论文标题

图像的时间信号:通过深度学习图像处理算法监视工业资产的状况

Temporal signals to images: Monitoring the condition of industrial assets with deep learning image processing algorithms

论文作者

Garcia, Gabriel Rodriguez, Michau, Gabriel, Ducoffe, Mélanie, Gupta, Jayant Sen, Fink, Olga

论文摘要

在众多应用域中,在时间序列中检测异常的能力被认为是高价的。时间序列对象的顺序性质负责附加功能复杂性,最终需要专门的方法来解决任务。时间序列的基本特征位于时间域之外,通常很难用最新的异常检测方法来捕获时间序列。受到深度学习方法在计算机视觉中的成功的启发,一些研究提出了将时间序列转换为类似图像的表示,用作深度学习模型的输入,并导致了分类任务的非常有希望的结果。在本文中,我们首先回顾了文献中发现的图像编码方法的信号。其次,我们建议对其一些原始配方进行修改,以使它们更适合大型数据集的可变性。第三,我们根据共同的无监督任务进行比较,以说明在同一深度学习体系结构中使用编码的选择如何影响结果。因此,我们提供了有或没有提出修改的六种编码算法之间的比较。所选的编码方法是Gramian Angular Fielt,Markov过渡场,复发图,灰度编码,频谱图和缩放图。我们还将获得的结果与用作另一个深度学习模型的输入的原始信号进行了比较。我们证明,某些编码具有竞争优势,可能值得在深度学习框架内考虑。比较在空中客车SAS收集和释放的数据集上进行,其中包含来自真实直升机飞行测试的高度复杂振动测量。不同的编码为异常检测提供了竞争结果。

The ability to detect anomalies in time series is considered highly valuable in numerous application domains. The sequential nature of time series objects is responsible for an additional feature complexity, ultimately requiring specialized approaches in order to solve the task. Essential characteristics of time series, situated outside the time domain, are often difficult to capture with state-of-the-art anomaly detection methods when no transformations have been applied to the time series. Inspired by the success of deep learning methods in computer vision, several studies have proposed transforming time series into image-like representations, used as inputs for deep learning models, and have led to very promising results in classification tasks. In this paper, we first review the signal to image encoding approaches found in the literature. Second, we propose modifications to some of their original formulations to make them more robust to the variability in large datasets. Third, we compare them on the basis of a common unsupervised task to demonstrate how the choice of the encoding can impact the results when used in the same deep learning architecture. We thus provide a comparison between six encoding algorithms with and without the proposed modifications. The selected encoding methods are Gramian Angular Field, Markov Transition Field, recurrence plot, grey scale encoding, spectrogram, and scalogram. We also compare the results achieved with the raw signal used as input for another deep learning model. We demonstrate that some encodings have a competitive advantage and might be worth considering within a deep learning framework. The comparison is performed on a dataset collected and released by Airbus SAS, containing highly complex vibration measurements from real helicopter flight tests. The different encodings provide competitive results for anomaly detection.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源