研究目的
To present data of multimodal functions that emulate the performance of an array of five photovoltaic modules under partial shading conditions and to provide a dataset for evaluating the performance of optimization algorithms and system identification techniques.
研究成果
The dataset provided can be used to analyze the operation of PV modules that are exposed to dynamic values of solar irradiance and operating temperature, which emulates the partial shading effect that occurs in PV systems. It is also useful for evaluating the performance of maximum power point tracking controllers and system identification techniques.
研究不足
The data presented are based on simulations and may not fully capture all real-world conditions of photovoltaic modules under partial shading.
1:Experimental Design and Method Selection:
Numerical simulation based on a code written in C language, for an array of five 65 W photovoltaic modules. The MATLAB/Simulink Neural Network Toolbox was used for training the artificial neural networks.
2:Sample Selection and Data Sources:
The data were obtained from a mathematical model that represents the behavior of a photovoltaic (PV) module. The model has as inputs the solar irradiance and the operating temperature. The outputs correspond to the voltage and power of the PV module.
3:List of Experimental Equipment and Materials:
An array of five 65 W photovoltaic modules type YL65P-17b.
4:7b. Experimental Procedures and Operational Workflow:
4. Experimental Procedures and Operational Workflow: For irradiance, input values between 10 and 1000 W/m2 were generated, while for temperature, values between 5 and 150 °C were used. To each PV module of the array, different values were applied to the inputs, in order to represent the partial shading conditions. The output data for power and voltage were exported in DAT files.
5:Data Analysis Methods:
A feedforward network with a hidden layer, 25 neurons and an output layer with a single neuron was used. A hyperbolic tangent sigmoid transfer function was used for each neuron.
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