Stochastic resonance in an underdamped system with FitzHug-Nagumo potential for weak signal detection
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Stochastic resonance in an underdamped system with FitzHug-Nagumo potential for weak signal detection

机译:具有FITZHUG-NAGUMO潜力弱信号检测潜力的欠压系统的随机共振

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AbstractVibration signals are widely used for bearing fault detection and diagnosis. When signals are acquired in the field, usually, the faulty periodic signal is weak and is concealed by noise. Various de-noising methods have been developed to extract the target signal from the raw signal. Stochastic resonance (SR) is a technique that changed the traditional denoising process, in which the weak periodic fault signal can be identified by adding an expression, the potential, to the raw signal and solving a differential equation problem. However, current SR methods have some deficiencies such us limited filtering performance, low frequency input signal and sequential search for optimum parameters. Consequently, in this study, we explore the application of SR based on the FitzHug-Nagumo (FHN) potential in rolling bearing vibration signals. Besides, we improve the search of the SR optimum parameters by the use of particle swarm optimization (PSO). The effectiveness of the proposed method is verified by using both simulated and real bearing data sets.]]>
机译:<![CDATA [ 抽象 振动信号广泛用于轴承故障检测和诊断。当在现场获取信号时,通常,故障的周期性信号较弱并且被噪声隐藏。已经开发了各种去噪方法来从原始信号中提取目标信号。随机共振(SR)是一种改变传统的去噪过程的技术,其中可以通过将表达式,电位增加到原始信号和解决微分方程问题来识别弱周期性故障信号。然而,目前的SR方法具有一些缺陷,如此有限的过滤性能,低频输入信号和顺序搜索,以获得最佳参数。因此,在本研究中,我们根据滚动轴承振动信号的Fitzhug-Nagumo(FHN)电位探讨SR的应用。此外,我们通过使用粒子群优化(PSO)来改善SR最佳参数的搜索。通过使用模拟和真实的轴承数据集来验证所提出的方法的有效性。 ]]>

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