Research on stochastic resonance method in fractional-order tristable systems

IF 1.9 4区 物理与天体物理 Q2 PHYSICS, MULTIDISCIPLINARY
Pramana Pub Date : 2025-04-11 DOI:10.1007/s12043-025-02901-y
Qiang Ma, Ran Peng, Zhichong Wang, Kai Yang
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引用次数: 0

Abstract

We introduce an innovative approach to fractional-order tristable stochastic resonance (SR), utilising the advantages of temporal memory and spatial correlation inherent in fractional-order systems while harnessing the non-saturating properties of tristable SR mechanisms. First, we derived the fractional-order tristable Langevin equation and studied the SR phenomenon within this system across key parameters, such as the fractional-order α, system parameters and external periodic force, within the α range of (0,2]. We identified the optimal resonance region through this analysis. Second, to achieve adaptive fractional-order SR and effectively handle high-frequency and experimental signals, we introduced a standard scale transformation method along with the butterfly optimisation algorithm. Finally, through verification with simulation signals, laboratory data and experimental data from the outer race fault of an aircraft engine’s intermediate shaft bearing, we demonstrated that our proposed method could efficiently extract weak fault characteristic signals from environments with strong noise. Comparative analysis with traditional tristable SR methods and the empirical mode decomposition algorithm showed that signals extracted using our method exhibited larger characteristic frequency amplitudes and higher signal-to-noise ratios (SNR).

分数阶三稳系统随机共振方法的研究
我们引入了一种创新的方法来研究分数阶三稳定随机共振(SR),利用分数阶系统固有的时间记忆和空间相关性的优势,同时利用三稳定随机共振机制的不饱和特性。首先,我们推导了分数阶三稳态Langevin方程,并在α(0,2)范围内研究了分数阶α、系统参数和外部周期力等关键参数在该系统内的SR现象。通过这一分析,我们确定了最佳共振区域。其次,为了实现自适应分数阶SR,有效处理高频信号和实验信号,我们引入了标准尺度变换方法和蝴蝶优化算法。最后,通过某航空发动机中间轴轴承外套圈故障的仿真信号、实验室数据和实验数据验证,表明该方法可以有效地从强噪声环境中提取出微弱的故障特征信号。与传统三稳SR方法和经验模态分解算法的对比分析表明,该方法提取的信号具有更大的特征频率幅值和更高的信噪比。
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来源期刊
Pramana
Pramana 物理-物理:综合
CiteScore
3.60
自引率
7.10%
发文量
206
审稿时长
3 months
期刊介绍: Pramana - Journal of Physics is a monthly research journal in English published by the Indian Academy of Sciences in collaboration with Indian National Science Academy and Indian Physics Association. The journal publishes refereed papers covering current research in Physics, both original contributions - research papers, brief reports or rapid communications - and invited reviews. Pramana also publishes special issues devoted to advances in specific areas of Physics and proceedings of select high quality conferences.
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