endurance limit. b) assuming full notch sensitivity, estimate the number of cycles to failure.

Mechanics of Materials (MindTap Course List)
9th Edition
ISBN:9781337093347
Author:Barry J. Goodno, James M. Gere
Publisher:Barry J. Goodno, James M. Gere
Chapter11: Columns
Section: Chapter Questions
Problem 11.3.21P: A pinned-end strut of aluminum (E = 10,400 ksi) with a length L = 6 ft is constructed of circular...
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A 2-in-diameter solid round bar has a groove 0.1-in deep with a 0.1-in radius machined
into it. The bar is made of AISI 1020 CD steel (Su = 78 kpsi) and is subjected to a purely
reversing axial load of 55.2 lbf. The bar is placed in an environment with a temperature of
650°F. Consider a reliability of 99.9% and assuming f = 0.82. Estimate the fully corrected
endurance limit. b) assuming full notch sensitivity, estimate the number of cycles to failure.
d= 1-8*
Transcribed Image Text:A 2-in-diameter solid round bar has a groove 0.1-in deep with a 0.1-in radius machined into it. The bar is made of AISI 1020 CD steel (Su = 78 kpsi) and is subjected to a purely reversing axial load of 55.2 lbf. The bar is placed in an environment with a temperature of 650°F. Consider a reliability of 99.9% and assuming f = 0.82. Estimate the fully corrected endurance limit. b) assuming full notch sensitivity, estimate the number of cycles to failure. d= 1-8*
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