koroush shirvan john clark hardwick (1986) career
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Application of Studsvik Tools to LWR Core Optimization and Advanced Fuels Engineering
Koroush ShirvanJohn Clark Hardwick (1986) Career
Development ProfessorSept 23rd, 2021
About Me• 30+ researchers in NIFT (established
2017) Mostly Graduate Students
• Focus: Integration of disciplines to develop and understand innovative nuclear technologies and their performance.
• Director of Reactor Technology Coursefor Executives (Former MIT CASLEducation Chair)
• Raised >$30 million last 5 years Including Industry: EDF, General
Atomics, FORTUM, Exelon, Lockheed Martin, Exxon
Economics& Licensing
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Thermal Hyd.& Safety
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Reactor Physics
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Structural Mechanics
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System-Level Integration
Center for Nuclear Innovation in Fission Technology [NIFT]
PI: Koroush Shirvan
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MIT Use of STUDSVIK Tools• 2008-Present: C4/S3 – Small Modular Reactor (SMR) Core Design
• 2010-12: C4/S3 /S3K – BWR Assembly and Core Optimization, Stability Analysis
• 2012-14: C4/S3 – S3 vs. full core 2D C4e to Watts Bar plant detector data
• 2012-16: C4/S3/S3K– Advanced Fuel Designs including Thoria-Urania-Plutonia, UO2-BeO, Accident Tolerant Fuels (SiC/Coated/FeCrAl, UN/ U3Si2 Fuels)
• 2013-Present: C4 – Advanced Reactors (Superheated Reactor, Organic Cooled Reactor, Thermal Spectrum Micro-Reactors, CANDU Thoria fuel radial power)
• 2017-Present: S3K – Post-CHF Simulations to support time/temperature criterion
• 2019-Present: C4/S3 – AI Driven PWR/BWR Core/Fuel Optimization [Exelon]
• 2020-Present: C4/S3 – High Burnup/LEU+ (~5-8% Enrichment) Simulations
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Why We Choose Studsvik Package (From My Lecture Slides)
MCNP5 ENDF7 0SERPENT ENDF7 -46SERPENT ENDF6 -166SERPENT JEFF2 -128
CASMO4e ENDF6 -640CASMO5 ENDF7* -42
NEWT ENDF7 -423NEWT ENDF6 -779
KENO-C ENDF7 +38KENO ENDF7 -516
DRAGON -ENDF7 -52
* The units are in PCM difference from MCNP5 ENDF7* CASMO models physics not existent in MCNP5 (C5 Simulation turned off these models)* All Monte Carlo values are less than 0.01% delta K/K * KENO-C = KENO-VI with Continuous energy library* Mesh convergence not achievable in NEWT
CASMO4 NEWT KENO DRAGON MCNP5/X SERPENT5 sec 8 minutes 17 minutes 40 sec 2.5 days 20 hours
*Single 2.6 GHz node on Linux operating machine
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Impact of Fuel on Probability of Failure SiC-cladded fuel performance during normal operation
He Y., et al.,
Topfuel, 2019
Prob
abili
ty o
f Lea
king
C4/S3 ~109 x
faster than CASL Tools
FRPACON-MIT
~105 x faster than BISON
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Value of Best Estimate • Our analysis showed noticeable gain
in margin when performing best estimate Rod Ejection Analysis (REA) for selected advanced fuels using S3K Studsvik tool. similar gains to best estimate
LOCA
• Traditional best estimate REA analysis involves sensitivity analysis & uncertainty quantification Requires fast running, multi-
physics, pin-resolved ROBUST reactor transient simulator package
REA Simulation for 4L-W PWR with Studsvik’s S3K
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AI-Driven Nuclear Fuel Reload Optimization with C4/S3• Why Use ML/AI Instead of Other Algorithms?
50! (~3 x 1064) Possibility for Fuel Patterns Hard to explain problems: if it was easy, we would have
gotten the optimum solution Challenge: Enterprise Risk of Defective Nuclear Fuel is
Very High: < 5 Thousands of Percent Solution: C4/S3• Expert Knowledge is Limited
• Contracting different fuel vendor (Different fuel products)
• Change of Cycle Length (Market pressure may shorten or lengthen cycle length)
• Greater than 5% Enrichment and Higher Burnups (Lower front/backend fuel cycle cost)
Motivates Development of Physics-Based
Continual Learning & Efficient
Optimization Routine
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Optimization with Reinforcement Learning (RL)
Radaideh & Shirvan, Knowledge-Based Systems, 2021https://doi.org/10.1016/j.knosys.2021.106836
Expert Rules for Successful Fuel Design
Incorporation of physics-based game tactics was key to the success of AI
Currently undergoing testing on Exelon Machines for few PWR and BWR Plants usingC4/S3 as Physics Packages
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Why Not AI/ML for the Physics?!
Training Prediction (Unseen Data)
https://arxiv.org/abs/2104.09499
Current Implementation
in S3
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High Burnup Fuel Impact• As burnup increases beyond
current limit of 62 MWD/kgUpeak average rod, the fuel performance feedback becomes stronger Plenum Pressure AO, CIPS, CILC Requires ROBUST multi-
physics fast running tool package to perform optimization
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Shirvan K., TopFuel, 2021
Final Remarks• Speed and Accuracy provided by Studsvik tools are critical for their use for
Education and Research at Universities Ease in licensing tremendously helps with use in university environment. Compatibility with Windows/Linux (several architectures) Major downside relative to other available packages is the yearly fee
• MIT Reactor Design Research Groups have utilized CASMO4/SIMULATE3 package extensively mainly for Light Water Reactor Applications
• As industry moves to higher burnup cores, ATFs and new operational modes, more automation and tighter multi-physics coupling will be needed.
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Shirvan Research Experience and Capability
Category Industry/ Auditing
Advanced M&S
Reactor Physics
STUDSVIK/PARCS SERPENT
Thermal-Hydraulics
VIPRE STARCCM
COBRA-TF
Safety/System RELAP5/ TRACE --
Fuel Performance
ABAQUS/ FRAPCON
BISONIn-House
Severe Accident
MAAP/ MELCOR --
Economics EEDB In-House
Experimental FacilitiesCategory Facilities (incl. Shared)
Corrosion 1500oC Steam*
High Pressure
Autoclave*
Thermal-Hydraulics
Quench Facility*
SEM/EDS/FIB/XPS
Strength/ Fatigue
Instron/4-point bend*
Burst/Plug*
Irradiation PSFC Ion Beam*
MIT Reactor*
Post Irradiation Examination
Furnace/ Instron* SEM/EDS*
*Capable of handling rad materials
Modeling and Simulation Network/Funding Profolio
Ability to Integrate Disciplines to Accelerate R&D and Explore Cost Reduction Innovations
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Annual Cost of Existing U.S Nuclear Plants
• ~$70 million in regulation cost and half in NRC fees [American Action Forum Study]
• ~$5-10 million loss per year can result in shutdown and loss of >1GWe of carbon free electricity Adding 25 million tons of CO2
annuallyAccident Tolerant
Fuel
Digital Twins
AI
Modeling and Simulation
Opportunities
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Replace Physics with AI/ML (1)
Training Prediction (Unseen Data)
https://arxiv.org/abs/2104.09499
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Replace Physics with AI/ML (2)
Surrogate Training time [s](training size 9128)
Runtime [µs](on a single rod)
Runtime Acceleration(FRAPCON runtime / surrogate
runtime)LUT - 186.910 3.103E+04PLS 0.0288 0.102 5.686E+07SVR 224.867 128.082 4.528E+04
*SVR 0.0318 5.636 1.029E+06GP 930.980 1778.278 3.262E+03
*GP 4.233 167.316 3.466E+04NN-1layer 8.361 14.333 4.047E+05NN-2layer 10.496 16.389 3.539E+05NN-3layer 12.351 18.821 3.082E+05
RF 67.915 95.513 6.072E+04XGB 36.077 12.138 4.778E+05
**Combined surrogate ~ 63.160 472.277 1.228E+04
*GP and *SVR are trained on a smaller training set with 300 samples from the space-filling design**The combined surrogate composes of the best surrogates for prediction of all QoIs at the same time.
https://arxiv.org/abs/2104.09499
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