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Assessment of SVM, empirical and ANN based solar radiation prediction models with most influencing input parameters

机译:对具有最大影响输入参数的SVM,基于经验和ANN的太阳辐射预测模型进行评估

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This paper evaluates the accuracy of Support Vector Machine (SVM), Artificial Neural Network (ANN) and empirical solar radiation models with different combination of input parameters. The parameters include month, latitude, longitude, bright sunshine hours, day length, relative humidity, maximum and minimum temperature. The models are evaluated based on statistical measures. Four new empirical models are introduced and validated with experimental data. This work is focused on the prediction of monthly mean daily global solar radiation (GSR) for different cities in India with most influencing input parameters identified using Waikato Environment for Knowledge Analysis (WEKA) software. WEKA identifies month, latitude, maximum temperature and bright sunshine hours as the most influencing and relative humidity as the least influencing input parameter. SVM model with most influencing input parameter performs better than ANN and Empirical models. Exclusion of relative humidity does not affect the prediction accuracy. Therefore this work reduces the dimensionality of the data and improves the prediction accuracy. This work also attempts in assessing the solar energy potential of smart cities of Tamil Nadu, India using the SVM model. The predicted annual GSR varies from 17 to 22 MJ/m(2)/day which is precise enough for a wide range of solar applications. (C) 2017 Elsevier Ltd. All rights reserved.
机译:本文以输入参数的不同组合来评估支持向量机(SVM),人工神经网络(ANN)和太阳经验辐射模型的准确性。这些参数包括月份,纬度,经度,明媚的阳光小时,日长,相对湿度,最高和最低温度。这些模型是根据统计指标进行评估的。引入了四个新的经验模型,并用实验数据进行了验证。这项工作的重点是预测印度不同城市的月平均每日全球太阳辐射(GSR),其中使用怀卡托知识分析环境(WEKA)软件确定的最具影响力的输入参数。 WEKA将月份,纬度,最高温度和明媚的阳光小时确定为影响最大的参数,并将相对湿度确定为影响最小的输入参数。具有最大影响输入参数的SVM模型的性能优于ANN和经验模型。排除相对湿度不会影响预测准确性。因此,这项工作减少了数据的维数并提高了预测精度。这项工作还尝试使用SVM模型评估印度泰米尔纳德邦智慧城市的太阳能潜力。预计的年度GSR从17到22 MJ / m(2)/天不等,对于各种太阳能应用而言,其精确度足够。 (C)2017 Elsevier Ltd.保留所有权利。

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