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Short-term electricity price forecasting and classification in smart grids using optimized multikernel extreme learning machine

机译:使用优化的多时期极限学习机的智能电网短期电价预测和分类

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摘要

Short-term electricity price forecasting in deregulated electricity markets has been studied extensively in recent years but without significant reduction in price forecasting errors. Also demand-side management and short-term scheduling operations in smart grids do not require strictly very accurate forecast and can be executed with certain practical price thresholds. This paper, therefore, presents a multikernel extreme learning machine (MKELM) for both short-term electricity price forecasting and classification according to some prespecified price thresholds. The kernel ELM does not require the hidden layer mapping function to be known and produces robust prediction and classification in comparison with the conventional ELM using random weights between the input and hidden layers. Further in the MKELM formulation, the linear combination of the weighted kernels is optimized using vaporization precipitation-based water cycle algorithm (WCA) to produce significantly accurate electricity price prediction and classification. The combination of MKELM and WCA is named as WCA-MKELM in this work. To validate the effectiveness of the proposed approach, three electricity markets, namely PJM, Ontario and New South Wales, are considered for electricity price forecasting and classification producing fairly accurate results.
机译:近年来,解除管制电力市场的短期电价预测已被广泛研究,但价格预测错误的显着降低了。此外,智能电网的需求方管理和短期调度操作不需要严格非常准确的预测,并且可以以某些实用的价格阈值执行。因此,本文介绍了多级电力价格预测和根据一些预先限价的价格门槛进行分类的多时限极限学习机(MKELM)。内核ELM不需要已知的隐藏层映射函数,并且与使用输入和隐藏层之间的随机权重比较,与传统榆树相比,产生鲁棒预测和分类。此外,在MKELM制剂中,使用基于汽化沉淀的水循环算法(WCA)进行了加权核的线性组合,以产生显着的电力价格预测和分类。 Mkelm和WCA的组合在这项工作中被命名为WCA-MKELM。为验证拟议的方法的有效性,三个电力市场,即PJM,安大略省和新南威尔士州,被认为是电力价格预测和分类,产生相当准确的结果。

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