EPSO-based Gaussian Process for electricity price forecasting

H. Mori, K. Nakano
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引用次数: 3

Abstract

In this paper, a new method is proposed for Locational Marginal Pricing (LMP) forecasting in Smart Grid. The marginal cost is required to supply electric power to incremental loads in case where a certain node increases power demands in a balanced power system. LMP plays an important role to maintain economic efficiency in electric power markets in a way that electricity flows from a low-cost area to high-cost ones and the transmission network congestion is alleviated. The power market players are interested in maximizing the profits and minimizing the risks through selling and buying electricity. As a result, it is of importance to obtain accurate information on electricity pricing forecasting in advance so that their aim is achieved. This paper presents the Gaussian Process (GP) technique that comes from the extension of Support Vector Machine (SVM) in which hierarchical Bayesian estimation is introduced to express the model parameters as the probabilistic variables. The advantage is that the model accuracy of GP is better than others. GP is integrated with k-means of clustering to improve the performance of GP. Also, this paper makes use of the Mahalanobis kernel in GP rather than the Gaussian one so that GP is generalized to approximate nonlinear systems. EPSO of evolutionary computation is applied to GP to determine the parameters of the kernel function. The effectiveness of the proposed method is demonstrated for real data of ISO New England in USA.
基于epso的高斯过程电价预测
本文提出了一种新的智能电网区域边际电价预测方法。在均衡电力系统中,当某节点的电力需求增加时,向增量负荷供电所需要的边际成本。LMP在维持电力市场的经济效率方面发挥了重要作用,使电力从低成本地区流向高成本地区,缓解了输电网络的拥塞。电力市场参与者关心的是通过买卖电力实现利润最大化和风险最小化。因此,提前获得准确的电价预测信息对电价预测的实现具有重要意义。本文提出了支持向量机(SVM)扩展后的高斯过程(GP)技术,该技术引入层次贝叶斯估计,将模型参数表示为概率变量。其优点是GP的模型精度优于其他方法。GP与聚类的k-means相结合,提高了GP的性能。此外,本文还利用了GP中的Mahalanobis核而不是高斯核,从而将GP推广到近似非线性系统。将进化计算的EPSO算法应用于遗传算法,确定核函数的参数。用美国新英格兰地区的实测数据验证了该方法的有效性。
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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