Global sensitivity analysis via multi-fidelity polynomial chaos expansion

Reliability Engineering & System Safety - Tập 170 - Trang 175-190 - 2018
Pramudita Satria Palar1,2, Lavi Rizki Zuhal1, Koji Shimoyama2, Takeshi Tsuchiya3
1Bandung Institute of Technology, Jl. Ganesha No. 10, Bandung, Indonesia
2Tohoku University, Sendai, Miyagi Prefecture 980-8577, Japan
3University of Tokyo, Tokyo 113-8656, Japan

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Tài liệu tham khảo

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