软件网络中低延迟工业异常检测的网内处理

Huanzhuo Wu, Jia He, Máté Tömösközi, Zuo Xiang, F. Fitzek
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引用次数: 4

摘要

现代制造商目前正在整合新的数字技术,如基于5g的无线网络、物联网(IoT)和云计算,以将其生产过程提升到一个全新的水平,即智能工厂的水平。在现代智能工厂的设置中,时间关键型应用程序对于促进高效和安全生产越来越重要。然而,由于无线传感器的高密度和它们产生的大量数据,这些应用在数据传输和处理方面存在延迟。随着下一代网络的出现,网络节点变得智能化,能够处理多种网络功能,节点计算能力的提高使得减轻一些计算开销成为可能。在本文中,我们首次展示了我们的IA-Net-Lite工业异常检测系统,该系统具有新颖的网络内数据处理能力。IA-Net-Lite利用智能网络设备将数据传输和处理结合起来,逐步过滤冗余数据,优化业务延迟。通过在实际网络模拟器中的测试,我们表明该方法可以将服务延迟降低高达40%。此外,我们的方法的好处可能会在其他大容量和人工智能应用中得到利用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
In-Network Processing for Low-Latency Industrial Anomaly Detection in Softwarized Networks
Modern manufacturers are currently undertaking the integration of novel digital technologies - such as 5G-based wireless networks, the Internet of Things (IoT), and cloud computing - to elevate their production process to a brand new level, the level of smart factories. In the setting of a modern smart factory, time-critical applications are increasingly important to facilitate efficient and safe production. However, these applications suffer from delays in data transmission and processing due to the high density of wireless sensors and the large volumes of data that they generate. As the advent of next-generation networks has made network nodes intelligent and capable of handling multiple network functions, the increased computational power of the nodes makes it possible to offload some of the computational overhead. In this paper, we show for the first time our IA-Net-Lite industrial anomaly detection system with the novel capability of in-network data processing. IA-Net-Lite utilizes intelligent network devices to combine data transmission and processing, as well as to progressively filter redundant data in order to optimize service latency. By testing in a practical network emulator, we showed that the proposed approach can reduce the service latency by up to 40%. Moreover, the benefits of our approach could potentially be exploited in other large-volume and artificial intelligence applications.
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