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High-resolution probabilistic load forecasting: A learning ensemble approach

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High-resolution probabilistic load forecasting is vital for the reliable operation of the future power grid with a high penetration of renewables. Existing linear combination-based model ensemble approaches for load forecasting may not fully utilize the advantages of different models, limiting the performance. We propose a learning ensemble approach that directly learns the optimal nonlinear combination from data, outperforming conventional ensemble approaches. A Shapley value-based method is introduced to evaluate the contributions of each model to the ensemble, and numerical studies confirm its remarkable performance.
High-resolution probabilistic load forecasting can comprehensively characterize both the uncertainties and the dynamic trends of the future load. Such information is key to the reliable operation of the future power grid with a high penetration of renewables. To this end, various high-resolution probabilistic load forecasting models have been proposed in recent decades. Compared with a single model, it is widely acknowledged that combining different models can further enhance the prediction performance, which is called the model ensemble. However, existing model ensemble approaches for load forecasting are lin-ear combination-based, like mean value ensemble, weighted average ensemble, and quantile regression, and linear combinations may not fully utilize the advantages of different models, seriously limiting the performance of the model ensemble. We propose a learning ensemble approach that adopts the machine learning model to directly learn the optimal nonlinear combination from data. We theoretically demon-strate that the proposed learning ensemble approach can outperform conventional ensemble approaches. Based on the proposed learning ensemble model, we also introduce a Shapley value-based method to evaluate the contributions of each model to the model ensemble. The numerical studies on field load data verify the remarkable performance of our proposed approach.(c) 2023 The Franklin Institute. Published by Elsevier Inc. All rights reserved.

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