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Bayesian Optimization for Field-Scale Geological Carbon Storage 被引量:1
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作者 Xueying Lu Kirk E.Jordan +2 位作者 Mary F.Wheeler edward o.pyzer-knapp Matthew Benatan 《Engineering》 SCIE EI CAS 2022年第11期96-104,共9页
We present a framework that couples a high-fidelity compositional reservoir simulator with Bayesian optimization(BO)for injection well scheduling optimization in geological carbon sequestration.This work represents on... We present a framework that couples a high-fidelity compositional reservoir simulator with Bayesian optimization(BO)for injection well scheduling optimization in geological carbon sequestration.This work represents one of the first at tempts to apply BO and high-fidelity physics models to geological carbon storage.The implicit parallel accurate reservoir simulator(IPARS)is utilized to accurately capture the underlying physical processes during CO_(2)sequestration.IPARS provides a framework for several flow and mechanics models and thus supports both stand-alone and coupled simulations.In this work,we use the compositional flow module to simulate the geological carbon storage process.The compositional flow model,which includes a hysteretic three-phase relative permeability model,accounts for three major CO_(2)trapping mechanisms:structural trapping,residual gas trapping,and solubility trapping.Furthermore,IPARS is coupled to the International Business Machines(IBM)Corporation Bayesian Optimization Accelerator(BOA)for parallel optimizations of CO_(2)injection strategies during field-scale CO_(2)sequestration.BO builds a probabilistic surrogate for the objective function using a Bayesian machine learning algorithm-the Gaussian process regression,and then uses an acquisition function that leverages the uncertainty in the surrogate to decide where to sample.The IBM BOA addresses the three weaknesses of standard BO that limits its scalability in that IBM BOA supports parallel(batch)executions,scales better for high-dimensional problems,and is more robust to initializations.We demonstrate these merits by applying the algorithm in the optimization of the CO_(2)injection schedule in the Cranfield site in Mississippi,USA,using field data.The optimized injection schedule achieves 16%more gas storage volume and 56%less water/surfactant usage compared with the baseline.The performance of BO is compared with that of a genetic algorithm(GA)and a covariance matrix adaptation(CMA)-evolution strategy(ES).The results demonstrate the superior performance of BO,in that it achieves a competitive objective function value with over 60%fewer forward model evaluations. 展开更多
关键词 Compositional flow Bayesian optimization Geological carbon storage CCUS Machine learning AI for science
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Accelerating materials discovery using artificial intelligence, high performance computing and robotics 被引量:7
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作者 edward o.pyzer-knapp Jed W.Pitera +6 位作者 Peter W.J.Staar Seiji Takeda Teodoro Laino Daniel P.Sanders James Sexton John R.Smith Alessandro Curioni 《npj Computational Materials》 SCIE EI CSCD 2022年第1期767-775,共9页
New tools enable new ways of working,and materials science is no exception.In materials discovery,traditional manual,serial,and human-intensive work is being augmented by automated,parallel,and iterative processes dri... New tools enable new ways of working,and materials science is no exception.In materials discovery,traditional manual,serial,and human-intensive work is being augmented by automated,parallel,and iterative processes driven by Artificial Intelligence (AI),simulation and experimental automation.In this perspective,we describe how these new capabilities enable the acceleration and enrichment of each stage of the discovery cycle.We show,using the example of the development of a novel chemically amplified photoresist,how these technologies’ impacts are amplified when they are used in concert with each other as powerful,heterogeneous workflows. 展开更多
关键词 artificial COMPUTING enable
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A multi-fidelity machine learning approach to high throughput materials screening
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作者 Clyde Fare Peter Fenner +2 位作者 Matthew Benatan Alessandro Varsi edward o.pyzer-knapp 《npj Computational Materials》 SCIE EI CSCD 2022年第1期2453-2461,共9页
The ever-increasing capability of computational methods has resulted in their general acceptance as a key part of the materials design process.Traditionally this has been achieved using a so-called computational funne... The ever-increasing capability of computational methods has resulted in their general acceptance as a key part of the materials design process.Traditionally this has been achieved using a so-called computational funnel,where increasingly accurate-and expensive–methodologies are used to winnow down a large initial library to a size which can be tackled by experiment.In this paper we present an alternative approach,using a multi-output Gaussian process to fuse the information gained from both experimental and computational methods into a single,dynamically evolving design.Common challenges with computational funnels,such as mis-ordering methods,and the inclusion of non-informative steps are avoided by learning the relationships between methods on the fly.We show this approach reduces overall optimisation cost on average by around a factor of three compared to other commonly used approaches,through evaluation on three challenging materials design problems. 展开更多
关键词 HAS approach LEARNING
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