Wojciech Żuławiński, Jerome Antoni, Radosław Zimroz, Agnieszka Wyłomańska
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引用次数: 0
Abstract
We address the issue of detecting hidden periodicity when the signal exhibits periodic correlation, but is additionally affected by non-Gaussian noise with unknown characteristics. This scenario is common in various applications. The conventional approach for identifying periodically correlated (PC) behavior involves the frequency domain-based analysis. In our investigation, we also employ such an approach; however, we use a robust version of the discrete Fourier transform incorporating the Huber function-based M-estimation, unlike the classical algorithm. Building upon this approach, we propose robust coherent and incoherent statistics originally designed to identify hidden periodicity in pure PC models. The novelty of this paper lies in introducing robust coherent and incoherent statistics through the application of the robust discrete Fourier transform in classical algorithms and proposing a new technique for period estimation based on the proposed methodology. We explore two types of PC models and two types of additive noise, resulting in PC signals disturbed by non-Gaussian additive noise. Detecting hidden periodicity in such cases proves to be significantly more challenging than in classical scenarios. Through Monte Carlo simulations, we demonstrate the effectiveness of the proposed robust approaches and their superiority over classical. To further substantiate our findings, we analyze three datasets in which hidden periodicity had previously been confirmed in the literature. Among them, two datasets correspond to the condition monitoring area, being a main motivation of our research.
我们要解决的问题是,当信号表现出周期相关性,但又受到具有未知特性的非高斯噪声影响时,如何检测隐藏的周期性。这种情况在各种应用中都很常见。识别周期相关(PC)行为的传统方法涉及基于频域的分析。在我们的研究中,我们也采用了这种方法;不过,与经典算法不同的是,我们使用的是离散傅里叶变换的稳健版本,其中包含基于休伯函数的 M 估计。在这种方法的基础上,我们提出了稳健的相干和非相干统计方法,其初衷是识别纯 PC 模型中隐藏的周期性。本文的新颖之处在于通过在经典算法中应用稳健离散傅立叶变换,引入稳健相干和非相干统计,并基于所提出的方法提出了一种新的周期估计技术。我们探讨了两种 PC 模型和两种加性噪声,结果是 PC 信号受到非高斯加性噪声的干扰。事实证明,在这种情况下检测隐藏的周期性要比传统的情况更具挑战性。通过蒙特卡罗模拟,我们证明了所提出的稳健方法的有效性及其优于传统方法的优势。为了进一步证实我们的研究结果,我们分析了之前在文献中证实了隐藏周期性的三个数据集。其中,两个数据集与状态监测领域相对应,这也是我们研究的主要动机。
期刊介绍:
The aim of the EURASIP Journal on Advances in Signal Processing is to highlight the theoretical and practical aspects of signal processing in new and emerging technologies. The journal is directed as much at the practicing engineer as at the academic researcher. Authors of articles with novel contributions to the theory and/or practice of signal processing are welcome to submit their articles for consideration.