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首页> 外文期刊>Journal of Cleaner Production >A novel robust reweighted multivariate grey model for forecasting the greenhouse gas emissions
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A novel robust reweighted multivariate grey model for forecasting the greenhouse gas emissions

机译:一种用于预测温室气体排放的新型鲁棒重型多元灰度模型

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In this paper, in order to accurately forecast the greenhouse gas (GHG) emissions at a national level, we propose a novel robust reweighted multivariate grey model, abbreviated as the RWGM(1,N), that reduces the potential for overfitting and performs more robust against outliers. The methodology starts from the unweighted regularized multivariate grey model, abbreviated as the RGM(1,N), that treats the size of the coefficients and a penalty for the residuals as the objective function. To further distinguish the amount of shrinkage, the weighting factors are introduced and updated iteratively based on the previous errors until the convergence is realized or the maximum iterations is reached. As a result, the RWGM(1,N) does not increase the computational burden significantly, but it provides robust method for estimating the coefficients of multivariate grey model. In applications, the least absolute shrinkage and selection operator (LASSO) regression is employed to implement the variable selection for socioeconomic, energy-related and environment-related potential predictor variables, and the proposed model is utilized to simulate the GHG emissions in European Union (EU) member countries from 2010 to 2016. The results show that this novel model demonstrates a higher predicted accuracy and more robust performance over the other models considered for comparison.(c) 2021 Elsevier Ltd. All rights reserved.
机译:在本文中,为了准确地预测全国范围内的温室气体(GHG)排放,我们提出了一种新颖的重新重量多元灰色模型,缩写为RWGM(1,N),这减少了过度装备和执行的可能性对异常值的强大。该方法从未加权的正则化多变量灰色模型开始,缩写为RGM(1,N),其处理系数的大小和残差作为目标函数的惩罚。为了进一步区分收缩量,基于先前的误差迭代地引入并更新加权因子,直到实现收敛或达到最大迭代。结果,RWGM(1,N)不会显着增加计算负担,但它提供了估计多元灰度模型系数的鲁棒方法。在应用中,采用最小的绝对收缩和选择运算符(套索)回归来实现社会经济,能量相关和环境相关的潜在预测变量的变量选择,并且所提出的模型用于模拟欧盟的温室气体排放量(欧盟)成员国从2010年到2016年。结果表明,这部小型模型展示了更高的预测准确性和对考虑的其他模型的更强大的性能。(c)2021 elestvier有限公司保留所有权利。

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