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LMP forecasting with prefiltered Gaussian process

机译:LMP预测预测高斯加工

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In this paper, a new method is proposed for Locational Marginal Pricing (LMP) forecasting in Smart Grid. The marginal cost is required to supply electricity 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 power markets in a way that electricity flows from a low-cost area to high-cost one and the transmission network congestion in 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 desire is reflected. This paper presents the Gaussian Process (GP) technique that comes from the extension of Support Vector Machine (SVM) that 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. In this paper, GP is integrated with the k-means method 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. The proposed method is successfully applied to real data of ISO New England in USA.
机译:本文提出了一种新方法,用于智能电网中的位置边际定价(LMP)预测。在某个节点在平衡电源系统中增加功率需求的情况下,需要对压力提供压力的边缘成本。 LMP在电力流量从低成本区域到高成本的方式保持了重要作用,以维持电力市场的经济效率,并减轻传输网络拥塞。电力市场参与者有兴趣通过销售和购买电力来最大限度地提高利润和最小化风险。因此,在提前获得关于电力定价预测的准确信息,因此重视其愿望是重视的。本文介绍了来自支持向量机(SVM)扩展的高斯过程(GP)技术,介绍了分层贝叶斯估计,以表达模型参数作为概率变量。优点是GP的模型精度比其他更好。在本文中,GP与聚类的K-Means方法集成,以提高GP的性能。此外,本文在GP中使用Mahalanobis内核而不是高斯人,使得GP是广泛的,以近似非线性系统。该方法成功应用于美国ISO新英格兰的真实数据。

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