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Identification of relevant input variables for prediction of 1-minute time step photovoltaic module power using Artificial Neural Network and Multiple Linear Regression Models

机译:使用人工神经网络和多元线性回归模型识别用于预测1分钟时步光伏模块功率的相关输入变量

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In photovoltaic (PV) modules manufacturer provides rating under standard test conditions (STC). But STC hardly occur under outdoor conditions so it is important to investigate PV power by experimental analysis. In this study extensive literature survey of PV module electrical characteristics by conventional methods and ANN techniques are carried out. It is found that experimental analysis of PV modules maximum power under outdoor conditions remains a major research area. For this measurement of 75 Wp PV module are performed under outdoor conditions at Centre for Energy and Environmental Engineering, National Institute of Technology, Hamirpur, India. To find most influencing variables for PV power prediction, five different sets of parameters are served as inputs to establish five Artificial Neural Network (ANN) models and Multiple Linear Regression (MLR) Models which is novelty of this paper. The results shows that solar radiation and air temperature are found to be most influencing input variables for ANN based prediction of maximum power produced by PV module with mean absolute percentage (MAPE) of 2.15 %. The mean absolute percentage (MAPE) errors for ANN models are found to vary between 2.15 % to 2.55 % whereas for MLR models it varies from 13.04 % to 19.34 %, showing better prediction of ANN models.
机译:在光伏(PV)组件中,制造商提供标准测试条件(STC)下的额定值。但是STC很少在室外条件下发生,因此通过实验分析研究PV功率非常重要。在这项研究中,通过常规方法和人工神经网络技术对光伏组件的电气特性进行了广泛的文献调查。发现在室外条件下对光伏组件最大功率的实验分析仍然是主要研究领域。为此,在印度哈米尔布尔国家技术研究所能源与环境工程中心的室外条件下进行了75 Wp光伏组件的测量。为了找到影响光伏功率预测的最大影响变量,将五组不同的参数用作输入,以建立五个人工神经网络(ANN)模型和多元线性回归(MLR)模型,这是本文的新颖之处。结果表明,对于基于ANN的PV组件产生的最大功率的预测,太阳辐射和空气温度是影响最大的输入变量,平均绝对百分比(MAPE)为2.15%。发现ANN模型的平均绝对百分比(MAPE)误差在2.15%至2.55%之间,而MLR模型的平均绝对百分比误差在13.04%至19.34%之间,显示了对ANN模型的更好预测。

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