Hussain Hamdi Khalaf, Ali Nasser Hussain, Zuhair S. Al-Sagar, Abdulrahman Th. Mohammad, Hilal A. Fadhil
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引用次数: 0
摘要
在这项工作中,使用了一种采用反向传播技术的人工神经网络(ANN)来预测伊拉克巴格达市天气条件下光伏(PV)模块的发电量。实验测试在 2022 年夏季进行。测量了三个天气参数,包括:(太阳辐射、环境温度和风速)、光伏组件的输出电气特性(电压、电流和功率)以及组件温度。因此,ANN 系统的数据集由四个输入参数和一个输出参数组成。此外,ANN 的结构包括一个采用反向传播技术的单隐层。本研究的主要目标是优化训练过程中的神经元数量。对 ANN 模型的评估取决于确定系数(R)和均方根误差(RMSE)。 结果表明,ANN 的结构适合预测光伏组件的发电量。所开发的 ANN 模型具有良好的准确性。在模型的第 9 个历元,MSE 为 0.002747。此外,该模型在训练、测试、验证和全部过程中的 R 值分别为 0.99078、0.98254、0.99125 和 0.99005。此外,通过优化隐层神经元的数量,可以获得足够的精度,而无需像大多数研究人员那样通过试错法来选择神经元的数量。
Optimization of Neurons Number in Artificial Neural Network Model for Predicting the Power Production of PV Module
In this work, an Artificial Neural Network (ANN) with a backward-propagation technique was used to predict the power generation of the Photovoltaic (PV) module in weather conditions of Baghdad city-Iraq. Experiment tests were investigated in the summer of 2022. Three weather parameters, including: (solar radiation, ambient temperature, and wind speed), the output electrical characteristics of the PV module (voltage, current, power), and module temperature (were measured. Therefore, the dataset of the ANN system consists of four input and one output parameter. Furthermore, the structure of ANN includes a single hidden layer with a backward propagation technique. The main goal of this study was to optimize the number of neurons in the training process. The evaluation of the ANN model depended on the determination coefficient (R) and Root Mean Squared Error (RMSE). The obtained results show that the architecture of ANN is appropriate for predicting the power generated from the PV module. The developed ANN model has good accuracy. Where the MSE is 0.002747 at epoch 9 in the model. Furthermore, the R is recorded as 0.99078, 0.98254, 0.99125, and 0.99005 for training, testing, validation, and all respectively in the proposed model. In addition, the optimization number of neurons in the hidden layer gave sufficient accuracy without referring to the choice of the number of neurons by using the trial-and-error method that most researchers relied.