首页> 外文会议>ASME pressure vessels and piping conference;PVP2009 >A DATAPLOT-PYTHON-ANLAP (DPA) PLUG-IN FOR HIGH TEMPERATURE MECHANICAL PROPERTY DATABASES TO FACILITATE STOCHASTIC MODELING OF FIRE-STRUCTURE INTERACTIONS
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A DATAPLOT-PYTHON-ANLAP (DPA) PLUG-IN FOR HIGH TEMPERATURE MECHANICAL PROPERTY DATABASES TO FACILITATE STOCHASTIC MODELING OF FIRE-STRUCTURE INTERACTIONS

机译:用于高温机械性能数据库的DATAPLOT-PYTHON-ANLAP(DPA)插件,以促进火-结构相互作用的随机建模

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Over the last thirty years, much research has been done on the development and application of failure event databases, NDE databases, and materials property databases for pressure vessels and piping, as reported in two recent symposia: (1) ASME2007 PVP Symposium (in honor of the late Dr. Spencer Bush), San Antonio, Texas, on "Engineering Safety, Applied Mechanics, and Nondestructive Evaluation (NDE)." (2) ASME2008 PVP Symposium, Chicago, Illinois, on "Failure Prevention via Robust Design and Continuous NDE Monitoring." The two symposia concluded that those three types of databases, if properly documented and maintained on a worldwide basis, could hold the key to the continued safe and reliable operation of numerous aging structures including nuclear power or petro-chemical processing plants. During the 2008 symposium, four uncertainty categories associated with causing uncertainty in fatigue life estimates were identified, namely, (1) Uncertainty-1 in failure event databases, (2) Uncertainty-2 in NDE databases, (3) Uncertainty-3 in materials property databases, and (4) Uncertainty-M in crack-growth and damage modeling. In this paper, which is one of a series of four to address all those four uncertainty categories, we address Uncertainty-3 in materials property databases by developing a Dataplot-Python-ANLAP (DPA) plug-in, which automates theuncertainty estimation algorithms of material property test data such that those data can be combined with field NDE data by office engineers to speed up the process of probabilistic damage assessment and remaining life estimation. To illustrate this approach, we describe an example application where several mechanical property data sets of a U.S.-made low-carbon steel (A36) and a proprietary high-strength steel (Class 590 MPa) from Japan, are first computed with uncertainty estimates, and then compared with a traditional calculation without uncertainty for deterministic modeling. Significance of the development of computer plug-ins to facilitate data mining of materials property databases and to assist risk-informed analysis is discussed.
机译:在最近的三十年中,如最近两次研讨会中所报道的那样,已经在故障事件数据库,NDE数据库以及压力容器和管道的材料特性数据库的开发和应用方面进行了大量研究:(1)ASME 2007年PVP研讨会(以已故的Spencer Bush博士为名),在德克萨斯州圣安东尼奥市举行,主题为“工程安全,应用力学和无损评估(NDE)”。 (2)ASME 2008年PVP研讨会,伊利诺伊州芝加哥,主题为“通过稳健的设计和连续的NDE监控预防故障”。两次专题讨论会得出的结论是,这三种类型的数据库,如果得到适当的记录和在全球范围内进行维护,将可能成为包括核电或石化加工厂在内的众多老化结构持续安全可靠运行的关键。在2008年研讨会上,确定了与造成疲劳寿命估计值不确定性相关的四个不确定性类别,即(1)失效事件数据库中的Uncertainty-1,(2)NDE数据库中的Uncertainty-2,(3)材料中的Uncertainty-3属性数据库,以及(4)裂纹扩展和损伤建模中的不确定度M。本文是解决所有这四个不确定性类别的四个系列之一,我们通过开发Dataplot-Python-ANLAP(DPA)插件来解决材料属性数据库中的Uncertainty-3。 材料性能测试数据的不确定性估计算法,以便办公室工程师可以将这些数据与现场NDE数据组合在一起,以加快概率性损害评估和剩余寿命评估的过程。为了说明这种方法,我们描述了一个示例应用,其中首先使用不确定性估算来计算美国制造的低碳钢(A36)和日本专有的高强度钢(590 MPa级)的多个机械性能数据集,然后与没有不确定性的传统计算进行确定性建模的比较。讨论了开发计算机插件对促进材料特性数据库的数据挖掘和协助进行风险分析的意义。

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