张弛

个人信息Personal Information

教授

博士生导师

硕士生导师

任职 : 副校长、党委常委

性别:男

毕业院校:大连理工大学

学位:博士

所在单位:建设工程学院

学科:水文学及水资源. 人工智能. 计算机应用技术. 软件工程

办公地点:综合实验4号楼 411室

联系方式:0411-84708900

电子邮箱:czhang@dlut.edu.cn

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A two stage Bayesian stochastic optimization model for cascaded hydropower systems considering varying uncertainty of flow forecasts

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论文类型:期刊论文

发表时间:2014-12-01

发表刊物:WATER RESOURCES RESEARCH

收录刊物:SCIE、Scopus

卷号:50

期号:12

页面范围:9267-9286

ISSN号:0043-1397

摘要:This paper presents a new Two Stage Bayesian Stochastic Dynamic Programming (TS-BSDP) model for real time operation of cascaded hydropower systems to handle varying uncertainty of inflow forecasts from Quantitative Precipitation Forecasts. In this model, the inflow forecasts are considered as having increasing uncertainty with extending lead time, thus the forecast horizon is divided into two periods: the inflows in the first period are assumed to be accurate, and the inflows in the second period assumed to be of high uncertainty. Two operation strategies are developed to derive hydropower operation policies for the first and the entire forecast horizon using TS-BSDP. In this paper, the newly developed model is tested on China's Hun River cascade hydropower system and is compared with three popular stochastic dynamic programming models. Comparative results show that the TS-BSDP model exhibits significantly improved system performance in terms of power generation and system reliability due to its explicit and effective utilization of varying degrees of inflow forecast uncertainty. The results also show that the decision strategies should be determined considering the magnitude of uncertainty in inflow forecasts. Further, this study confirms the previous finding that the benefit in hydropower generation gained from the use of a longer horizon of inflow forecasts is diminished due to higher uncertainty and further reveals that the benefit reduction can be substantially mitigated through explicit consideration of varying magnitudes of forecast uncertainties in the decision-making process.