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Enhancing source domain availability through data and feature transfer learning for building power load forecasting
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作者 Fanyue Qian Yingjun Ruan +2 位作者 Huiming Lu Hua Meng Tingting Xu 《Building Simulation》 SCIE EI CSCD 2024年第4期625-638,共14页
During the initial phases of operation following the construction or renovation of existing buildings,the availability of historical power usage data is limited,which leads to lower accuracy in load forecasting and hi... During the initial phases of operation following the construction or renovation of existing buildings,the availability of historical power usage data is limited,which leads to lower accuracy in load forecasting and hinders normal usage.Fortunately,by transferring load data from similar buildings,it is possible to enhance forecasting accuracy.However,indiscriminately expanding all source domain data to the target domain is highly likely to result in negative transfer learning.This study explores the feasibility of utilizing similar buildings(source domains)in transfer learning by implementing and comparing two distinct forms of multi-source transfer learning.Firstly,this study focuses on the Higashita area in Kitakyushu City,Japan,as the research object.Four buildings that exhibit the highest similarity to the target buildings within this area were selected for analysis.Next,the two-stage TrAdaBoost.R^(2) algorithm is used for multi-source transfer learning,and its transfer effect is analyzed.Finally,the application effects of instance-based(IBMTL)and feature-based(FBMTL)multi-source transfer learning are compared,which explained the effect of the source domain data on the forecasting accuracy in different transfer modes.The results show that combining the two-stage TrAdaBoost.R^(2) algorithm with multi-source data can reduce the CV-RMSE by 7.23%compared to a single-source domain,and the accuracy improvement is significant.At the same time,multi-source transfer learning,which is based on instance,can better supplement the integrity of the target domain data and has a higher forecasting accuracy.Overall,IBMTL tends to retain effective data associations and FBMTL shows higher forecasting stability.The findings of this study,which include the verification of real-life algorithm application and source domain availability,can serve as a theoretical reference for implementing transfer learning in load forecasting. 展开更多
关键词 building power load multi-source transfer learning two-stage TrAdaBoost.R2 source domain availability
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大功率柴油机和气体机可变气门技术 被引量:1
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作者 刘秋颖 王伟才 Christoph Mathey 《铁道机车车辆》 北大核心 2011年第B10期56-62,共7页
针对大功率发动机和燃气机,为提高进气控制的灵活性ABB涡轮增压系统有限公司提出了一种新型可变气门正时系统。介绍了这种可变气门正时系统的设计、试验和市场应用潜力的预期。
关键词 可变气门正时 VVT 两级增压 米勒正时 瞬态特性
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