Int J Performability Eng ›› 2019, Vol. 15 ›› Issue (1): 230-240.doi: 10.23940/ijpe.19.01.p23.230240
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Zhiwu Shang(), Xia Liu, Xiangxiang Liao, Rui Geng, Maosheng Gao, and Jintian Yun
Revised on
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Accepted on
Contact:
Shang Zhiwu
E-mail:shangzhiwu@126.com
Zhiwu Shang, Xia Liu, Xiangxiang Liao, Rui Geng, Maosheng Gao, and Jintian Yun. Rolling Bearing Fault Diagnosis Methodbased on EEMD and GBDBN [J]. Int J Performability Eng, 2019, 15(1): 230-240.
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Table 1
Data description of rolling bearings"
States of the rolling bearing | Numbers of training data | Numbers of testing data | Classification label |
---|---|---|---|
Normal | 80 | 20 | 1 |
0.007-inner-ring-fault | 80 | 20 | 2 |
0.007-ball-fault | 80 | 20 | 3 |
0.007-outer-ring-fault-6 | 80 | 20 | 4 |
0.007-outer-ring-fault-3 | 80 | 20 | 5 |
0.007-outer-ring-fault-12 | 80 | 20 | 6 |
0.021-inner-ring-fault | 80 | 20 | 7 |
0.021-ball-fault-fault | 80 | 20 | 8 |
0.021-outer-ring-fault-6 | 80 | 20 | 9 |
0.028-inner-ring-fault | 80 | 20 | 10 |
0.028-ball-fault -fault | 80 | 20 | 11 |
0.028-outer-ring-fault-6 | 80 | 20 | 12 |
Table 2
Part of the IMF’s statistical features"
Feature | IMF1 | IMF5 | IMF9 |
---|---|---|---|
Maximum value | 0.066067 | 0.023866 | 0.002001 |
Average value | 3.337e-05 | -0.00166 | -0.00037 |
Peak to peak | 0.134285 | 0.051006 | 0.003444 |
Root mean square root | 0.028894 | 0.012619 | 0.000824 |
Kurtosis | 1.840338 | 2.110486 | 3.257759 |
Waveform factor | 865.9293 | -7.61671 | -2.24890 |
Peak factor | 4.647441 | 4.041924 | 4.178347 |
Kurtosis factor | 2640199 | 83224912 | 7.057e12 |
Pulse factor | 5.304240 | 4.703455 | 5.000333 |
Margin factor | 5.873662 | 5.278838 | 5.684202 |
Table 3
Experimental results"
Number of experiments | Recognition rate of BPNN | Recognition rate of DBN | Recognition rate of GBDBN |
---|---|---|---|
1 | 88.33% | 89.17% | 90.94% |
2 | 80.26% | 85.83% | 90.21% |
3 | 81.62% | 85.83% | 90.63% |
4 | 86.25% | 87.08% | 90.00% |
5 | 84.11% | 84.58% | 90.63% |
6 | 86.67% | 88.75% | 91.35% |
7 | 87.92% | 89.17% | 90.31% |
8 | 85.00% | 88.92% | 91.36% |
9 | 86.83% | 86.67% | 90.33% |
10 | 82.95% | 85.42% | 90.25% |
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