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A novel real-time traffic sensing model to improve the performance of web-based industrial ecosystems

机译:一种新颖的实时交通感应模型,可提高基于Web的工业生态系统的性能

摘要

The novel real-time traffic sensing (RTS) model proposed in this paper not only senses traffic patterns but also chaotic traffic conditions, known as the fractal breakdowns, on the fly. If a web-based industrial ecosystem has included RTS as a functional component, it would possess the ability to acquire ambient intelligence of, and act upon, changes in traffic patterns. Its use of the results by the RTS as parameters for self-organization proactively could prevent sudden system failures. Web-based industrial ecosystems consist of distributed processing centers/entities/species. These species have distinctive functional characteristics and collaborate by message passing over the mobile Internet, which supports wireline and wireless communications in a mixed dynamic manner. The unpredictable traffic changes in such an environment could reduce system performance and lead to system instability and even failure. Although brief stints of chaotic operations or system failures followed by quick recoveries may be unnoticeable to human eyes, they can impede the normal operations of industrial systems and inflict huge financial losses. Any industrial ecosystem with RTS support would benefit from the enhanced reliability by detecting possible chaotic operations or fractal breakdowns.
机译:本文提出的新型实时交通感知(RTS)模型不仅可以感知交通模式,还可以实时感知混乱的交通状况(称为分形故障)。如果基于Web的工业生态系统已将RTS作为功能组件包含在内,则它将具有获取交通模式变化并对其采取行动的环境情报的能力。 RTS将结果用作自组织的参数可以主动防止系统突然发生故障。基于网络的工业生态系统由分布式处理中心/实体/物种组成。这些种类具有独特的功能特性,并通过移动Internet上的消息传递进行协作,该消息以混合动态方式支持有线和无线通信。在这种环境中不可预测的流量变化可能会降低系统性能,并导致系统不稳定甚至出现故障。尽管短暂的混乱运行或系统故障以及随后的快速恢复可能在人眼中并不明显,但它们可能会阻碍工业系统的正常运行并造成巨大的经济损失。任何具有RTS支持的工业生态系统都可以通过检测可能的混沌操作或分形故障来提高可靠性。

著录项

  • 作者

    Lin WWK; Wong JHK; Wong AKY;

  • 作者单位
  • 年度 2011
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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