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Incorporating the effects of hike in energy prices into energy consumption forecasting: a fuzzy expert system

机译:将能源价格上涨的影响纳入能耗预测:模糊专家系统

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This paper proposes an adaptive fuzzy expert system to concurrently estimate and forecast both long-term electricity and natural gas (NG) consumptions with hike in prices. Using a novel procedure, the impact of price hike is incorporated into energy demand modeling. Furthermore, adaptive network-based FIS (ANFIS) is used to model NG consumption in power generation (NGPG). To cope with random uncertainty in small historical data sets, Monte Carlo simulation is used to generate training data for ANFIS. The proposed ANFIS uses electricity consumption data to improve the estimation of total NG consumption. The unique contribution of this paper is three fold. First, it proposes a novel expert system for electricity consumption and NG consumption in end-use sector with hike in prices. Second, it uses ANFIS-Monte Carlo approach for NGPG. Third, electricity consumption is used in ANFIS for improvement of NGPG consumption estimation. A real case study is presented that illustrates the applicability and usefulness of the proposed model where it is applied for joint forecasting of annual electricity and NG consumption with hike in prices.
机译:本文提出了一种自适应模糊专家系统,可以在价格上涨的同时估算和预测长期电力和天然气(NG)消耗。使用新颖的程序,将价格上涨的影响纳入能源需求建模。此外,基于自适应网络的FIS(ANFIS)用于模拟发电(NGPG)中的NG消耗。为了应对小的历史数据集中的随机不确定性,使用蒙特卡洛模拟生成ANFIS的训练数据。拟议的ANFIS使用电力消耗数据来改善对天然气总消耗量的估算。本文的独特贡献是三方面的。首先,随着价格的上涨,它提出了一种新颖的专家系统,用于最终用途部门的电力消耗和天然气消耗。其次,它对NGPG使用ANFIS-Monte Carlo方法。第三,在ANFIS中使用电力消耗来改善NGPG消耗估算。提出了一个真实的案例研究,说明了所提出模型的适用性和实用性,该模型可用于联合预测年度电力和天然气消费量以及价格上涨。

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