Nai He, Zhang Chunlei, Hu Xianjun
College of Electronic Engineering, Naval University of Engineering, 717 Jiefang Avenue, Wuhan 430030, China.
Sensors (Basel). 2025 Jul 29;25(15):4672. doi: 10.3390/s25154672.
In industrial systems, sensors often classify collected time series data for incipient fault diagnosis. However, time series data from sensors during the initial stages of a fault often exhibits minor fluctuation characteristics. Existing time series classification (TSC) methods struggle to achieve high classification accuracy when these minor fluctuations serve as the primary distinguishing feature. This limitation arises because the low-amplitude variations of these fluctuations, compared with trends, lead the classifier to prioritize and learn trend features while ignoring the minor fluctuations crucial for accurate classification. To address this challenge, this paper proposes a novel graph-based time series classification framework, termed MFSI-TSC. MFSI-TSC first extracts the trend component of the raw time series. Subsequently, both the trend series and the raw series are represented as graphs by extracting the "visible relationship" of the series. By performing a subtraction operation between these graphs, the framework isolates the differential information arising from the minor fluctuations. The subtracted graph effectively captures minor fluctuations by highlighting topological variations, thereby making them more distinguishable. Furthermore, the framework incorporates optimizations to reduce computational complexity, facilitating its deployment in resource-constrained sensor systems. Finally, empirical evaluation of MFSI-TSC on both real-world and publicly available datasets demonstrates its effectiveness. Compared with ten benchmark methods, MFSI-TSC exhibits both high accuracy and computational efficiency, making it more suitable for deployment in sensor systems to complete incipient fault detection tasks.
在工业系统中,传感器常常对收集到的时间序列数据进行分类,以用于早期故障诊断。然而,在故障初始阶段来自传感器的时间序列数据往往呈现出微小波动特征。当这些微小波动作为主要区分特征时,现有的时间序列分类(TSC)方法难以实现高分类准确率。出现这种局限性的原因在于,与趋势相比,这些波动的低幅度变化使得分类器优先关注并学习趋势特征,而忽略了对准确分类至关重要的微小波动。为应对这一挑战,本文提出了一种新颖的基于图的时间序列分类框架,称为MFSI - TSC。MFSI - TSC首先提取原始时间序列的趋势分量。随后,通过提取序列的“可见关系”,将趋势序列和原始序列都表示为图。通过在这些图之间执行减法运算,该框架分离出由微小波动产生的差异信息。相减后的图通过突出拓扑变化有效地捕捉了微小波动,从而使其更易于区分。此外,该框架还进行了优化以降低计算复杂度,便于在资源受限的传感器系统中部署。最后,在真实世界和公开可用数据集上对MFSI - TSC进行的实证评估证明了其有效性。与十种基准方法相比,MFSI - TSC既具有高准确率又具有计算效率,使其更适合部署在传感器系统中以完成早期故障检测任务。