An optimized model of electricity price forecasting in the electricity market based on fuzzy timeseries

B. Safarinejadian, Masihollah Gharibzadeh, M. Rakhshan
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引用次数: 10

Abstract

Electricity price forecasting in the electricity market is one of the important purposes for improving the performance of market players and increasing their profits in a competitive electricity market. Since the system load is one of the important factors affecting electricity price changes, a two-factorial model based on fuzzy time series is presented in this paper for electricity price forecasting using the electricity prices of the previous days and the system load. In the proposed method, price and system load time series are fuzzified by fuzzy sets created based on the fuzzy C-means clustering algorithm. After determining proposed model coefficients by the Teaching–Learning-Based Optimization algorithm, this model is used for forecasting the next day electricity price. The promising performance of the proposed model is examined using Australia and Singapore electricity markets data.
基于模糊时间序列的电力市场电价预测优化模型
在竞争激烈的电力市场中,电力市场电价预测是提高市场主体绩效、增加市场主体利润的重要手段之一。由于系统负荷是影响电价变化的重要因素之一,本文提出了一种基于模糊时间序列的两因子模型,利用前日电价和系统负荷对电价进行预测。该方法利用基于模糊c均值聚类算法的模糊集对价格和系统负荷时间序列进行模糊化。通过基于教学-学习的优化算法确定模型系数后,将该模型用于次日电价预测。利用澳大利亚和新加坡电力市场数据检验了所提出模型的良好性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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