研究目的
Investigating the possibility of a low-cost monitoring of cleaning interventions on photovoltaic modules during daytime to know whether the soiling is regularly removed or not, and to decide if it is necessary to carry out additional cleaning operations.
研究成果
The study demonstrates that machine learning models can effectively detect wet cleaning interventions on photovoltaic modules during daytime with high accuracy. The best performance was achieved using a combination of PCA features of current, voltage, and temperature signals with a Random Forest model, reaching an accuracy of 97%. The method requires only a few signals monitored at a relatively low temporal resolution, making it a low-cost solution for remote monitoring of photovoltaic systems. This tool can help improve the maintenance level of standalone photovoltaic systems in rural and poor regions.
研究不足
The study is limited to wet cleanings during daytime, as dry cleanings and nighttime cleanings cannot be detected with the current method. The location and number of temperature sensors are crucial for accurate temperature measurement. The method's effectiveness may vary with climatic conditions, photovoltaic array configurations, and cleaning techniques.
1:Experimental Design and Method Selection:
The study formulates the problem as a classification task to automatically identify the occurrence of a cleaning intervention using a time window of temperature, voltage and current measurements of a photovoltaic array. Machine learning tools based on Logistic Regression, Support Vector Machines, Artificial Neural Networks and Random Forest are investigated for classification.
2:Sample Selection and Data Sources:
The experiments are conducted on a real dataset from a remote photovoltaic water pumping system located in a rural village in Burkina Faso.
3:List of Experimental Equipment and Materials:
The system consists of a photovoltaic array, a motor-pump, a controller, a water tank, and a fountain. Signals monitored include photovoltaic array voltage, current, module temperature, ambient temperature, and irradiance.
4:Experimental Procedures and Operational Workflow:
Cleaning interventions were performed and recorded, with signals measured at a time step of ~
5:2 s and rescaled to an evenly spaced temporal resolution of 3 s by linear interpolation. Data Analysis Methods:
The study investigates the influence of the temporal resolution of the signals and the feature extraction on the classification performance, using various machine learning algorithms.
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