Comparison and Assessment of PV Module Power Prediction Based on ANN for Iraq Weather

Hussain Hamdi Khalaf, A. Mohammad, A. Hussain, Z. S. Al-sagar
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Abstract

An artificial neural network (ANN) with backward-propagation technique was used to predict the power generation of PV module in sunny and cloudy weathers of Baghdad city-Iraq. Experiment tests were investigated in winter and summer days to get the best sunny and cloudy days. Three weather parameters were measured including: solar irradiance, ambient temperature and wind speed. In addition, the output electrical characteristics of PV module (voltage, current, power) and module temperature were measured. Therefore, the dataset of ANN system consists of four input and one output. Furthermore, the structure of ANN includes single and double hidden layers with backward propagation technique. Besides, number of neurons were optimized in training process. The evaluation of the ANN model was depended on determination coefficient (R) and Mean Squared Error (MSE). The obtained results show that the architecture of ANNs is appropriated for predicting the power generated from PV module. The two developed ANN models have good accuracy and the sunny model is relatively more accurate than the cloudy model. Where, the MSE is 0.002062 at epoch 6 in sunny model and 0.0087085 at epoch 9 in cloudy model. Furthermore, the R is recorded 0.993 and 0.982 in validation process for sunny and cloudy model respectively. In addition, the optimization number of neurons in hidden layer gave sufficient accuracy without referring to choose the neurons by trial and error.
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基于人工神经网络的伊拉克天气光伏组件功率预测的比较与评价
采用反向传播人工神经网络(ANN)对伊拉克巴格达晴天和多云天气下光伏组件的发电量进行了预测。在冬季和夏季进行了试验试验,以获得最佳的晴天和阴天。测量了三个天气参数:太阳辐照度、环境温度和风速。此外,还测量了光伏组件的输出电特性(电压、电流、功率)和组件温度。因此,人工神经网络系统的数据集由四个输入和一个输出组成。此外,人工神经网络的结构包括单隐层和双隐层,并采用反向传播技术。此外,在训练过程中对神经元数量进行了优化。对人工神经网络模型的评价取决于决定系数(R)和均方误差(MSE)。结果表明,人工神经网络的结构适合于预测光伏组件的发电功率。所建立的两种人工神经网络模型均具有较好的精度,晴天模型相对优于阴天模型。其中,晴天模式第6 epoch的MSE为0.002062,多云模式第9 epoch的MSE为0.0087085。在晴天和多云模型的验证过程中,R分别为0.993和0.982。此外,隐层神经元的优化数量可以提供足够的精度,而不需要通过试错法来选择神经元。
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