论文标题
数据驱动的信号分解方法:比较分析
Data-driven Signal Decomposition Approaches: A Comparative Analysis
论文作者
论文摘要
信号分解(SD)方法旨在将非平稳信号分解为其组成振幅和频率调制的组件。这代表了许多实际的信号处理管道中的重要预处理步骤,为数据和相关的基础系统提供了有用的知识和洞察力,同时还促进了诸如噪声或伪影删除和特征提取等任务。流行的SD方法主要是数据驱动的,努力获得固有的良好行为良好的信号组件,而无需对输入数据做出许多先前的假设。在这些方法中,包括经验模式分解(EMD)和变体,变化模式分解(VMD)和变体,同步转换(SST)以及变体以及滑动奇异频谱分析(SSA)。随着这些方法在广泛应用中的日益普及和效用,必须更好地理解和深入了解这些算法的运行,在输入数据中评估它们的准确性,并在输入数据中使用噪声,并评估其对算法参数变化的敏感性。在这项工作中,我们通过涉及精心设计的合成和现实生活的广泛实验来实现这些任务。根据我们的实验观察,我们评论了所考虑的SD算法的利弊,并在参数选择方面突出了最佳实践,以实现其成功的操作。单渠道和多渠道(多元)数据的SD算法都属于我们工作的范围。对于多元信号,我们根据符合模式对齐属性,尤其是在存在噪声的情况下评估流行算法的性能。
Signal decomposition (SD) approaches aim to decompose non-stationary signals into their constituent amplitude- and frequency-modulated components. This represents an important preprocessing step in many practical signal processing pipelines, providing useful knowledge and insight into the data and relevant underlying system(s) while also facilitating tasks such as noise or artefact removal and feature extraction. The popular SD methods are mostly data-driven, striving to obtain inherent well-behaved signal components without making many prior assumptions on input data. Among those methods include empirical mode decomposition (EMD) and variants, variational mode decomposition (VMD) and variants, synchrosqueezed transform (SST) and variants and sliding singular spectrum analysis (SSA). With the increasing popularity and utility of these methods in wide-ranging application, it is imperative to gain a better understanding and insight into the operation of these algorithms, evaluate their accuracy with and without noise in input data and gauge their sensitivity against algorithmic parameter changes. In this work, we achieve those tasks through extensive experiments involving carefully designed synthetic and real-life signals. Based on our experimental observations, we comment on the pros and cons of the considered SD algorithms as well as highlighting the best practices, in terms of parameter selection, for the their successful operation. The SD algorithms for both single- and multi-channel (multivariate) data fall within the scope of our work. For multivariate signals, we evaluate the performance of the popular algorithms in terms of fulfilling the mode-alignment property, especially in the presence of noise.