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Regression analysis for energy demand projection: An application to TIMES-Basilicata and TIMES-Italy energy models

机译:能源需求预测的回归分析:在TIMES-巴西利卡塔和TIMES-意大利能源模型中的应用

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摘要

A reliable energy supply is fundamental to ensure energy security and support the mitigation of climate change by promoting the use of renewable sources and reducing carbon emissions. Energy system analysis provides a sound methodology to assess energy needs, allowing to investigate the energy system behavior and to individuate the optimal energy-technology configurations for the achievement of strategic energy and environmental policy targets. In this framework, the estimation of future trends of exogenous variables such as energy demand has a fundamental importance to obtain reliable and effective solutions, contributing remarkably to the accuracy of models' input data. This study illustrates an application of regression analysis to predict energy demand trends in end use sectors. The proposed procedure is applied to characterize statistically the relationships between population and gross domestic product (independent variables) and energy demands of Residential, Transport and Commercial in order to determine the energy demand trends over a long-term horizon. The effectiveness of linear and nonlinear regression models for energy demand forecasting has been validated by classical statistical tests. Energy demand projections have been tested as input data of the bottom-up TIMES model in two applications (the TIMES-Basilicata and TIMES-Italy models) confirming the validity of the forecasting approach.
机译:可靠的能源供应对于确保能源安全并通过促进使用可再生资源和减少碳排放量来支持缓解气候变化至关重要。能源系统分析提供了一种评估能源需求的可靠方法,可以调查能源系统的行为并为实现战略能源和环境政策目标而个性化最佳能源技术配置。在此框架中,估算外源变量(例如能源需求)的未来趋势对于获得可靠且有效的解决方案至关重要,这对模型输入数据的准确性做出了显着贡献。这项研究说明了回归分析在预测最终用途部门能源需求趋势中的应用。拟议的程序用于统计表征人口与国内生产总值(独立变量)与住宅,运输和商业能源需求之间的关系,以确定长期的能源需求趋势。线性和非线性回归模型在能源需求预测中的有效性已通过经典的统计检验得到了验证。能源需求预测已作为自下而上的TIMES模型的输入数据在两个应用程序(TIMES-Basilicata和TIMES-Italy模型)中进行了测试,证实了预测方法的有效性。

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