【24h】

Significance-Based Failure and Interference Detection in Data Streams

机译:数据流中基于重要性的故障和干扰检测

获取原文

摘要

Detecting the failure of a data stream is relatively easy when the stream is continually full of data. The transfer of large amounts of data allows for the simple detection of interference, whether accidental or malicious. However, during interference, data transmission can become irregular, rather than smooth. When the traffic is intermittent, it is harder to detect when failure has occurred and may lead to an application at the receiving end requesting retransmission or disconnecting. Request retransmission places additional load on a system and disconnection can lead to unnecessary reversion to a checkpointed database, before reconnecting and reissuing the same request or response. In this paper, we model the traffic in data streams as a set of significant events, with an arrival rate distributed with a Poisson distribution. Once an arrival rate has been determined, over-time, or lost, events can be determined with a greater chance of reliability. This model also allows for the alteration of the rate parameter to reflect changes in the system and provides support for multiple levels of data aggregation. One significant benefit of the Poisson-based model is that transmission events can be deliberately manipulated in time to provide a steganographic channel that confirms sender/receiver identity.
机译:当数据流连续充满数据时,检测数据流的故障相对容易。大量数据的传输可以简单地检测出意外或恶意干扰。但是,在干扰期间,数据传输可能会变得不规则,而不是平滑。如果流量是间歇性的,则很难检测到何时发生故障,并且可能导致接收端的应用程序请求重传或断开连接。请求重新传输会给系统带来额外的负担,断开连接可能导致不必要的还原到检查点数据库,然后重新连接并重新发出相同的请求或响应。在本文中,我们将数据流中的流量建模为一组重要事件,到达率与泊松分布一起分布。一旦确定了到达率,超时或丢失,就可以确定事件的可能性更大。该模型还允许更改速率参数以反映系统中的变化,并支持多层次的数据聚合。基于泊松模型的一个显着优点是可以及时处理传输事件,以提供隐写通道,以确认发送者/接收者的身份。

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号