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单电子回旋辐射
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作者 周书华 patrick huber 《物理》 北大核心 2015年第6期383-383,共1页
由来自美国和德国的科学家组成的合作组正在进行一项称作Project 8的实验,探测做轨道转动的单个电子发出的辐射频率。这一频率,从而电子的能量,可以非常精确地测量。如果能够进一步提高能量分辨率,Project 8实验可能成为一种新的测量中... 由来自美国和德国的科学家组成的合作组正在进行一项称作Project 8的实验,探测做轨道转动的单个电子发出的辐射频率。这一频率,从而电子的能量,可以非常精确地测量。如果能够进一步提高能量分辨率,Project 8实验可能成为一种新的测量中微子质量的方法。 展开更多
关键词 电子回旋辐射 高能量分辨率 辐射频率 中微子质量 科学家 实验 测量
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Data-driven comparison of federated learning and model personalization for electric load forecasting
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作者 Fabian Widmer Severin Nowak +2 位作者 Benjamin Bowler patrick huber Antonios Papaemmanouil 《Energy and AI》 2023年第4期3-16,共14页
Residential short-term electric load forecasting is essential in modern decentralized power systems.Load forecasting methods mostly rely on neural networks and require access to private and sensitive electric load dat... Residential short-term electric load forecasting is essential in modern decentralized power systems.Load forecasting methods mostly rely on neural networks and require access to private and sensitive electric load data for model training.Conventional neural network training aggregates all data on a centralized server to train one global model.However,the aggregation of user data introduces security and data privacy risks.In contrast,this study investigates the modern neural network training methods of federated learning and model personalization as potential solutions to security and data privacy problems.Within an extensive simulation approach,the investigated methods are compared to the conventional centralized method and a pre-trained baseline predictor to compare their respective performances.This study identifies that the underlying data structure of electric load data has a significant influence on the loss of a model.We therefore conclude that a comparison of loss distributions will in fact be considered a comparison of data structures,rather than a comparison of the model performance.As an alternative method of comparison of loss values,this study develops the"differential comparison".The method allows for the isolated comparison of model loss differences by only comparing the losses of two models generated by the same data sample to build a distribution of differences.The differential comparison method was then used to identify model personalization as the best performing model training method for load forecasting among all analyzed methods,with a superior performance in 59.1%of all cases. 展开更多
关键词 Federated learning Machine learning Model personalization Temporal convolutional network Electric load forecast Differential comparison
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