Fatigue strength estimation is a costly manual material characterization process in which state-of-the-art approaches follow a standardized experiment and analysis procedure. In this paper, we examine a modular, Machine Learning-based approach for fatigue strength estimation that is likely to reduce the number of experiments and, thus, the overall experimental costs. Despite its high potential, deployment of a new approach in a real-life lab requires more than the theoretical definition and simulation. Therefore, we study the robustness of the approach against misspecification of the prior and discretization of the specified loads. We identify its applicability and its advantageous behavior over the state-of-the-art methods, potentially reducing the number of costly experiments.
翻译:法蒂格强度估计是一个昂贵的人工材料定性过程,最先进的方法遵循标准化试验和分析程序。在本文件中,我们研究了一种模块化的机能学习法,用于疲劳强度估计,这有可能减少实验数量,从而减少总体实验费用。尽管潜力很大,但在现实生活中实验室采用新方法比理论定义和模拟要多。因此,我们研究该方法的稳健性,以防止对特定负荷的先前和离散性作出错误的区分。我们确定其适用性及其对最新方法的有利行为,有可能减少费用昂贵的实验数量。