Song Xiangrong, Sun Dongyang, Liang Xuefeng
School of Naval Architecture and Ocean Engineering, Jiangsu University of Science and Technology, Zhenjiang 212003, China.
College of Aerospace Engineering, Chongqing University, Chongqing 400044, China.
Materials (Basel). 2023 Aug 26;16(17):5854. doi: 10.3390/ma16175854.
For the deterioration model of a material, it is crucial to design a validation experiment to determine the ability of the deterioration model to simulate the actual deterioration process. In this paper, a design method of a validation experiment for a deterioration model is proposed to obtain the experiment scheme with low cost and satisfactory credibility. First, a normalized area metric based on probability density functions for the deterioration model is developed for validation results quantification. Normalized area metrics of different state variables in an engineering system can be applied to a unified evaluation standard. In particular, kernel density estimation is used to obtain smooth probability density functions from discrete experimental data, which can reduce the systematic error of the validation metric. Furthermore, a design method for the validation experiment for the deterioration model is proposed, in which the number of experimental samples and observation moments in each experimental sample are design variables, while the credibility of the validation experiment is the constraint. For the experiment design, the problem with varying dimensions of design variables occurred in the optimal design. Thus, a collaborative optimization method using the Latin hypercube sampling was developed to solve this problem. Finally, the results of the two examples showed the characteristics of the proposed metric and also reflected the correlation between the design variables and experimental credibility.
对于材料的劣化模型,设计一个验证实验以确定劣化模型模拟实际劣化过程的能力至关重要。本文提出了一种劣化模型验证实验的设计方法,以获得低成本且具有令人满意可信度的实验方案。首先,基于劣化模型的概率密度函数开发了一种归一化面积度量,用于验证结果的量化。工程系统中不同状态变量的归一化面积度量可应用于统一的评估标准。特别是,核密度估计用于从离散实验数据中获得平滑的概率密度函数,这可以减少验证度量的系统误差。此外,提出了一种劣化模型验证实验的设计方法,其中每个实验样本中的实验样本数量和观测时刻为设计变量,而验证实验的可信度为约束条件。对于实验设计,在优化设计中出现了设计变量维度变化的问题。因此,开发了一种使用拉丁超立方抽样的协同优化方法来解决这个问题。最后,两个例子的结果展示了所提出度量的特点,也反映了设计变量与实验可信度之间的相关性。