工厂自动化中的数据流处理

Bernhard Wolf, P. Herzig, I. Behrens, A. Majumdar, M. Ameling
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引用次数: 2

摘要

数据流处理是一种有价值的技术,可以解决工厂自动化中出现的高吞吐量和实时输出的连续数据处理以及分布式数据采集和处理等苛刻问题。然而,数据流处理技术的复杂性使其在现实生活中的应用变得困难。当不断变化的条件需要修改系统操作员的处理逻辑时,就会出现一种特别具有挑战性的情况。这在存在流数据和系统的瞬态内部状态时尤其困难。由于停机时间的代价很高,因此必须提供一种有效的解决方案来更新处理逻辑。本文提出了数据流查询的动态适应策略,并通过基于状态维护领域的实例进行了实验评估。状态保存技术允许快速转换到新的处理逻辑。结果表明,我们的策略非常适合工厂环境中的苛刻应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data stream processing in factory automation
Data stream processing is a valuable technique to solve demanding problems that also occur in factory automation, such as continuous data processing with high throughput and real-time output, and distributed data acquisition and processing. However, the intricacies of data stream processing techniques make its application difficult in real-life scenarios. One particularly challenging situation arises when changing conditions necessitate a modification in processing logic of system operators. This is especially difficult in the presence of streaming data and transient internal states of the system. Since downtimes are expensive, an efficient solution has to be provided for updating the processing logic. In this paper, strategies for on-the-fly adaptation of data stream queries are presented and experimentally evaluated with examples from the domain of condition-based maintenance. Techniques for state preservation allow for a fast transition to new processing logic. The results show that our strategies are well suited for demanding applications in factory environments.
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