State Reliability of Wind Turbines Based on XGBoost–LSTM and Their Application in Northeast China
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- Ali Mansouri & Mohsen Naghdi & Abdolmajid Erfani, 2025. "Machine Learning for Leadership in Energy and Environmental Design Credit Targeting: Project Attributes and Climate Analysis Toward Sustainability," Sustainability, MDPI, vol. 17(6), pages 1-19, March.
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Keywords
wind turbine; nonlinear system; XGBoost–LSTM; state reliability; dynamic weight; prediction;All these keywords.
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