基于预处理机制的滑动窗口增量故障定位算法

Cheng Zhang, J. Liao, Xiaomin Zhu
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引用次数: 4

摘要

大多数故障定位技术都是基于时间窗的。时间窗的大小对故障定位的精度影响很大。本文以加权二部图作为故障传播模型,提出了一种基于滑动窗口和预处理机制的启发式故障定位方法。首先,SWPM定义了症状延伸比的概念,并将观察到的症状分为分析段、分析段、预处理段三个部分。然后,通过增量计算三段的贝叶斯怀疑度(BSD)并将结果结合,确定最可能的故障集。仿真结果表明,该算法可以有效地降低窗口大小不合理对精度的影响。该算法计算复杂度为多项式,可应用于大规模通信网络。
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SWPM: An Incremental Fault Localization Algorithm Based on Sliding Window with Preprocessing Mechanism
Most fault localization techniques are based on time windows. The sizes of time windows impact on the accuracy of fault localization greatly. This paper takes weighted bipartite graph as fault propagation model and proposes a heuristic fault localization approach based on sliding window with preprocessing mechanism (SWPM) to alleviate the shortcomings. First, SWPM defines the concept of symptom extension ratio and partitions observed symptoms into three segments: analyzed segment, analyzing segment, preprocessing segment. Then it determines the most probable fault set through incrementally computing Bayesian suspected degree (BSD) of the three segments and combining their results. Simulations show that the algorithm can reduce the impacts on the accuracy affected by improper window sizes. The algorithm which has a polynomial computational complexity can be applied to large scale communication network.
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