智能环境应用中故障预防预测算法的比较

E. Warriach, T. Ozcelebi, J. Lukkien
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引用次数: 4

摘要

智能环境应用程序的功能正确性和性能可能会受到故障的影响。容错解决方案的目标是在存在故障的情况下实现优雅的性能下降,理想情况下不会导致应用程序故障。这是一种被动的方法,它本身没有提供足够的灵活性和时间来防止潜在的故障。我们认为,实现高可靠性的关键步骤是在故障发生之前预测故障。提出了一种主动故障预防框架,该框架预测潜在的底层硬件、软件和网络故障,并尝试通过动态适应进行预防。文献中提出了许多统计故障预测算法。本文利用多元线性回归和人工神经网络两种故障预测模型对电池供电无线传感器网络节点的剩余使用寿命进行了预测和比较。结果表明,所提出的框架将更好地控制智能环境应用程序的性能下降,并将提高可靠性和可用性,减少人工用户干预。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparison of Predictive Algorithms for Failure Prevention in Smart Environment Applications
The functional correctness and the performance of smart environment applications can be hampered by faults. Fault tolerance solutions aim to achieve graceful performance degradation in the presence of faults, ideally without leading to application failures. This is a reactive approach and, by itself, gives little flexibility and time for preventing potential failures. We argue that the key step in achieving high dependability is to predict faults before they occur. We propose a proactive fault prevention framework, which predicts potential low-level hardware, software and network faults and tries to prevent them via dynamic adaptation. Many statistical fault prediction algorithms have been proposed in the literature. In this paper, we evaluate and compare the performances of two fault prediction models, namely, multiple linear regression, and artificial neural networks by using them to predict the remaining useful life of a battery-powered wireless sensor network node. The results show that the proposed framework will provide better control over performance degradation of smart environment applications, and will increase reliability and availability, and reduce manual user interventions.
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