C
Chuang Xiong
Researcher at Beihang University
Publications - 7
Citations - 328
Chuang Xiong is an academic researcher from Beihang University. The author has contributed to research in topics: Interval (mathematics) & Reliability (statistics). The author has an hindex of 7, co-authored 7 publications receiving 257 citations.
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A dimension-wise method and its improvement for multidisciplinary interval uncertainty analysis
TL;DR: Results indicate that the presented iterative dimension-wise method has a superiority in uncertainty propagation problems of multidisciplinary issues.
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An iterative dimension-by-dimension method for structural interval response prediction with multidimensional uncertain variables
TL;DR: IDDM seeks the minimum and maximum points of the uncertain variables dimension-by-dimension and updates the nominal value of other uncertain variables through an iterative process and is efficient for structural interval uncertainty analysis, especially for problems with multidimensional uncertain variables.
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Sequential multidisciplinary design optimization and reliability analysis under interval uncertainty
TL;DR: A sequential multidisciplinary design optimization and reliability analysis method under non-probabilistic theory is developed to decouple the reliability analysis from the optimization.
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Hybrid time-variant reliability estimation for active control structures under aleatory and epistemic uncertainties
TL;DR: A new definition of the hybrid time-variant reliability measurement is provided for the vibration control systems and the related solution details are further expounded.
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A novel methodology of sequential optimization and non-probabilistic time-dependent reliability analysis for multidisciplinary systems
Lei Wang,Chuang Xiong +1 more
TL;DR: In the framework of SMO_NTRA, the deterministic MDO and non-probabilistic time-dependent reliability analysis are executed in a sequential manner, and the computationally expensive double level optimization problem can be avoided and the efficiency can be greatly improved.