Investigating Black-Box Model for Wind Power Forecasting Using Local Interpretable Model-Agnostic Explanations Algorithm
Regular Papers|更新时间:2026-02-06
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Investigating Black-Box Model for Wind Power Forecasting Using Local Interpretable Model-Agnostic Explanations Algorithm
Investigating Black-Box Model for Wind Power Forecasting Using Local Interpretable Model-Agnostic Explanations Algorithm
中国电机工程学会电力与能源系统学报(英文)2025年11卷第1期 页码:227-242
作者机构:
1. Key Laboratory of Modern Power System Simulation and Control & Renewable Energy Technology, Ministry of Education, Northeast Electric Power University,Jilin,China
Mao Yang, Chuanyu Xu, Yuying Bai, 等. Investigating Black-Box Model for Wind Power Forecasting Using Local Interpretable Model-Agnostic Explanations Algorithm[J]. 中国电机工程学会电力与能源系统学报(英文), 2025,11(1):227-242.
Mao Yang, Chuanyu Xu, Yuying Bai, et al. Investigating Black-Box Model for Wind Power Forecasting Using Local Interpretable Model-Agnostic Explanations Algorithm[J]. CSEE Journal of Power and Energy Systems, 2025, 11(1): 227-242.
Mao Yang, Chuanyu Xu, Yuying Bai, 等. Investigating Black-Box Model for Wind Power Forecasting Using Local Interpretable Model-Agnostic Explanations Algorithm[J]. 中国电机工程学会电力与能源系统学报(英文), 2025,11(1):227-242. DOI: 10.17775/CSEEJPES.2021.07470.
Mao Yang, Chuanyu Xu, Yuying Bai, et al. Investigating Black-Box Model for Wind Power Forecasting Using Local Interpretable Model-Agnostic Explanations Algorithm[J]. CSEE Journal of Power and Energy Systems, 2025, 11(1): 227-242. DOI: 10.17775/CSEEJPES.2021.07470.
Investigating Black-Box Model for Wind Power Forecasting Using Local Interpretable Model-Agnostic Explanations Algorithm
Wind power forecasting (WPF) is important for safe
stable
and reliable integration of new energy technologies into power systems. Machine learning (ML) algorithms have recently attracted increasing attention in the field of WPF. However
opaque decisions and lack of trustworthiness of black-box models for WPF could cause scheduling risks. This study develops a method for identifying risky models in practical applications and avoiding the risks. First
a local interpretable model-agnostic explanations algorithm is introduced and improved for WPF model analysis. On that basis
a novel index is presented to quantify the level at which neural networks or other black-box models can trust features involved in training. Then
by revealing the operational mechanism for local samples
human interpretability of the black-box model is examined under different accuracies
time horizons
and seasons. This interpretability provides a basis for several technical routes for WPF from the viewpoint of the forecasting model. Moreover
further improvements in accuracy of WPF are explored by evaluating possibilities of using interpretable ML models that use multi-horizons global trust modeling and multi-seasons interpretable feature selection methods. Experimental results from a wind farm in China show that error can be robustly reduced.
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references
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