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Hybrid intelligent strategy for multifactor influenced electrical energy consumption forecasting

机译:混合智能策略用于多因素影响电耗预测

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This paper proposes a novel hybrid strategy based on intelligent approaches to forecast electricity consumptions. The proposed forecasting strategy includes three main steps: (a) the evaluation of a correlation coefficient for socio-economic indicators on electric energy consumptions, (b) the classification of historical and socio-economic indicators using the proposed feature selection method, (c) the development of a new combined method using Adaptive Neuro-Fuzzy Inference System and Whale Optimization Algorithm to predict electrical energy consumptions. The simulation results have been tested and validated by real data sets achieved within 1992 and 2010 in two pilot cases in a developing country (Iran) and a developed one (Italy). The research findings pinpointed the greater accuracy and stability of the new developed method for electrical energy consumption forecasting compared to existing single and hybrid benchmark models.
机译:本文提出了一种基于智能方法的新型混合策略来预测用电量。拟议的预测策略包括三个主要步骤:(a)评估电能消耗的社会经济指标的相关系数,(b)使用拟议的特征选择方法对历史和社会经济指标进行分类,(c)开发了一种使用自适应神经模糊推理系统和鲸鱼优化算法的组合方法来预测电能消耗。仿真结果已经通过1992年和2010年在两个发展中国家(伊朗)和一个发达国家(意大利)的试点中获得的真实数据进行了测试和验证。研究发现指出,与现有的单一和混合基准模型相比,新开发的电能消耗预测方法具有更高的准确性和稳定性。

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