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Verification of Recursive Probabilistic Integration (RPI) Method for Fatigue Life Management using Non-Destructive Inspections

机译:使用非破坏性检查验证疲劳寿命管理的递归概率积分(RPI)方法

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This paper verified a generic and efficient assessment concept for probabilistic fatigue life management. The concept is developed based on an integration of damage tolerance methodology, simulations methods, and a probabilistic algorithm RPI (recursive probability integration)3'9 considering maintenance for damage tolerance and risk-based fatigue life management. RPI is an efficient semi-analytical probabilistic method for risk assessment subjected to various uncertainties such as the variability in material properties including crack growth rate, initial flaw size, repair quality, random process modeling of flight loads for failure analysis, and inspection reliability represented by probability of detection (POD). In addition, unlike traditional Monte Carlo simulations (MCS) which requires a rerun of MCS when maintenance plan is changed, RPI can repeatedly use a small set of baseline random crack growth histories excluding maintenance related parameters from a single MCS for various maintenance plans. In order to fully appreciate the RPI method, a verification procedure was performed. In this study, MC simulations in the orders of several hundred billions were conducted for various flight conditions, material properties, and inspection scheduling, POD and repair/replacement strategies. Since the MC simulations are time-consuming methods, the simulations were conducted parallelly on DoD High Performance Computers (HPC) using a specialized random number generator for parallel computing. The study has shown that RPI method is several orders of magnitude more efficient than traditional Monte Carlo simulations.
机译:本文验证了概率疲劳寿命管理的通用有效评估概念。该概念是基于损伤容限方法,仿真方法和概率算法RPI(递归概率积分)3'9的综合发展而来的,其中考虑了对损伤容限和基于风险的疲劳寿命管理的维护。 RPI是一种风险评估的高效半分析概率方法,它受到各种不确定性的影响,例如材料特性的可变性,包括裂纹扩展率,初始缺陷尺寸,修复质量,用于故障分析的飞行载荷随机过程建模以及由以下各项代表的检查可靠性:检测概率(POD)。此外,与传统的蒙特卡洛模拟(MCS)要求在更改维护计划时重新运行MCS不同,RPI可以反复使用一小组基准随机裂纹扩展历史记录,从单个MCS中排除与维护相关的参数以用于各种维护计划。为了充分理解RPI方法,执行了验证过程。在这项研究中,针对各种飞行条件,材料特性,检查计划,POD和维修/更换策略,进行了数千亿次的MC仿真。由于MC仿真是耗时的方法,因此使用专用的随机数生成器在DoD高性能计算机(HPC)上并行进行仿真,以进行并行计算。研究表明,RPI方法比传统的蒙特卡洛模拟效率高几个数量级。

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