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A methodology for evaluating system-level uncertainty in the conceptual design of complex multidisciplinary systems.

机译:在复杂的多学科系统的概念设计中评估系统级不确定性的方法。

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摘要

Conceptual design is the early stage of system design, when little is precisely known about the physical description of a new system. One of the goals in conceptual design is to aggregate all current corporate knowledge about the new design and exhaustively search the feasible design space to find potential designs that best meet the design's requirements and satisfies its constraints. In the conceptual design stage, simplified models are often created in preference to more complex models to permit the rapid assessment of many designs that cover the entire feasible design space. Uncertainty in the assessment of a potential design may result from uncertainty in the inputs to the design, such as sizes, weights, efficiencies, or costs. The use of simplified models may also introduce additional uncertainty, termed model uncertainty, due to the reduction in the number of parameters used to describe the system or due to incorrect relationships between parameters. A metamodel is a "model of a model" and can be used as a computationally efficient approximation to a computer model such as a finite element analysis. Kriging models are a type of metamodel that can interpolate their observations and provide a probability distribution of the output that quantifies the model uncertainty. Kriging models are created as simplified models from observations of detailed subsystem models. A Monte Carlo simulation (MCS) based methodology is developed to permit the specification of arbitrary probability distributions of the inputs to the system design using a hierarchy of kriging models. Through the use of kriging models, the model uncertainty introduced can also be quantified along with the input uncertainties' impact on the system performance measurements. This methodology is demonstrated on a satellite design problem composed of three subsystems. These results are compared to those found using original computer models in the MCS system uncertainty assessment. This methodology enables the computationally efficient use of MCS with simple random sampling to estimate the resulting uncertainty of the system's performance parameters given the probability distribution of the system inputs and the uncertainty introduced by using approximations to the original deterministic computer models.
机译:概念设计是系统设计的早期阶段,当时对新系统的物理描述一无所知。概念设计的目标之一是汇总有关新设计的所有当前公司知识,并详尽搜索可行的设计空间,以找到最能满足设计要求并满足其约束条件的潜在设计。在概念设计阶段,通常会创建简化模型而不是更复杂的模型,以允许快速评估涵盖整个可行设计空间的许多设计。潜在设计评估的不确定性可能来自设计输入的不确定性,例如尺寸,重量,效率或成本。由于用于描述系统的参数数量的减少或由于参数之间的错误关系,简化模型的使用还可能引入额外的不确定性,称为模型不确定性。元模型是“模型的模型”,可以用作计算机模型(例如有限元分析)的高效计算近似。克里金模型是一种元模型,可以对观测值进行插值,并提供量化模型不确定性的输出概率分布。根据详细子系统模型的观察结果,克里格模型被创建为简化模型。开发了基于蒙特卡洛模拟(MCS)的方法,以允许使用kriging模型的层次结构指定输入到系统设计的任意概率分布。通过使用克里金模型,引入的模型不确定性也可以随输入不确定性对系统性能测量的影响进行量化。这种方法论是在由三个子系统组成的卫星设计问题上得到证明的。将这些结果与在MCS系统不确定性评估中使用原始计算机模型发现的结果进行比较。这种方法可以在给定系统输入的概率分布和通过使用近似于原始确定性计算机模型的不确定性的情况下,通过简单的随机采样有效地利用MCS来估计系统性能参数的不确定性。

著录项

  • 作者

    Martin, Jay D.;

  • 作者单位

    The Pennsylvania State University.;

  • 授予单位 The Pennsylvania State University.;
  • 学科 Engineering Mechanical.
  • 学位 Ph.D.
  • 年度 2005
  • 页码 222 p.
  • 总页数 222
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 机械、仪表工业;
  • 关键词

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