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首页> 外文期刊>International Journal of Reliability, Quality and Safety Engineering >PROBABILITY VERSUS STATISTICAL MODELING: EXAMPLES FROM FATIGUE LIFE PREDICTION
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PROBABILITY VERSUS STATISTICAL MODELING: EXAMPLES FROM FATIGUE LIFE PREDICTION

机译:概率与统计建模:以疲劳寿命预测为例

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摘要

Probability analyses are increasingly being used for reliability and durability ments for life prediction of engineered components and systems. Nevertheless, many of the current analyses are predominately statistical rather than probabilistic. Fatigue life prediction has historically been based on the safe-life or the crack growth approaches, both of which are empirically based. Consequently, they do not adequately reflect long-term operating conditions, or identify the sources and extent of their contributions to variability. A comparison between probability and statistical approaches for fatigue life prediction is developed herein. Using simple crack growth models, the variability inherent in S-N response can be related to key random variables that are readily identified in the models. The identification and quantification of these variables are paramount for predicting fatigue lives. The effectiveness of probability modeling compared to statistical methodologies is shown through the analysis of an extensive set of S-N data for 2024-T4 aluminum alloy. Subsequently, the probability approach is demonstrated with S-N data for SUJ2 steel, in which two distinct failure modes are operative. Variability associated with manufacturing and material variables are considered. The adoption of this technique to put life prediction on a sound scientific and probabilistic basis is recommended.
机译:概率分析越来越多地用于可靠性和耐用性,以预测工程组件和系统的寿命。尽管如此,许多当前的分析主要是统计性的,而不是概率性的。疲劳寿命的预测历来是基于安全寿命或裂纹扩展方法,这两种方法都是基于经验的。因此,它们不足以反映长期的工作条件,也无法确定其对可变性的影响的来源和程度。本文开发了疲劳寿命预测的概率方法和统计方法之间的比较。使用简单的裂纹扩展模型,S-N响应固有的可变性可以与模型中易于识别的关键随机变量相关。这些变量的识别和量化对于预测疲劳寿命至关重要。通过对2024-T4铝合金的大量S-N数据进行分析,显示了概率模型与统计方法相比的有效性。随后,用SU-J2钢的S-N数据证明了概率方法,其中两种不同的失效模式是可操作的。考虑与制造和材料变量相关的可变性。建议采用此技术将生命预测置于合理的科学和概率基础上。

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