Assessing the Reliability of Complex Models: Assessing the Reliability of Complex Models:

Assessing the Reliability of Complex Models‪:‬

Mathematical and Statistical Foundations of Verification, Validation, and Uncertainty Quantification

    • US$33.99
    • US$33.99

출판사 설명

Advances in computing hardware and algorithms have dramatically improved the ability to simulate complex processes computationally. Today's simulation capabilities offer the prospect of addressing questions that in the past could be addressed only  by resource-intensive experimentation, if at all. Assessing the Reliability of Complex Models recognizes the ubiquity of uncertainty in computational estimates of reality and the necessity for its quantification. As computational science and engineering have matured, the process of quantifying or bounding uncertainties in a computational estimate of a physical quality of interest has evolved into a small set of interdependent tasks: verification, validation, and uncertainty of quantification (VVUQ). In recognition of the increasing importance of computational simulation and the increasing need to assess uncertainties in computational results, the National Research Council was asked to study the mathematical foundations of VVUQ and to recommend steps that will ultimately lead to improved processes. Assessing the Reliability of Complex Models discusses changes in education of professionals and dissemination of information that should enhance the ability of future VVUQ practitioners to improve and properly apply VVUQ methodologies to difficult problems, enhance the ability of VVUQ customers to understand VVUQ results and use them to make informed decisions, and enhance the ability of all VVUQ stakeholders to communicate with each other. This report is an essential resource for all decision and policy makers in the field, students, stakeholders, UQ experts, and VVUQ educators and practitioners.

장르
과학 및 자연
출시일
2012년
6월 26일
언어
EN
영어
길이
131
페이지
출판사
National Academies Press
판매자
National Academy of Sciences
크기
2.1
MB
Large-Scale Inverse Problems and Quantification of Uncertainty Large-Scale Inverse Problems and Quantification of Uncertainty
2011년
Interpretability for Industry 4.0 : Statistical and Machine Learning Approaches Interpretability for Industry 4.0 : Statistical and Machine Learning Approaches
2022년
Analytic Methods in Systems and Software Testing Analytic Methods in Systems and Software Testing
2018년
Supervision and Safety of Complex Systems Supervision and Safety of Complex Systems
2012년
Frontiers in Statistical Quality Control 10 Frontiers in Statistical Quality Control 10
2012년
Proceedings of the Pacific Rim Statistical Conference for Production Engineering Proceedings of the Pacific Rim Statistical Conference for Production Engineering
2018년