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Short-term power output forecasting of hourly operation in power plant based on climate factors and effects of wind direction and wind speed

机译:基于气候因素以及风向和风速影响的发电厂每小时运行的短期电力输出预测

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摘要

Short-term power output forecasting is a fundamental and mandatory task in the power plants. Since the restructuring and privatization of power plants in Iran are in progress, this is particularly important in the operational planning and cost control in the power plants. Numerous factors affect power output forecasting especially climate factors. In this paper, besides several climate factors, two factors including wind speed and wind direction that have been rarely considered simultaneously for power output forecasting in previous studies, have been used. These two factors have many fluctuations and usually create a significant noise in forecasting models. To illustrate this claim, the mechanical simulations are used to demonstrate the necessity of these factors for short-term power output forecasting. For this purpose, a neural network-based approach is proposed using six variables. This approach uses the mixture models of Kohonen's self-organizing map (SOM) as clustering method and radial basis function (RBF) as classification method for accurate power output forecasting in a power plant. Furthermore, the real case study in Iranian power plant is used to show the ability of the proposed approach. Furthermore, the statistical tests are provided to indicate the advantages and capabilities of the proposed approach. (C) 2018 Elsevier Ltd. All rights reserved.
机译:短期电力输出预测是发电厂的一项基本任务。由于伊朗的电厂正在进行重组和私有化,因此这对电厂的运营规划和成本控制尤为重要。许多因素会影响功率输出预测,尤其是气候因素。在本文中,除了几个气候因素之外,还使用了先前研究中很少同时考虑的风速和风向这两个因素,而风速和风向却很少被同时考虑。这两个因素波动很大,通常会在预测模型中产生很大的噪声。为了说明这一要求,使用机械仿真来证明这些因素对于短期功率输出预测的必要性。为此,提出了使用六个变量的基于神经网络的方法。这种方法使用Kohonen的自组织图(SOM)的混合模型作为聚类方法,并使用径向基函数(RBF)作为分类方法来对电厂进行精确的功率输出预测。此外,以伊朗发电厂的实际案例研究来证明所提出方法的能力。此外,提供了统计测试以表明所提出方法的优点和功能。 (C)2018 Elsevier Ltd.保留所有权利。

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