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Electricity Price Forecast Using Combined Models with Adaptive Weights Selected and Errors Calibrated by Hidden Markov Model

机译:使用自适应权重和隐马尔可夫模型校​​正误差的组合模型进行电价预测

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A combined forecast with weights adaptively selected and errors calibrated by Hidden Markov model (HMM) is proposed to model the day-ahead electricity price. Firstly several single models were built to forecast the electricity price separately. Then the validation errors from every individual model were transformed into two discrete sequences: an emission sequence and a state sequence to build the HMM, obtaining a transmission matrix and an emission matrix, representing the forecasting ability state of the individual models. The combining weights of the individual models were decided by the state transmission matrixes in HMM and the best predict sample ratio of each individual among all the models in the validation set. The individual forecasts were averaged to get the combining forecast with the weights obtained above. The residuals of combining forecast were calibrated by the possible error calculated by the emission matrix of HMM. A case study of day-ahead electricity market of Pennsylvania-New Jersey-Maryland (PJM), USA, suggests that the proposed method outperforms individual techniques of price forecasting, such as support vector machine (SVM), generalized regression neural networks (GRNN), day-ahead modeling, and self-organized map (SOM) similar days modeling.
机译:提出了一种具有自适应选择权重和隐马尔可夫模型(HMM)校准误差的组合预测,以对日电价进行建模。首先,建立了几个单一模型分别预测电价。然后,将来自每个模型的验证误差转换为两个离散序列:一个发射序列和一个状态序列,以构建HMM,获得一个传输矩阵和一个发射矩阵,分别代表各个模型的预测能力状态。各个模型的组合权重由HMM中的状态传输矩阵以及验证集中所有模型中每个个体的最佳预测样本比率决定。将各个预测取平均值,以获得具有上述权重的合并预测。结合预测的残差通过HMM的排放矩阵计算出的可能误差进行校准。以美国宾夕法尼亚州-新泽西州-马里兰州(PJM)的日间电力市场为例,该建议方法优于单独的价格预测技术,例如支持向量机(SVM),广义回归神经网络(GRNN) ,提前一天建模和自组织地图(SOM)相似一天建模。

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