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The Combined Effect of Applying Feature Selection and Parameter Optimization on Machine Learning Techniques for Solar Power Prediction

机译:应用特征选择和参数优化对太阳能发电机器学习技术的综合影响

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This paper empirically shows that the combined effect of applying the selected feature subsets and optimized parameters on machine learning techniques significantly improves the accuracy for solar power prediction. To provide evidence, experiments are carried on in two phases. For all the experiments the machine learning techniques namely Least Median Square (LMS), Multilayer Perceptron (MLP) and Support Vector Machine (SVM) are used. In the first phase five well-known wrapper feature selection methods are used to obtain the prediction accuracy of machine learning techniques with selected feature subsets and default parameter settings. The experiments from the first phase demonstrate that holding the default parameters, LMS, MLP and SVM provides better prediction accuracy (i.e. reduced MAE and MASE) with selected feature subsets rather than without selected feature subsets. After getting improved prediction accuracy from the first phase, the second phase continues the experiments to optimize machine learning parameters and the prediction accuracy of those machine learning techniques are re-evaluated through adopting both the optimized parameter settings and selected feature subsets. The comparison between the results of two phases clearly shows that the later phase (i.e. machine learning techniques with selected feature subsets and optimized parameters) provides substantial improvement in the accuracy for solar power prediction than the earlier phase (i.e. machine learning techniques with selected feature subsets and default parameters). Experiments are carried out using reliable and real life historical meteorological data. The machine learning accuracy of solar radiation prediction is justified in terms of statistical error measurement and validation metrics. Experimental results of this paper facilitate to make a concrete verdict that providing more attention and effort towards the feature subset selection and machine learning parameter optimization (e.g. combined effect of selected feature subsets and optimized parameters on prediction accuracy which is investigated in this paper) can significantly contribute to improve the accuracy of solar power prediction.
机译:本文从经验上表明,将所选特征子集和优化参数应用于机器学习技术的组合效果显着提高了太阳能发电预测的准确性。为了提供证据,实验分两个阶段进行。对于所有实验,都使用了机器学习技术,即最小均方(LMS),多层感知器(MLP)和支持向量机(SVM)。在第一阶段,使用五种众所周知的包装器特征选择方法来获得具有所选特征子集和默认参数设置的机器学习技术的预测精度。第一阶段的实验表明,使用默认参数LMS,MLP和SVM,在选择了特征子集而不是没有选择特征子集的情况下,可以提供更好的预测准确性(即降低的MAE和MASE)。从第一阶段获得改进的预测精度后,第二阶段继续进行实验以优化机器学习参数,并通过采用优化的参数设置和所选特征子集来重新评估那些机器学习技术的预测精度。两个阶段的结果之间的比较清楚地表明,与较早阶段(即具有选定特征子集的机器学习技术)相比,后阶段(即具有选定特征子集和优化参数的机器学习技术)在太阳能发电预测的准确性方面有显着提高和默认参数)。实验是使用可靠的和现实生活中的历史气象数据进行的。根据统计误差测量和验证指标证明了太阳辐射预测的机器学习准确性。本文的实验结果有助于做出一个具体的结论,即为特征子集选择和机器学习参数优化(例如,本文中研究的选定特征子集和优化参数对预测精度的组合影响)提供更多关注和精力可以显着有助于提高太阳能预测的准确性。

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