Shen Hao, Lv Yufan, Kong Yun, Han Qinkai, Chen Ke, Geng Zhibo, Dong Mingming, Chu Fulei
School of Mechanical Engineering, Beijing Institute of Technology, Beijing 100081, China.
School of Engineering, University of Edinburgh, Edinburgh EH9 3FB, UK.
Sensors (Basel). 2024 Nov 28;24(23):7618. doi: 10.3390/s24237618.
Monitoring the dynamic behaviors of self-aligning roller bearings (SABs) is vital to guarantee the stability of various mechanical systems. This study presents a novel self-powered, intelligent, and self-aligning roller bearing (I-SAB) with which to monitor rotational speeds and bias angles; it also has an application in fault diagnosis. The designed I-SAB is compactly embedded with a novel sweep-type triboelectric nanogenerator (TENG). The TENG is realized within the proposed I-SAB using a comb-finger electrode pair and a flannelette triboelectric layer. A floating, sweeping, and freestanding mode is utilized, which can prevent collisions and considerably enhance the operational life of the embedded TENG. Experiments are subsequently conducted to optimize the output performance and sensing sensitivity of the proposed I-SAB. The results of a speed-sensing experiment show that the characteristic frequencies of triboelectric current and voltage signals are both perfectly proportional to the rotational speed, indicating that the designed I-SAB has the self-sensing capability for rotational speed. Additionally, as both the bias angle and rotational speed of the SAB increase, the envelope amplitudes of the triboelectric voltage signals generated by the I-SAB rise at a rate of 0.0057 V·deg·rpm. To further demonstrate the effectiveness of the triboelectric signals emitted from the designed I-SAB in terms of self-powered fault diagnosis, a Multi-Scale Discrimination Network (MSDN), based on the ResNet18 architecture, is proposed in order to classify the various fault conditions of the SAB. Using the triboelectric voltage and current signals emitted from the designed I-SAB as inputs, the proposed MSDN model yields excellent average diagnosis accuracies of 99.8% and 99.1%, respectively, indicating its potential for self-powered fault diagnosis.
监测调心滚子轴承(SAB)的动态行为对于确保各种机械系统的稳定性至关重要。本研究提出了一种新型的自供电、智能调心滚子轴承(I-SAB),用于监测转速和偏角;它还可应用于故障诊断。所设计的I-SAB紧凑地嵌入了一种新型的扫掠式摩擦纳米发电机(TENG)。该TENG是在提出的I-SAB中利用梳齿电极对和绒布摩擦电层实现的。采用了浮动、扫掠和独立模式,这可以防止碰撞并显著提高嵌入式TENG的使用寿命。随后进行了实验以优化所提出的I-SAB的输出性能和传感灵敏度。转速传感实验结果表明,摩擦电流和电压信号的特征频率均与转速完美成正比,表明所设计的I-SAB具有转速自传感能力。此外,随着SAB的偏角和转速增加,I-SAB产生的摩擦电压信号的包络幅度以0.0057 V·deg·rpm的速率上升。为了进一步证明所设计的I-SAB发出的摩擦电信号在自供电故障诊断方面的有效性,提出了一种基于ResNet18架构的多尺度判别网络(MSDN),用于对SAB的各种故障状态进行分类。以所设计的I-SAB发出的摩擦电压和电流信号作为输入,所提出的MSDN模型分别产生了99.8%和99.1%的出色平均诊断准确率,表明其在自供电故障诊断方面的潜力。