Dataset Reduction Framework For Intelligent Fault Detection In IoT-based Cyber-Physical Systems Using Machine Learning Techniques

Georgios Tertytchny, M. Michael
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引用次数: 2

Abstract

Intelligent Fault Detection (IFD), the use of machine learning-based methods and algorithms for the fault detection in modern systems becomes nowadays important due to the large number of data being generated by devices embedded in such systems. A typical example of such systems is Internet of Things (IoT)-based Cyber-Physical Systems (CPS) where IoT devices are used for better monitoring and control of such systems but at the same time due to their nature are susceptible to component faults. IFD depends on the number of data generated in such systems and their representation using system characteristics (features). Instance-based dataset reduction schemes used in Machine Learning (ML) aim to reduce the volume of data required during training while maintaining or preserving testing accuracy. Such reductions lead to less storage and processing time required for the trained models, which enables the use of lightweight IFD approaches in embedded devices found in the core of IoT-based CPS systems. In this work, we propose a machine learning-based framework for instance-based dataset reduction applied for IFD models. Our proposed framework is experimentally evaluated over two datasets. Results show that reduction is possible for up to 15.51% with an average accuracy improvement of 17% on the set of evaluated classification algorithms.
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基于物联网的网络物理系统中使用机器学习技术的智能故障检测数据集约简框架
智能故障检测(IFD),在现代系统中使用基于机器学习的方法和算法进行故障检测,由于这些系统中嵌入的设备产生大量数据,因此变得非常重要。此类系统的典型示例是基于物联网(IoT)的网络物理系统(CPS),其中物联网设备用于更好地监视和控制此类系统,但同时由于其性质,它们容易受到组件故障的影响。IFD取决于在这些系统中产生的数据的数量及其使用系统特征(特征)的表示。机器学习(ML)中使用的基于实例的数据集缩减方案旨在减少训练期间所需的数据量,同时保持或保持测试准确性。这种减少减少了训练模型所需的存储和处理时间,从而可以在基于物联网的CPS系统核心的嵌入式设备中使用轻量级IFD方法。在这项工作中,我们提出了一个基于机器学习的框架,用于IFD模型的基于实例的数据集约简。我们提出的框架在两个数据集上进行了实验评估。结果表明,在评估的分类算法集上,减少的准确率最高可达15.51%,平均准确率提高17%。
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