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Long-term energy peak load forecasting models: A hybrid statistical approach

机译:长期能量峰值负荷预测模型:混合统计方法

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Electricity demand forecasting is an essential process for electricity planning, designing strategies and recommending future energy policies. The changing behavior of the socio-economic growth beside the incomplete coverage of the environmental impacts can make a long-term energy demand forecasting process for a specific energy network challenging. This article presents four new developed multiple regression models for Electric Energy Peak Load and the main affecting factors for Kingdom of Bahrain as a case study. Time series analysis of seven years monthly load data was conducted. The method was hybridized with Machine-learning tools to find suitable forecasting linear and non-linear models for Bahrain electricity network. Residual analysis was adopted to find the model that best fit the Peak load data. Cross validation aims to evaluate the efficiency of a predictive model. For this purpose, a new peak load data set for an eight year was gathered and tested. Results are reported to guide Bahrain electricity network forecasting needs for the next future years. The developed technique can be extended to the hybrid renewable energy system that Bahrain and other countries in the region has recently announced to adopt.
机译:电力需求预测是电力规划,设计策略和建议未来能源政策的重要过程。在环境影响的不完整覆盖范围内的社会经济增长的不断变化可以为特定能源网络挑战进行长期的能源需求预测过程。本文为电能峰值负荷和巴林王国为例研究提供了四种新的发达的多元回归模型。时间序列分析七年每月负荷数据进行。该方法与机器学习工具杂交,以找到适用于巴林电网的预测线性和非线性模型。采用残余分析来查找最适合峰值负载数据的模型。交叉验证旨在评估预测模型的效率。为此目的,收集和测试了一个八年的新峰值负载数据。据报道,结果是指出未来几年的巴林电网预测需求。开发技术可以扩展到混合可再生能源系统,该地区的巴林和其他国家最近宣布通过。

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