非线性系统
可靠性(半导体)
应用数学
数学
计算机科学
可靠性工程
物理
工程类
功率(物理)
量子力学
作者
Barron Bichon,Michael Eldred,Laura Painton Swiler,Sankaran Mahadevan,John McFarland
出处
期刊:AIAA Journal
[American Institute of Aeronautics and Astronautics]
日期:2008-10-01
卷期号:46 (10): 2459-2468
被引量:865
摘要
Many engineering applications are characterized by implicit response functions that are expensive to evaluate and sometimes nonlinear in their behavior, making reliability analysis difficult. This paper develops an efficient reliability analysis method that accurately characterizes the limit state throughout the random variable space. The method begins with a Gaussian process model built from a very small number of samples, and then adaptively chooses where to generate subsequent samples to ensure that the model is accurate in the vicinity of the limit state. The resulting Gaussian process model is then sampled using multimodal adaptive importance sampling to calculate the probability of exceeding (or failing to exceed) the response level of interest. By locating multiple points on or near the limit state, more complex and nonlinear limit states can be modeled, leading to more accurate probability integration. By concentrating the samples in the area where accuracy is important (i.e., in the vicinity of the limit state), only a small number of true function evaluations are required to build a quality surrogate model. The resulting method is both accurate for any arbitrarily shaped limit state and computationally efficient even for expensive response functions. This new method is applied to a collection of example problems including one that analyzes the reliability of a microelectromechanical system device that current available methods have difficulty solving either accurately or efficiently.
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