Reliablity Analysis for Design

2000-01-01
Goulter, Ian
Walski, Thomas M
Mays, Larry W.
Altan Sakarya, Ayşe Burcu
Bouchart, Francious
Tung, Y. K.

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Citation Formats
I. Goulter, T. M. Walski, L. W. Mays, A. B. Altan Sakarya, F. Bouchart, and Y. K. Tung, “Reliablity Analysis for Design,” pp. 1–52, 2000, Accessed: 00, 2021. [Online]. Available: https://hdl.handle.net/11511/79050.