Applying One Class Classification for Leak Detection in Noisy Industrial Pipelines

D. Kampelopoulos, Georgios-Panagiotis Kousiopoulos, N. Karagiorgos, V. Konstantakos, S. Goudos, S. Nikolaidis
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引用次数: 1

Abstract

In this work, a machine learning approach is proposed for the problem of leak detection in noisy industrial pipelines. The traditional multi-class or binary classification approaches depend on the fact that real training data are required. However, in real pipeline scenarios the data generation for the leak class relies on measurements of artificially generated leaks which are different in nature than actual ones. Also, some pipelines are not equipped with the components to generate these leaks and in some cases, it is difficult to acquire a large and balanced leak dataset. Thus, in this paper, a set of one class classification models are applied that do not require training with real leak data. In this study's case, four one class classification models are trained on a single class representing the pipeline's normal operating noise. Seven time and frequency domain features are extracted from the raw acoustic data acquired by a set of accelerometers. The trained models are then tested on a new dataset containing leak and noise measurements. This dataset is used to evaluate each model's ability to detect leaks as well as the effect that some introduced parameters have on their performance. Overall, high levels of accuracy are exhibited, and all models are able to distinguish between noise and leak data.
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一类分类在噪声工业管道泄漏检测中的应用
在这项工作中,提出了一种机器学习方法来解决噪声工业管道中的泄漏检测问题。传统的多类或二元分类方法依赖于需要真实的训练数据。然而,在真实的管道场景中,泄漏类的数据生成依赖于对人工产生的泄漏的测量,这些泄漏在本质上与实际泄漏不同。此外,一些管道没有配备产生这些泄漏的组件,在某些情况下,很难获得大型和平衡的泄漏数据集。因此,在本文中,应用了一组不需要使用真实泄漏数据进行训练的单类分类模型。在本研究的案例中,对代表管道正常运行噪声的单一类别训练了四个一类分类模型。从一组加速度计采集的原始声学数据中提取了7个时频域特征。然后在包含泄漏和噪声测量的新数据集上测试训练好的模型。该数据集用于评估每个模型检测泄漏的能力,以及一些引入的参数对其性能的影响。总体而言,展示了高水平的准确性,并且所有模型都能够区分噪声和泄漏数据。
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