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Physics-Based Gaussian Process Method for Predicting Average Product Lifetime in Design Stage

机译:基于物理的高斯工艺方法,用于预测设计阶段的平均产品寿命

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The average lifetime or the mean time to failure (MTTF) of a product is an important metric to measure the product reliability. Current methods of evaluating the MTTF are mainly based on statistics or data. They need lifetime testing on a number of products to get the lifetime samples, which are then used to estimate the MTTF. The lifetime testing, however, is expensive in terms of both time and cost. The efficiency is also low because it cannot be effectively incorporated in the early design stage where many physics-based models are available. We propose to predict the MTTF in the design stage by means of a physics-based Gaussian process (GP) method. Since the physics-based models are usually computationally demanding, we face a problem with both big data (on the model input side) and small data (on the model output side). The proposed adaptive supervised training method with the Gaussian process regression can quickly predict the MTTF with a reduced number of physical model calls. The proposed method can enable continually improved design by changing design variables until reliability measures, including the MTTF, are satisfied. The effectiveness of the method is demonstrated by three examples.
机译:产品的平均寿命或平均故障时间(MTTF)是测量产品可靠性的重要指标。评估MTTF的当前方法主要基于统计数据或数据。它们需要在许多产品上测试终身测试以获得终身样本,然后用于估计MTTF。然而,寿命测试在两次和成本方面都是昂贵的。效率也很低,因为它不能有效地结合在早期设计阶段,其中可获得许多物理的模型。我们建议通过基于物理的高斯过程(GP)方法来预测设计阶段的MTTF。由于基于物理的模型通常需要计算得苛刻,因此我们面临着大数据(在模型输入侧)和小数据(在模型输出侧)的问题。具有高斯进程回归的建议的自适应监督培训方法可以快速预测MTTF,减少数量的物理模型调用。该方法可以通过改变设计变量来实现连续改进的设计,直到满足包括MTTF的可靠性措施,以便在包括MTTF。该方法的有效性由三个例子证明。

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