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Wang and Mendel's fuzzy rule learning method for energy consumption forecasting considering the influence of environmental temperature

机译:Wang和Mendel考虑环境温度影响的能耗预测的模糊规则学习方法

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Reliable consumption forecasts are crucial in several aspects of power and energy systems, e.g. to take advantage of the full potential of flexibility from consumers and to support the management from operators. With this need, several methodologies for electricity forecasting have emerged. However, the study of correlated external variables, such as temperature or luminosity, is still far from adequate. This paper presents the application of the Wang and Mendel's Fuzzy Rule Learning Method (WM) to forecast electricity consumption. The proposed approach includes two distinct strategies, the first one uses only the electricity consumption as the input of the method, and the second strategy considers a combination of the electricity consumption and the environmental temperature as the input, in order to extract value from the correlation between the two variables. A case study that considers the forecast of the energy consumption of a real office building is also presented. Results show that the WM method using the combination of energy consumption data and environmental temperature is able to provide more reliable forecasts for the energy consumption than several other methods experimented before, namely based on artificial neural networks and support vector machines. Additionally, the WM approach that considers the combination of input values achieves better results than the strategy that considers only the consumption history, hence concluding that WM is appropriate to incorporate different information sources.
机译:可靠的能耗预测在电力和能源系统的多个方面至关重要,例如充分利用消费者的灵活性潜力,并支持运营商的管理。出于这种需要,出现了几种用于电力预测的方法。但是,对相关的外部变量(例如温度或光度)的研究仍远远不够。本文介绍了Wang和Mendel的模糊规则学习方法(WM)在预测用电量中的应用。所提出的方法包括两种截然不同的策略,第一种策略仅使用电力消耗作为方法的输入,第二种策略考虑电力消耗和环境温度的组合作为输入,以便从相关性中提取价值。在两个变量之间。还提供了一个案例研究,该案例考虑了对真实办公楼能耗的预测。结果表明,与以前尝试过的其他几种基于人工神经网络和支持向量机的方法相比,结合能耗数据和环境温度的WM方法能够为能耗提供更可靠的预测。此外,与仅考虑消费历史的策略相比,考虑输入值组合的WM方法可获得更好的结果,因此得出结论,WM适合合并不同的信息源。

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