短期电力负荷预测:以土耳其电力市场为例

Muhammed Yasin Ishik, Tolga Goze, Ihsan Ozcan, V. C. Gungor, Z. Aydın
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引用次数: 8

摘要

随着近年来能源领域的发展,电力价格由现货市场主导,多种市场机制有效发挥作用。在土耳其实行市场自由化的新立法之后,能源市场对以小时价格为基础的竞争越来越感兴趣,因此发电机和电力公司必须在其业务范围内增加新的内容:短期负荷和价格预测。该领域有一些机会,但并非没有挑战。市场价格的动态行为使电力负荷变得可变和非平稳。此外,必须预测负载的节点数量不再是恒定的,不能再由专家单独估计。在这种竞争激烈的情况下,能够自动准确地处理数千个数据样本的统计预测方法是必不可少的。本研究的目的是证明短期负荷预测的重要性,它如何在土耳其获得越来越多的兴趣,并提出一个可以预测短期电力负荷的人工神经网络。通过详细的性能评估,我们证明了我们的预测方法能够准确地预测小时负荷。
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Short term electricity load forecasting: A case study of electric utility market in Turkey
With the recent developments in energy sector, the pricing of electricity is now governed by the spot market where a variety of market mechanisms are effective. After the new legislation of market liberalization in Turkey, competition-based on hourly price has received a growing interest in the energy market, which necessitated generators and electric utility companies to add new dimensions to their scope of operation: short-term load and price forecasting. The field has several opportunities though not free from challenges. The dynamic behavior of the market price has caused the electric load to become variable and non-stationary. Furthermore, the number of nodes, in which the load must be predicted, is not constant anymore and can no longer be estimated by experts alone. In this competitive scenario, statistical forecasting methods that can automatically and accurately process thousands of data samples are essential. The purpose of this study is to demonstrate the importance of short-term load forecasting, how it has received a growing interest in Turkey and to propose an artificial neural network that can forecast the short term electricity load. Through detailed performance evaluations, we demonstrate that our forecasting method is capable of predicting the hourly load accurately.
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