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Priority index considering temperature and date proximity for selection of similar days in knowledge-based short term load forecasting method

机译:基于知识的短期负荷预测方法中考虑温度和日期接近度以选择相似日期的优先级指数

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摘要

Short term load forecasting (STLF) is one of the important issues in the energy management of power systems. Increasing the accuracy of STLF results leads to improving the energy system scheduling and decreasing the operating costs. Different methods have been proposed and applied in the STLF problem such as neural network, fuzzy system, regression-based and neuro-fuzzy methods. This paper investigates the knowledge-based method that has less computation time and memory compared with other methods. The accuracy of knowledge-based STLF method is improved by proposing a novel priority index for selection of similar days. In this index, temperature similarity and date proximity are simultaneously considered. In order to consider the effect of temperature in STLF more efficiently, the system is partitioned into the smaller regions and the STLF of the whole system is calculated by gathering the STLF of all regions. The proposed method is implemented on a sample real data, Iran's national power network, to show the advantages of the proposed method compared with Bayesian neural network and locally linear neuro-fuzzy methods in aspects of accuracy and computation time. It is shown that the proposed method decreases yearly mean absolute percentage error (MAPE), and generates more reliable load forecasting. (C) 2017 Elsevier Ltd. All rights reserved.
机译:短期负荷预测(STLF)是电力系统能源管理中的重要问题之一。 STLF结果准确性的提高可改善能源系统的调度并降低运营成本。已经提出了不同的方法并将其应用于STLF问题,例如神经网络,模糊系统,基于回归的方法和神经模糊方法。本文研究了基于知识的方法,与其他方法相比,该方法具有更少的计算时间和内存。通过提出一种用于选择相似日期的新优先级索引,可以提高基于知识的STLF方法的准确性。在该指数中,同时考虑了温度相似性和日期接近性。为了更有效地考虑温度对STLF的影响,将系统划分为较小的区域,并通过收集所有区域的STLF来计算整个系统的STLF。所提出的方法是在样本真实数据(伊朗国家电网)上实现的,以显示该方法与贝叶斯神经网络和局部线性神经模糊方法相比在准确性和计算时间方面的优势。结果表明,该方法降低了年平均绝对百分比误差(MAPE),并产生了更可靠的负荷预测。 (C)2017 Elsevier Ltd.保留所有权利。

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