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Energy consumption forecasting using genetic fuzzy rule-based systems based on MOGUL learning methodology

机译:基于Mogul学习方法的基于遗传模糊规则的系统能耗预测

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One of the most challenging tasks for energy domain stakeholders is to have a better preview of the electricity consumption. Having a more trustable expectation of electricity consumption can help minimizing the cost of electricity and also enable a better control on the electricity tariff. This paper presents a study using a Methodology to Obtain Genetic fuzzy rule-based systems Under the iterative rule Learning approach (MOGUL) methodology in order to have a better profile of the electricity consumption of the following hours. The proposed approach uses the electricity consumption of the past hours to forecast the consumption value for the following hours. Results from this study are compared to those of previous approaches, namely two fuzzy based systems: and several different approaches based on artificial neural networks. The comparison of the achieved results with those achieved by the previous approaches shows that this approach can calculate a more reliable value for the electricity consumption in the following hours, as it is able to achieve lower forecasting errors, and a less standard deviation of the forecasting error results.
机译:能源领域利益相关者最具挑战性的任务之一是更好地预览电力消耗。拥有更值得信赖的电力消耗期望有助于最大限度地减少电力成本,并在电费上更好地控制。本文呈现了使用方法的研究,以获得在迭代规则学习方法(Mogul)方法下获得基于基于基于遗传的基于规则的系统,以便更好地概述下几个小时的电力消耗。所提出的方法使用过去几小时的电力消耗来预测以下时间的消费价值。该研究的结果与先前的方法,即两个模糊的系统:以及基于人工神经网络的几种不同方法。实现结果与先前方法实现的那些相比表明,这种方法可以在接下来的时间内计算出更可靠的电力消耗值,因为它能够实现较低的预测误差,以及预测的较少标准偏差错误结果。

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