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The Combination Forecasting of Electricity Price Based on Price Spikes Processing: A Case Study in South Australia

机译:基于价格峰值处理的电价组合预测:以南澳大利亚为例

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摘要

Electricity price forecasting holds very important position in the electricity market. Inaccurate price forecasting may cause energy waste and management chaos in the electricity market. However, electricity price forecasting has always been regarded as one of the largest challenges in the electricity market because it shows high volatility, which makes electricity price forecasting difficult. This paper proposes the use of artificial intelligence optimization combination forecasting models based on preprocessing data, called “chaos particles optimization (CPSO) weight-determined combination models.” These models allow for the weight of the combined model to take values of[-1,1]. In the proposed models, the density-based spatial clustering of applications with noise (DBSCAN) algorithm is used to identify outliers, and the outliers are replaced by a new data-produced linear interpolation function. The proposed CPSO weight-determined combination models are then used to forecast the projected future electricity price. In this case study, the electricity price data of South Australia are simulated. The results indicate that, while the weight of the combined model takes values of[-1,1], the proposed combination model can always provide adaptive, reliable, and comparatively accurate forecast results in comparison to traditional combination models.
机译:电价预测在电力市场中占有非常重要的地位。不正确的价格预测可能会导致电力市场中的能源浪费和管理混乱。然而,电价预测一直被认为是电力市场中最大的挑战之一,因为它显示出很高的波动性,这使得电价预测变得困难。本文提出了基于预处理数据的人工智能优化组合预测模型的使用,称为“混沌粒子优化(CPSO)权重确定的组合模型”。这些模型允许组合模型的权重为[-1,1]。在提出的模型中,使用基于密度的带噪声应用程序空间聚类(DBSCAN)算法来识别离群值,并用新的数据生成的线性插值函数代替离群值。然后,将所提出的CPSO权重确定的组合模型用于预测预计的未来电价。在本案例研究中,模拟了南澳大利亚州的电价数据。结果表明,虽然组合模型的权重为[-1,1],但与传统组合模型相比,所提出的组合模型始终可以提供自适应,可靠和相对准确的预测结果。

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