...
首页> 外文期刊>Reliability Engineering & System Safety >A framework for probabilistic model-based engineering and data synthesis
【24h】

A framework for probabilistic model-based engineering and data synthesis

机译:基于概率模型的工程和数据综合的框架

获取原文
获取原文并翻译 | 示例

摘要

Modern computing resources provide scientists, engineers, and system design teams the ability to study phenomena, such as system behavior, in a virtual setting. Computational modeling and simulation (M&S) enables engineers to avoid many of the challenges encountered in traditional design engineering, including the design, manufacture, and testing of expensive prototypes prior to having an optimized design. However, the use of M&S carries its own challenges, such as the computational time and resources required to execute effective studies, and uncertainties arising from simplifying assumptions inherent to computer models, which are intended to be an approximate representation of reality. In recent year advances have been made in a number of areas related to the efficient and reliable use of M&S for system evaluations, including design & analysis of computer experiments, uncertainty quantification, probabilistic analysis, response optimization, and data synthesis techniques. In this review paper, a general framework for systematically executing efficient M&S studies at the component-level, product-level, system-level, and system-of-systems-level is described. A case study is used to demonstrate how statistical and probabilistic techniques can be integrated with M&S to address those challenges inherent to model-based engineering, and how this aligns with the proposed workflow. The example is a gun-launch dynamics model of an artillery projectile developed by US Army engineers, and illustrates the application of this workflow in the study of subsystem system reliability, performance, and end-to-end system-level characterization.
机译:现代计算资源使科学家,工程师和系统设计团队能够在虚拟环境中研究现象,例如系统行为。计算建模与仿真(M&S)使工程师能够避免传统设计工程中遇到的许多挑战,包括在设计优化之前进行昂贵原型的设计,制造和测试。但是,M&S的使用面临着自身的挑战,例如执行有效研究所需的计算时间和资源,以及简化计算机模型固有的假设所带来的不确定性,这些不确定性旨在逼近现实。近年来,在有效和可靠地使用M&S进行系统评估的许多领域都取得了进展,包括计算机实验的设计和分析,不确定性量化,概率分析,响应优化和数据合成技术。在这篇综述文章中,描述了在组件级,产品级,系统级和系统级上系统地执行有效的M&S研究的通用框架。案例研究用于说明如何将统计和概率技术与M&S集成在一起,以解决基于模型的工程固有的挑战,以及这如何与建议的工作流程保持一致。该示例是由美国陆军工程师开发的炮弹发射器动力学模型,并说明了该工作流程在子系统系统可靠性,性能和端到端系统级特征研究中的应用。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号