Experimental Study on Rubbing Failure of Tilting Pad Bearing in Heavy Duty Gas Turbine

Yongzhi Feng, Yushu Chen, Ning Yu, Fangang Meng, Qian Jia, Xiaoyang Yuan
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Abstract

Aiming at the rubbing fault of tilting pad sliding bearing of heavy gas turbine, acoustic emission sensor, eddy current sensor and acceleration sensor are used as measuring means to observe the rubbing phenomenon between tilting pad and journal. The rubbing test is carried out on the gas turbine molded rotor-tilting pad bearing test bench. In the test, the failure phenomenon of tilting pad bearing segment instability is simulated. In the test, the segment will periodically rub against the journal, and the swing frequency of the failed segment is about 0.5 times of the rotation frequency of the journal. The test results show that the rubbing frequency of the faulty segment and journal is also about 0.5 times of the rotating frequency, and the rubbing position is at the edge of segment. According to the intensity of acoustic emission signals at different measuring points, the position of the fault segment can be judged.
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重型燃气轮机倾斜垫轴承摩擦失效试验研究
针对重型燃气轮机倾垫滑动轴承的摩擦故障,采用声发射传感器、涡流传感器和加速度传感器作为测量手段,观察倾垫与轴颈之间的摩擦现象。在燃气轮机模压转子倾垫轴承试验台上进行了摩擦试验。在试验中,模拟了可倾垫轴承段失稳的破坏现象。在试验中,管片会周期性地与轴颈摩擦,失效管片的摆动频率约为轴颈旋转频率的0.5倍。试验结果表明,故障管片与轴颈的摩擦频率也约为旋转频率的0.5倍,且摩擦位置位于管片边缘。根据不同测点的声发射信号强度,可以判断断层段的位置。
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