基于雾的物联网系统中增强容错性的n版本编程

Vaishali Girdhar, Eyhab Al-Masri
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引用次数: 3

摘要

随着基于雾的系统的数量和重要性的增加,对智能设备的需求也在增加。这可能是相当具有挑战性的,因为基于雾的物联网系统需要适应由于硬件或软件波动而导致服务水平突然下降的情况。基于雾的物联网系统需要具备容错能力,以确保提供安全、可靠、健壮和动态的服务,同时应对硬件和软件方面可能发生的意外变化。然而,要实现这种容错,必须准确地定义和识别基于雾的环境中可能存在的错误、故障和失败之间的差异。在本文中,我们提出了一个解决这个问题的方法,并引入了一种基于n版本异常的故障检测(NvABFD)技术,用于增强基于雾的系统的容错性。使用NvABFD,可以近乎实时地识别基于雾的环境中可能发生的数据异常、错误、故障和故障。我们使用MobiAct数据集在模拟患者监测系统中测试了NvABFD技术。我们的研究结果表明,在异常、错误和故障检测方面,该技术的准确率约为99.9%,这表明该技术可以通过准确识别异常、错误和故障来提高基于雾的系统的容错性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
N-Version Programming for Enhancing Fault Tolerance in Fog-based IoT Systems
With the increase in the abundance and prominence of fog-based systems comes the increase in demand for smarter devices. This can be quite challenging since fog-based IoT systems need to adapt in the event of a sudden deterioration in the level of service they offer due to hardware or software fluctuations. Fog-based IoT systems need to become fault-tolerant in order to ensure the delivery of secure, reliable, robust, and dynamic services while addressing unexpected changes that may occur in terms of both hardware and software. To achieve such fault-tolerance, however, it is imperative to accurately define and identify the differences between errors, faults, and failures that may exist within fog-based environments. In this paper, we propose a solution to this problem and introduce an N-version anomaly-based Fault Detection (NvABFD) technique used for enhancing the fault tolerance of fog-based systems. Using NvABFD, it is possible to identify data anomalies, errors, faults, and failures that may occur in fog-based environments in near real time. We tested the NvABFD technique in a simulated patient monitoring system using the MobiAct dataset. Our results show an accuracy of ~99.9% in anomaly, error, and fault detection indicating that this technique may enhance fault-tolerance in a fog-based system by accurately identifying anomalies, errors, and faults as they occur.
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