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Wavelet-based 3-phase hybrid SVR model trained with satellite-derived predictors, particle swarm optimization and maximum overlap discrete wavelet transform for solar radiation prediction

机译:基于小波的三相混合SVR模型,使用卫星衍生的预测因子进行训练,粒子群优化和最大重叠离散小波变换,用于太阳辐射预测

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摘要

The accurate prediction of global solar radiation (GSR) with remote sensing in metropolitan, regional and remote, yet solar-rich sites, is a core requisite for cleaner energy utilization, monitoring and conversion of renewable energy into usable power. Data-driven models that investigate the feasibility of solar-fueled energies, face challenges in respect to identifying their appropriate input data as such variables may not be available at all sites due to a lack of environmental monitoring system. In this paper, the Moderate Resolution Imaging Spectroradiometer (MODIS) satellite-derived predictors are employed to train three-phase hybrid SVR model for monthly GSR prediction. Firstly, to acquire relevant model input features, MODIS variables are screened with the Particle Swarm Optimization (PSO) algorithm, and secondly, a Gaussian emulation method of sensitivity analysis is incorporated on all screened variables to ascertain their relative role in predicting GSR. To address pertinent issues of non-stationarities, PSO selected variables are decomposed with Maximum Overlap Discrete Wavelet Transformation prior to its incorporation in Support Vector Regression (SVR), constructing a three-phase PSO-WSVR hybrid model where the hyper-parameters are acquired by evolutionary (Le., PSO & Genetic Algorithm) and Grid Search methods. Three-phase PSO-W-SVR hybrid model is benchmarked with alternative machine learning models. Thirty-nine model scenarios are formulated: 13 without feature selection (e.g., SVR), 13 with feature selection (e.g., PSO-SVR for two-phase models) and the remainder 13 with feature selection strategy coupled with data decomposition algorithm (e.g., PSO-W-SVR leading to a three-phase model). Metrics such as skill score (RMSEss), root mean square error (RMSE), mean absolute error (MAE), Willmott's (WI), Legates & McCabe's (E-1) and Nash-Sutcliffe coefficients (E-NS) are applied to comprehensively evaluate prescribed models. Empirical results register high performance of three-phase hybrid PSO-W-SVR models, exceeding the prescribed alternative models. High predictive ability evidenced by a low RRMSE and high E-1 ascertains PSO-W-SVR hybrid model as considerably favorable in its capability to be enriched by MODIS satellite-derived variables. Maximum Overlap Discrete Wavelet Transform algorithm is also seen to provide resolved patterns in satellite variables, leading to a superior performance compared to the other data-driven model. The research avers that a three-phase hybrid PSO-W-SVR model can be a viable tool to predict GSR using satellite derived data as predictors, and is particularly useful for exploration of renewable energies where satellite footprint are present but regular environmental monitoring systems may be absent.
机译:在大都市,区域和偏远但太阳能丰富的站点中,利用遥感对全球太阳辐射(GSR)进行准确预测是清洁能源利用,监测和将可再生能源转化为可用电能的核心条件。研究太阳能燃料可行性的数据驱动模型在确定其适当的输入数据方面面临挑战,因为缺乏环境监测系统可能无法在所有站点使用此类变量。在本文中,采用中分辨率成像光谱仪(MODIS)卫星预测器来训练用于每月GSR预测的三相混合SVR模型。首先,为了获得相关的模型输入特征,使用粒子群优化(PSO)算法筛选了MODIS变量,其次,对所有筛选出的变量都采用了敏感性分析的高斯仿真方法,以确定它们在预测GSR中的相对作用。为了解决相关的非平稳性问题,在将PSO选择的变量合并到支持向量回归(SVR)中之前,将其进行最大重叠离散小波变换分解,构建一个三相PSO-WSVR混合模型,通过该模型获取超参数进化(Le。,PSO和遗传算法)和网格搜索方法。三相PSO-W-SVR混合模型以替代机器学习模型作为基准。制定了39个模型方案:13个没有特征选择(例如SVR),13个有特征选择(例如,两阶段模型的PSO-SVR),其余13个有特征选择策略和数据分解算法(例如,导致三相模型的PSO-W-SVR)。将诸如技能得分(RMSEss),均方根误差(RMSE),平均绝对误差(MAE),威尔莫特(WI),Legates&McCabe(E-1)和Nash-Sutcliffe系数(E-NS)的指标应用于全面评估规定的模型。经验结果表明,三相混合PSO-W-SVR模型具有较高的性能,超过了规定的替代模型。低RRMSE和高E-1证明了较高的预测能力,从而确定了PSO-W-SVR混合模型在通过MODIS卫星衍生的变量进行充实方面的能力是相当有利的。最大重叠离散小波变换算法还可以在卫星变量中提供已分解的模式,与其他数据驱动模型相比,具有优越的性能。研究表明,三相混合PSO-W-SVR模型可以作为使用卫星衍生数据作为预测因子来预测GSR的可行工具,并且对于探索存在卫星足迹但可定期使用环境监测系统的可再生能源特别有用。缺席。

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