Centre for VLSI and Nanotechnology, VNIT Nagpur, Nagpur 440010, India.
Sensors (Basel). 2020 Jan 6;20(1):319. doi: 10.3390/s20010319.
The vibration monitoring of ball bearings of a rotating machinery is a crucial aspect for smooth functioning and sustainability of plants. The wireless vibration monitoring using conventional Nyquist sampling techniques is costly in terms of power consumption, as it generates lots of data that need to be processed. To overcome this issue, compressive sensing (CS) can be employed, which directly acquires the signal in compressed form and hence reduces power consumption. The compressive measurements so generated can easily be transmitted to the base station and the original signal can be recovered there using CS reconstruction algorithms to diagnose the faults. However, the CS reconstruction is very costly in terms of computational time and power. Hence, this conventional CS framework is not suitable for diagnosing the machinery faults in real time. In this paper, a bearing condition monitoring framework is presented based on compressed signal processing (CSP). The CSP is a newer research area of CS, in which inference problems are solved without reconstructing the original signal back from compressive measurements. By omitting the reconstruction efforts, the proposed method significantly improves the time and power cost. This leads to faster processing of compressive measurements for solving the required inference problems for machinery condition monitoring. This gives a way to diagnose the machinery faults in real-time. A comparison of proposed scheme with the conventional method shows that the proposed scheme lowers the computational efforts while simultaneously achieving the comparable fault classification accuracy.
旋转机械的滚动轴承振动监测对于工厂的平稳运行和可持续性至关重要。使用传统奈奎斯特采样技术的无线振动监测在功耗方面成本高昂,因为它会生成大量需要处理的数据。为了克服这个问题,可以采用压缩感知 (CS),它直接以压缩形式获取信号,从而降低功耗。生成的压缩测量值可以轻松传输到基站,并使用 CS 重建算法在那里恢复原始信号,以诊断故障。然而,CS 重建在计算时间和功耗方面非常昂贵。因此,这种传统的 CS 框架不适用于实时诊断机器故障。在本文中,提出了一种基于压缩信号处理 (CSP) 的轴承状态监测框架。CSP 是 CS 的一个新研究领域,其中通过不将原始信号从压缩测量值中重建回来解决推理问题。通过省略重建工作,所提出的方法显著降低了时间和功耗成本。这使得处理压缩测量值以解决机器状态监测所需的推理问题更快。这为实时诊断机器故障提供了一种方法。所提出的方案与传统方法的比较表明,所提出的方案降低了计算工作量,同时实现了可比的故障分类准确性。