2017
DOI: 10.1007/s00542-017-3285-0
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Temperature-dependent free vibration analysis of functionally graded micro-beams based on the modified couple stress theory

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Cited by 40 publications
(31 citation statements)
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“…It is worth noting that the values obtained by the MCS theory in the present study are always greater than the calculated values based on the classical theory. This important observation is consistent with the results obtained by Babaei et al [45] .…”
Section: Couple Stress Effectsupporting
confidence: 94%
“…It is worth noting that the values obtained by the MCS theory in the present study are always greater than the calculated values based on the classical theory. This important observation is consistent with the results obtained by Babaei et al [45] .…”
Section: Couple Stress Effectsupporting
confidence: 94%
“…The MEMS inertial device is mainly composed of a basic beam, spring, and mass block. The MEMS inertial device is easily influenced by temperature, rotation speed, attached mass, instant temperature field, material distribution, geometry, and dimension size [ 97 , 98 , 99 , 100 , 101 , 102 ], resulting in structure stress concentration, thermal stress, unstable resonant frequency, and other adverse phenomena. Therefore, in order to better design the MEMS/NEMS device, it is necessary to consider stress release, temperature insensitivity, geometric structure, scale effect, driving/detection mode, appropriate non-classical parameters, and rod model [ 97 , 98 , 99 , 100 , 101 , 102 ].…”
Section: Discussionmentioning
confidence: 99%
“…During the last decade, improved computing hardware and software has led to the prosperous application of machine learning (ML) in different areas of oil industry such as seismic data, petrophysical analysis including synthetic log generation or prediction [11][12][13][14][15][16][17][18][19][20][21][22][23][24][25], which has shown to be a promising tool to help address their problems in a rigorous, repeatable way. Such methods, by considering various available parameters, can give a better prediction of the missing data than simple linear methods [10,26,27]. ML techniques can be categorized into two main types, known as supervised and unsupervised learning.…”
Section: Introductionmentioning
confidence: 99%