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Combined compression of multiple correlated data streams for online-diagnosis systems

机译:组合压缩在线诊断系统的多个相关数据流

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摘要

Online fault-diagnosis is applied to various systems to enable an automatic monitoring and, if applicable, the recovery from faults to prevent the system from failing. For a sound decision on occurred faults, typically a large amount of sensor measurements and state variables has to be gathered, analyzed and evaluated in real-time. Due to the complexity and the nature of distributed systems all this data needs to be communicated among the network, which is an expensive affair in terms of communication resources and time. In this paper we present compression strategies that utilize the fact that many of these data streams are highly correlated and can be compressed simultaneously. Experimental results show that this can lead to better compression ratios compared to an individual compression of the data streams. Moreover, the algorithms support real-time constraints for time-triggered architectures and enable the data to be transmitted by means of shorter messages, leading to a reduced communication time and improved scheduling results. With an example data set we show that, depending on the parameters of the compression algorithm, more than one third of the bits (34.3%) in the data communication can be saved while only on about 0.2% of all data values a slight loss of accuracy occurs. This means 99.8% of the data values can be correctly delivered without any loss but with a significant reduction of bandwidth demands. (C) 2020 Elsevier B.V. All rights reserved.
机译:在线故障诊断应用于各种系统以启用自动监控,如果适用,可从故障中恢复以防止系统失败。对于发生故障的声音决定,通常必须采集大量的传感器测量和状态变量,实时分析和评估。由于分布式系统的复杂性和性质,所有这些数据都需要在网络中传达,这是在通信资源和时间方面的昂贵的事件。在本文中,我们提出了利用这些数据流中许多高度相关的事实的压缩策略,并且可以同时压缩。实验结果表明,与数据流的单独压缩相比,这可以导致更好的压缩比率。此外,该算法支持时间触发架构的实时约束,并使数据能够通过较短的消息传输数据,导致通信时间和改进的调度结果。通过示例数据集,我们示出了,根据压缩算法的参数,可以保存数据通信中的超过三分之一的比特(34.3%),同时仅在约0.2%的所有数据值中略有损失精度发生。这意味着可以正确地交付99.8%而无需任何损失,但具有显着降低带宽需求。 (c)2020 Elsevier B.v.保留所有权利。

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