Affiliation:
1. College of Automation Engineering, Shanghai University of Electric Power, Shanghai 200090, China
2. Shanghai Key Laboratory of Power Station Automation Technology, Shanghai 200090, China
Abstract
The Markov method is a common reliability assessment method. It is often used to describe the dynamic characteristics of a system, such as its repairability, fault sequence and multiple degradation states. However, the “curse of dimensionality”, which refers to the exponential growth of the system state space with the increase in system complexity, presents a challenge to reliability assessments for complex systems based on the Markov method. In response to this challenge, a novel reliability assessment method for complex systems based on non-homogeneous Markov processes is proposed. This method entails the decomposition of a complex system into multilevel subsystems, each with a relatively small state space, in accordance with the system function. The homogeneous Markov model or the non-homogeneous Markov model is established for each subsystem/system from bottom to top. In order to utilize the outcomes of the lower-level subsystem models as inputs to the upper-level subsystem model, an algorithm is proposed for converting the unavailability curve of a subsystem into its corresponding 2×2 dynamic state transition probability matrix (STPM). The STPM is then employed as an input to the upper-level system’s non-homogeneous Markov model. A case study is presented using the reliability assessment of the Reactor Protection System (RPS) based on the proposed method, which is then compared with the models based on the other two contrast methods. This comparison verifies the effectiveness and accuracy of the proposed method.
Funder
Shanghai Sailing Program
Shanghai Rising-Star Program
Reference32 articles.
1. International Atomic Energy Agency (2010). Development and Application of Level 1 Probabilistic Safety Assessment for Nuclear Power Plants, IAEA. IAEA Safety Standards Series No. SSG-3.
2. Pan, X., Di Maio, F., and Zio, E. (2017, January 20–22). A Benchmark of Dynamic Reliability Methods for Probabilistic Safety Assessment. Proceedings of the 2017 2nd International Conference on System Reliability and Safety (ICSRS), Milan, Italy.
3. Dynamic PRA Prospects for the Nuclear Industry;Wiltbank;Front. Energy Res.,2021
4. A Benchmark System for Comparing Reliability Modeling Approaches for Digital Instrumentation and Control Systems;Kirschenbaum;Nucl. Technol.,2009
5. A Comprehensive Review on Dynamic Risk Analysis Methodologies;Raveendran;J. Loss Prev. Proc.,2022