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Forecasting GHG emissions using an optimized artificial neural network model based on correlation and principal component analysis

机译:使用基于相关性和主成分分析的优化人工神经网络模型预测温室气体排放

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摘要

The prediction of GHG emissions is very important due to their negative impacts on climate and global warming. The aim of this study was to develop a model for GHG forecasting emissions at the national level using a new approach based on artificial neural networks (ANN) and broadly available sustainability, economical and industrial indicators acting as inputs. The ANN model architecture and training parameters were optimized, with inputs being selected using correlation analysis and principal component analysis. The developed ANN models were compared with the corresponding multiple linear regression (MLR) model, while an ANN model created using transformed inputs (principal components) was compared with a principal component regression (PCR) model. Since the best results were obtained with the ANN model based on correlation analysis, that particular model was selected for the actual 2011 GHG emissions forecasting. The relative errors of the 2010 GHG emissions predictions were used to adjust the ANN model predictions for 2011, which subsequently resulted in the adjusted 2011 predictions having a MAPE value of only 3.60%. Sensitivity analysis showed that gross inland energy consumption had the highest sensitivity to GHG emissions.
机译:由于温室气体排放会对气候和全球变暖产生负面影响,因此对其进行预测非常重要。这项研究的目的是使用一种基于人工神经网络(ANN)和广泛可用的可持续性,经济和工业指标作为输入的新方法,开发一种用于预测国家一级温室气体排放的模型。优化了ANN模型的架构和训练参数,并使用相关分析和主成分分析来选择输入。将已开发的ANN模型与相应的多元线性回归(MLR)模型进行比较,同时将使用转换后的输入(主要成分)创建的ANN模型与主成分回归(PCR)模型进行比较。由于使用基于相关性分析的ANN模型获得了最佳结果,因此选择了该特定模型进行实际的2011年温室气体排放预测。 2010年温室气体排放量预测的相对误差用于调整2011年的ANN模型预测,随后导致调整后的2011年预测的MAPE值仅为3.60%。敏感性分析表明,内陆能源总消耗对温室气体排放的敏感性最高。

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