigid, limiting advanced performance optimization and innovation. Conventional fault detection strategies are costly and often yield unreliable results due to complex data signal profiles. Artificial intelligence (AI), especially machine learning algorithms, offers improved fault detection by analyzing relationships between input parameters (e.g., meteorological and electrical) and output metrics (e.g., production). Once…
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Taxonomy
TopicsPhotovoltaic System Optimization Techniques · Machine Fault Diagnosis Techniques · Fault Detection and Control Systems
MethodsLib
