Difference analysis and recognition of hydraulic oscillation by two types of sudden faults on long-distance district heating pipeline

Energy - Tập 284 - Trang 128696 - 2023
Jingjing Yan1, Huan Zhang1,2, Yaran Wang1,2, Zhaozhe Zhu3, He Bai3, Qicheng Li3, Lijun Zheng4, Xinyong Gao4, Shijun You1,2
1School of Environmental Science and Engineering, Tianjin University, Tianjin 300072, PR China
2Tianjin Key Lab of Biomass/Wastes Utilization, Tianjin 300350, PR China
3Tianjin Cheng'an Thermal Power Co., Ltd, Tianjin, 300204, PR China
4Huadian Electric Power Research Institute Co., Ltd, Hangzhou, 310030, PR China

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