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SAMDAILY.US - ISSUE OF MARCH 17, 2024 SAM #8146
SPECIAL NOTICE

44 -- Open Source Software: SR2ML: Pioneering Safety and Reliability in Nuclear Plant Management

Notice Date
3/15/2024 11:26:05 AM
 
Notice Type
Special Notice
 
NAICS
221113 — Nuclear Electric Power Generation
 
Contracting Office
BATTELLE ENERGY ALLIANCE�DOE CNTR Idaho Falls ID 83415 USA
 
ZIP Code
83415
 
Response Due
3/15/2026 8:00:00 AM
 
Archive Date
03/30/2026
 
Point of Contact
Andrew Rankin
 
E-Mail Address
andrew.rankin@inl.gov
(andrew.rankin@inl.gov)
 
Description
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. Advantages Optimized Plant Operations: Enables data-driven decision-making for preventive maintenance and component refurbishment, minimizing O&M costs. Advanced Risk Analysis: Integrates classical and innovative models for comprehensive safety and economic risk assessments. Dynamic System Modeling: Offers deterministic and stochastic models to predict system and component behavior accurately. Cost-Effective Maintenance Strategies: Identifies optimal operational guidelines to balance reliability, safety, and cost-efficiency. Seamless Integration: Designed to work with RAVEN and LOGOS for a unified analysis platform, enhancing decision-making processes. Applications Nuclear Plant Management: Streamlining O&M strategies to enhance reliability and safety while reducing costs. Risk Assessment: Conducting detailed risk analysis to inform strategic decision-making regarding plant operations. System Reliability Analysis: Employing dynamic analysis to predict and mitigate potential system failures. Economic Optimization: Integrating economic models to prioritize actions that maximize plant availability and profitability. 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.
 
Web Link
SAM.gov Permalink
(https://sam.gov/opp/8292125f62094ddebc2cbc5d1beb7ed9/view)
 
Place of Performance
Address: Idaho Falls, ID 83401, USA
Zip Code: 83401
Country: USA
 
Record
SN06998422-F 20240317/240315230044 (samdaily.us)
 
Source
SAM.gov Link to This Notice
(may not be valid after Archive Date)

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