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USING DYNAMIC BAYESIAN NETWORKS TO EVALUATE THE PHOTOVOLTAIC MODULES DEGRADATION PROCESS WITH ARTIFICIAL INTELLIGENCE

Journal: International Journal of Advanced Research (Vol.13, No. 01)

Publication Date:

Authors : ; ;

Page : 872-884

Keywords : PV Degradation Process Performance Assessment Dynamic Bayesian Network Artificial Intelligence Maintenance Policy Environmental Constraints;

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Abstract

The performance of PV systems is highly dependent on climatic hazards (wind, dust, low sunshine, etc.). Some of these hazards can even accelerate its degradation process during its life cycle if nothing is done in terms of maintenance policy. This paper aims to model the degradation process of PV systems under environmental conditions. To do this, a system study is first performed to analyze the experimental data of the PV system in question according to the location of the site and simulated under the PVsyst software to extract the parameters of the study. In a second step, taking into account the Markovian approach, passing rules are established to design our dynamic Bayesian model. To this model, we have integrated a maintenance policy decision node and performance indicators in order to reproduce the degradation process in the real context and under stress. We have associated the decision node to enable AI integration through reinforcement learning on this node.

Last modified: 2025-02-25 18:37:00