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周勇

硕士生导师
教师姓名:周勇
教师英文名称:zhouyong
教师拼音名称:zhouyong
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所在单位:管理学院
学历:研究生(博士)毕业
性别:男
联系方式:zhouyong@xauat.edu.cn
学位:博士学位
职称:副教授
在职信息:在职
其他任职:绿色建筑全国重点实验室太阳能建筑与环境骨干成员
学科:管理科学与工程    
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论文成果
A novel combined multi-task learning and Gaussian process regression model for the prediction of multi-timescale and multi-component of solar radiation
发布时间:2024-08-09    点击次数:

所属单位:管理学院

发表刊物:Journal of Cleaner Production

摘要:A novel combined multi-task learning and Gaussian process regression (MTGPR) model is proposed to predict the multi-time scale (daily and monthly mean daily) and multi-component (global and diffuse) solar radiation simultaneously. Compared to conventional Gaussian process regression (GPR) which can only be used for specific solar radiation component prediction on a specific timescale, the MTGPR can utilize the correlated information between different tasks to improve the model generalization and accuracy. Meteorological data from ten stations in China were used to train and validate the GPR and MTGPR models for daily global, monthly mean daily global, daily diffuse and monthly mean daily diffuse solar radiation prediction. The results showed that the GPR and MTGPR models are highly accurate in estimating daily and monthly mean daily solar radiation with coefficient of determination (R2), root mean square error (RMSE), relative root mean square error (rRMSE) and mean bias error (MBE) of GPR in ranges of 0.4623e0.9892, 0.5542e4.1591 MJm?2d?1, 4.70e39.75% and ?1.1750e1.5347 MJm?2d?1, respectively. Because the MTGPR learned the intercorrelated information between different tasks, compared to GPR models, the MTGPR models performed better. For daily prediction, the average R2, RMSE and rRMSE of the MTGPR improved by 0.19e0.48%, 0.57e0.65% and 0.51e0.52%, respectively. In terms of monthly mean daily prediction, the corresponding values of MTGPR improved by 2.62e2.65%, 5.50e12.07% and 5.21e12.08%, respectively. This paper provides a compact guide for the simultaneous prediction of combined parameters.

合写作者:德格吉日夫

第一作者:王莹莹,刘晓君,李勇,王登甲,刘艳峰,周勇

论文类型:期刊论文

卷号:124710

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发表时间:2021-02-15