RISS 학술연구정보서비스

검색
다국어 입력

http://chineseinput.net/에서 pinyin(병음)방식으로 중국어를 변환할 수 있습니다.

변환된 중국어를 복사하여 사용하시면 됩니다.

예시)
  • 中文 을 입력하시려면 zhongwen을 입력하시고 space를누르시면됩니다.
  • 北京 을 입력하시려면 beijing을 입력하시고 space를 누르시면 됩니다.
닫기
    인기검색어 순위 펼치기

    RISS 인기검색어

      Thermodynamically Consistent Physics-Informed Data-Driven Computing and Reduced-Order Modeling of Nonlinear Materials.

      한글로보기

      https://www.riss.kr/link?id=T16618083

      • 저자
      • 발행사항

        Ann Arbor : ProQuest Dissertations & Theses, 2022

      • 학위수여대학

        University of California, San Diego Structural Engineering

      • 수여연도

        2022

      • 작성언어

        영어

      • 주제어
      • 학위

        Ph.D.

      • 페이지수

        236 p.

      • 지도교수/심사위원

        Advisor: Chen, Jiun-Shyan.

      • 0

        상세조회
      • 0

        다운로드
      서지정보 열기
      • 내보내기
      • 내책장담기
      • 공유하기
      • 오류접수

      부가정보

      다국어 초록 (Multilingual Abstract) kakao i 다국어 번역

      Physical simulations have influenced the advancements in engineering, technology, and science more rapidly than ever before. However, it remains challenging for effective and efficient modeling of complex linear and nonlinear material systems based on phenomenological approaches which require predefined functional forms. The goal of this dissertation is to enhance the predictivity and efficiency of physical simulations by developing thermodynamically consistent data-driven computing and reduced-order materials modeling methods based on emerging machine learning techniques for manifold learning, dimensionality reduction, sequence learning, and system identification.For reversible mechanical systems, we first develop a new data-driven material solver built upon local convexity-preserving reconstruction to capture anisotropic material behaviors and enable data-driven modeling of nonlinear anisotropic elastic solids. A material anisotropic state characterizing the underlying material orientation is introduced for the manifold learning projection in the material solver. To counteract the curse of dimensionality and enhance the generalization ability of data-driven computing, we employ deep autoencoders to discover the underlying low-dimensional manifold of material database and integrate a convexity-preserving interpolation scheme into the novel autoencoder-based data-driven solver to further enhance efficiency and robustness of data searching and reconstruction during online data-driven computation. The proposed approach is shown to achieve enhanced efficiency and generalization ability over a few commonly used data-driven schemes.For irreversible mechanical systems, we develop a thermodynamically consistent machine learned data-driven constitutive modeling approach for path-dependent materials based on measurable material states, where the internal state variables essential to the material path-dependency are inferred automatically from the hidden state of recurrent neural networks. The proposed method is shown to successfully model soil behaviors under cyclic shear loading using experimental stress-strain data.Lastly, we develop a non-intrusive accurate and efficient reduced-order model based on physics-informed adaptive greedy latent space dynamics identification (gLaSDI) for general high-dimensional nonlinear dynamical systems. An autoencoder and dynamics identification models are trained simultaneously to discover intrinsic latent space and learn expressive governing equations of simple latent-space dynamics. To maximize and accelerate the exploration of the parameter space for optimal model performance, an adaptive greedy sampling algorithm integrated with a physics-informed residual-based error indicator and random-subset evaluation is introduced to search for optimal training samples on the fly, which outperforms the conventional predefined uniform sampling. Compared with the high-fidelity models of various nonlinear dynamical problems, gLaSDI achieves 66 to 4,417x speed-up with 1 to 5% relative errors.
      번역하기

      Physical simulations have influenced the advancements in engineering, technology, and science more rapidly than ever before. However, it remains challenging for effective and efficient modeling of complex linear and nonlinear material systems based o...

      Physical simulations have influenced the advancements in engineering, technology, and science more rapidly than ever before. However, it remains challenging for effective and efficient modeling of complex linear and nonlinear material systems based on phenomenological approaches which require predefined functional forms. The goal of this dissertation is to enhance the predictivity and efficiency of physical simulations by developing thermodynamically consistent data-driven computing and reduced-order materials modeling methods based on emerging machine learning techniques for manifold learning, dimensionality reduction, sequence learning, and system identification.For reversible mechanical systems, we first develop a new data-driven material solver built upon local convexity-preserving reconstruction to capture anisotropic material behaviors and enable data-driven modeling of nonlinear anisotropic elastic solids. A material anisotropic state characterizing the underlying material orientation is introduced for the manifold learning projection in the material solver. To counteract the curse of dimensionality and enhance the generalization ability of data-driven computing, we employ deep autoencoders to discover the underlying low-dimensional manifold of material database and integrate a convexity-preserving interpolation scheme into the novel autoencoder-based data-driven solver to further enhance efficiency and robustness of data searching and reconstruction during online data-driven computation. The proposed approach is shown to achieve enhanced efficiency and generalization ability over a few commonly used data-driven schemes.For irreversible mechanical systems, we develop a thermodynamically consistent machine learned data-driven constitutive modeling approach for path-dependent materials based on measurable material states, where the internal state variables essential to the material path-dependency are inferred automatically from the hidden state of recurrent neural networks. The proposed method is shown to successfully model soil behaviors under cyclic shear loading using experimental stress-strain data.Lastly, we develop a non-intrusive accurate and efficient reduced-order model based on physics-informed adaptive greedy latent space dynamics identification (gLaSDI) for general high-dimensional nonlinear dynamical systems. An autoencoder and dynamics identification models are trained simultaneously to discover intrinsic latent space and learn expressive governing equations of simple latent-space dynamics. To maximize and accelerate the exploration of the parameter space for optimal model performance, an adaptive greedy sampling algorithm integrated with a physics-informed residual-based error indicator and random-subset evaluation is introduced to search for optimal training samples on the fly, which outperforms the conventional predefined uniform sampling. Compared with the high-fidelity models of various nonlinear dynamical problems, gLaSDI achieves 66 to 4,417x speed-up with 1 to 5% relative errors.

      더보기

      분석정보

      View

      상세정보조회

      0

      Usage

      원문다운로드

      0

      대출신청

      0

      복사신청

      0

      EDDS신청

      0

      동일 주제 내 활용도 TOP

      더보기

      주제

      연도별 연구동향

      연도별 활용동향

      연관논문

      연구자 네트워크맵

      공동연구자 (7)

      유사연구자 (20) 활용도상위20명

      이 자료와 함께 이용한 RISS 자료

      나만을 위한 추천자료

      해외이동버튼