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From Deterministic to Probabilistic:A Lightweight Framework for Probabilistic Machine Learning in Trace Gas Remote Sensing
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作者 Wei Chen Tao Ren Changying Zhao 《Journal of Remote Sensing》 2025年第1期1-7,共7页
This perspective presents a lightweight probabilistic machine learning framework for satellite-based trace gas retrievals with uncertainty quantification.Using likelihood-based loss functions and snapshot ensembles wi... This perspective presents a lightweight probabilistic machine learning framework for satellite-based trace gas retrievals with uncertainty quantification.Using likelihood-based loss functions and snapshot ensembles without requiring uncertainty labels,it achieves scalable,fast,and reliable XCO_(2) retrieval for OCO-2,matching the physics-based method at a fraction of the computational cost. 展开更多
关键词 uncertainty quantification probabilistic deterministic machine learning trace gas remote sensing lightweight probabilistic machine learning framework snapshot ensembles uncertainty quantificationusing
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Probabilistic machine learning for enhanced chiller sequencing:A risk-based control strategy
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作者 Zhe Chen Jing Zhang +2 位作者 Fu Xiao Henrik Madsen Kan Xu a 《Energy and Built Environment》 2025年第5期783-795,共13页
Multiple-chiller systems are widely adopted in large buildings due to their high flexibility and efficiency in providing cooling capacity.A reliable and robust chiller sequencing control strategy is crucial to ensure ... Multiple-chiller systems are widely adopted in large buildings due to their high flexibility and efficiency in providing cooling capacity.A reliable and robust chiller sequencing control strategy is crucial to ensure the energy efficiency and stability of the multiple-chiller systems.However,conventional chiller sequencing control strategies are usually based on real-time measured cooling load without considering the cooling load changes in the following hours.Conventional rule-based strategy may result in unnecessary switching on and off,leading to energy waste and impairing system stability.Therefore,this study proposes a robust chiller sequencing control strategy that utilizes probabilistic cooling load predictions.1h-ahead probabilistic cooling load prediction in the form of the normal distribution is made using natural gradient boosting(NGBoost).Compared to conventional machine learning algorithms,NGBoost can predict not only the future cooling load but also the uncertainty of the predicted cooling load,which enables the load prediction to handle the uncertainties associated with the data/measurements adequately.A novel risk-based sequencing strategy is developed based on the probabilistic cooling load predictions.The data experiment shows that the proposed strategy can significantly improve the stability and reliability of the chiller plant by reducing the total switching number by up to 43.6%. 展开更多
关键词 Chiller sequencing control Multiple-chiller system Robust control probabilistic machine learning Cooling load prediction
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