A random forest method for real-time price forecasting in New York electricity market

Jie Mei, D. He, R. Harley, T. Habetler, Guannan Qu
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引用次数: 57

Abstract

This paper mainly focuses on the real-time price forecasting in New York electricity market through random forest. Accurate forecasting is regarded as the most practical way to win power bid in today's highly competitive electricity market. Comparing with existing price forecasting methods, random forest, as a newly introduced method, will provide a price probability distribution, which will allow the users to estimate the risks of their bidding strategy and also making the results helpful for later industrial using. Furthermore, the model can adjust to the latest forecasting condition, i.e. the latest climatic, seasonal and market condition, by updating the random forest parameters with new observations. This adaptability avoids the model failure in a climatic or economic condition different from the training set. A case study in New York HUD VL area is presented to evaluate the proposed model.
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纽约电力市场实时价格预测的随机森林方法
本文主要研究了基于随机森林的纽约电力市场实时电价预测。在当今竞争激烈的电力市场中,准确的预测被认为是赢得电力竞标的最实用的方法。与现有的价格预测方法相比,随机森林作为一种新引入的方法,将提供一个价格概率分布,使用户能够估计其投标策略的风险,并使结果有助于以后的工业应用。此外,该模型可以通过用新的观测值更新随机森林参数来适应最新的预测条件,即最新的气候、季节和市场条件。这种适应性避免了模型在不同于训练集的气候或经济条件下的失败。以纽约HUD VL区域为例,对该模型进行了评价。
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