论文成果
Resilience Evaluation Method for Compressor Stations Based on Markov Processes
摘要:Gas transmission pipeline compressor stations serve as a crucial component within the entirety of the natural gas transport system, with their stability being directly tied to the security and consistency of natural gas supply. In the event of external disturbances and internal faults, these compressor stations must exhibit a high level of resilience, defined by their ability to resist shocks and recover swiftly from such incidents. To this end, the present study has established an evaluation framework based on continuous-time Markov processes, which aims to quantitatively analyze and assess the resilience of compressor station facilities. Within this framework, the study initially employs continuous-time Markov processes to model the state transitions of compressor station facilities, thereby capturing the behavior of stations and the probabilities of state transitions under various operational conditions and external perturbations. Stemming from this, the paper further delineates three core evaluative indices, which, when collectively assessed, facilitate a comprehensive quantification of the resilience level of a compressor station. These indices provide a scientific foundation for the design optimization, operational management, and emergency response planning of compressor stations. This research offers a fresh perspective and tools for the achievement of stable and sustainable operation within pipeline gas transmission systems. ? 2025 SPIE.
ISSN号:0277-786X
卷、期、页:卷13513
发表日期:2025-01-01
期刊分区(SCI为中科院分区):无
收录情况:EI(工程索引)
发表期刊名称:Proceedings of SPIE - The International Society for Optical Engineering
参与作者:高国尹
通讯作者:何倩,彭世亮,何宇轩
第一作者:杨兆铭,苏怀,张劲军
论文类型:会议论文
论文概要:何倩,彭世亮,高国尹,杨兆铭,何宇轩,苏怀,张劲军,Resilience Evaluation Method for Compressor Stations Based on Markov Processes,Proceedings of SPIE - The International Society for Optical Engineering,2025,卷13513
论文题目:Resilience Evaluation Method for Compressor Stations Based on Markov Processes
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