Alharbi Fahad, Luo Suhuai, Alsaedi Abdullah, Zhao Sipei, Yang Guang
School of Information and Physical Sciences, The University of Newcastle, Newcastle, NSW 2308, Australia.
Department of Information Technology, College of Computers and Information Technology, Taif University, Taif 21944, Saudi Arabia.
Sensors (Basel). 2024 Nov 27;24(23):7569. doi: 10.3390/s24237569.
Idlers are essential to conveyor systems, as well as supporting and guiding belts to ensure production efficiency. Proper idler maintenance prevents failures, reduces downtime, cuts costs, and improves reliability. Most studies on idler fault detection rely on supervised methods, which depend on large labelled datasets for training. However, acquiring such labelled data is often challenging in industrial environments due to the rarity of faults and the labour-intensive nature of the labelling process. To address this, we propose the chroma-augmented semi-supervised anomaly detection (CASSAD) method, designed to perform effectively with limited labelled data. At the core of CASSAD is the one-class SVM (OC-SVM), a model specifically developed for anomaly detection in cases where labelled anomalies are scarce. We also compare CASSAD's performance with other common models like the local outlier factor (LOF) and isolation forest (iForest), evaluating each with the area under the curve (AUC) to assess their ability to distinguish between normal and anomalous data. CASSAD introduces chroma features, such as chroma energy normalised statistics (CENS), the constant-Q transform (CQT), and the chroma short-time Fourier transform (STFT), enhanced through filtering to capture rich harmonic information from idler sounds. To reduce feature complexity, we utilize the mean and standard deviation (std) across chroma features. The dataset is further augmented using additive white Gaussian noise (AWGN). Testing on an industrial dataset of idler sounds, CASSAD achieved an AUC of 96% and an accuracy of 91%, surpassing a baseline autoencoder and other traditional models. These results demonstrate the model's robustness in detecting anomalies with minimal dependence on labelled data, offering a practical solution for industries with limited labelled datasets.
托辊对于输送系统至关重要,它支撑和引导皮带以确保生产效率。正确的托辊维护可防止故障、减少停机时间、降低成本并提高可靠性。大多数关于托辊故障检测的研究依赖于监督方法,这种方法需要大量带标签的数据集进行训练。然而,由于故障的稀缺性和标签过程的劳动密集性,在工业环境中获取此类带标签的数据通常具有挑战性。为了解决这个问题,我们提出了色度增强半监督异常检测(CASSAD)方法,旨在在有限的带标签数据下有效运行。CASSAD的核心是一类支持向量机(OC-SVM),这是一种专门为在带标签异常稀缺的情况下进行异常检测而开发的模型。我们还将CASSAD的性能与其他常见模型(如局部离群因子(LOF)和孤立森林(iForest))进行比较,通过曲线下面积(AUC)评估每个模型区分正常数据和异常数据的能力。CASSAD引入了色度特征,如色度能量归一化统计(CENS)、恒定Q变换(CQT)和色度短时傅里叶变换(STFT),通过滤波增强以从托辊声音中捕获丰富的谐波信息。为了降低特征复杂性,我们利用色度特征的均值和标准差(std)。数据集还使用加性高斯白噪声(AWGN)进行了增强。在托辊声音的工业数据集上进行测试时,CASSAD的AUC达到了96%,准确率达到了91%,超过了基线自动编码器和其他传统模型。这些结果证明了该模型在检测异常时的稳健性,对带标签数据集有限的行业提供了一个实用的解决方案。