Open Source Software: SR2ML: Pioneering Safety and Reliability in Nuclear Plant Management
In an industry where safety and efficiency are paramount, SR2ML (SafetyRiskReliabilityModelLibrary) emerges as a transformative software package designed to interface seamlessly with the RAVEN code developed by INL. This powerful toolset enables static and dynamic risk analysis, offering unparalleled insights into system reliability and operational guidelines to enhance the long-term viability of the U.S. reactor fleet.
As the nuclear power sector strives to remain competitive, reducing Operation and Maintenance (O&M) costs while ensuring safety and reliability has become a critical challenge. Traditional approaches to balance these aspects over decades of operation have laid the groundwork for innovative solutions. SR2ML represents a leap forward, combining classical and cutting-edge models to address these challenges head-on, facilitating a new era of optimized plant management.
SR2ML provides a comprehensive suite of safety and reliability analysis models, including classical reliability models like Fault-Trees and Markov and advanced components aging models. These models are designed for integration into the RAVEN ensemble for dynamic system reliability analysis and can interface with system analysis codes for detailed failure and accident progression evaluations. Through machine learning and quantitative methods, SR2ML empowers operators with dynamic behavior emulation and decision-making tools, driving down O&M costs while enhancing plant safety and efficiency.
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Discover how SR2ML can transform your nuclear plant operations. Download now and learn how integrating SR2ML into your management strategy can lead to safer, more efficient, cost-effective plant operations.
INL’s Technology Deployment department focuses exclusively on licensing intellectual property and partnering with industry collaborators capable of commercializing our innovations. Our goal is to commercialize the technologies developed by INL researchers. We do not engage in purchasing, manufacturing, procurement decisions, or providing funding. Additionally, this is not a call for external services to assist in the development of this technology.