Detection of Fractal Breakdowns by the Holder Filter in the Novel Real-Time Traffic Pattern Detector for the Internet Applications

Wwk Lin, Allan K. Y. Wong, T. Dillon
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引用次数: 4

Abstract

The novel real-time traffic pattern detector (RTPD) proposed identifies the Internet traffic pattern on the fly. Firstly it determines if a time series aggregate is stationary. Secondly it confirms if the aggregate exhibits short-range dependence (SRD) or long-range dependence (LRD). Thirdly it detects if the smooth system operation has suddenly become irregular and chaotic. This detection is achieved by computing the instantaneous value of the Holder exponent that has a (0,1) range to accommodate different degrees fractality. A smooth performance distribution such as a time series may embed a varying fractality at different times due to the system dynamics. If the Holder exponent has wandered outside the (0,1) region, fractal breakdown has occurred. The capability of detecting such breakdowns by a real-time application enables it to avoid sudden failure. This feature is of importance to the reliability of digital ecosystems, which reside on the Internet.
基于持子滤波器的分形故障检测在新型实时流量模式检测器中的应用
提出了一种新的实时流量模式检测器(RTPD),用于实时识别互联网流量模式。首先确定时间序列聚合是否平稳。其次,它确定了聚合体是否表现出短程依赖(SRD)或远程依赖(LRD)。第三,检测系统平稳运行是否突然变得不规则和混乱。这种检测是通过计算Holder指数的瞬时值来实现的,该指数的范围为(0,1),以适应不同程度的分形。平滑的性能分布(如时间序列)可能由于系统动力学而在不同时间嵌入不同的分形。如果Holder指数徘徊在(0,1)区域之外,则发生分形击穿。实时应用程序检测此类故障的能力使其能够避免突然故障。这一特性对于驻留在互联网上的数字生态系统的可靠性至关重要。
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