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Knowledge-infused and consistent Complex Event Processing over real-time and persistent streams

机译:在实时和持久流上注入知识并保持一致的复杂事件处理

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摘要

Emerging applications in Internet of Things (IoT) and Cyber-Physical Systems (CPS) present novel challenges to Big Data platforms for performing online analytics. Ubiquitous sensors from IoT deployments are able to generate data streams at high velocity, that include information from a variety of domains, and accumulate to large volumes on disk. Complex Event Processing (CEP) is recognized as an important real-time computing paradigm for analyzing continuous data streams. However, existing work on CEP is largely limited to relational query processing, exposing two distinctive gaps for query specification and execution: (1) infusing the relational query model with higher level knowledge semantics, and (2) seamless query evaluation across temporal spaces that span past, present and future events. These allow accessible analytics over data streams having properties from different disciplines, and help span the velocity (real-time) and volume (persistent) dimensions. In this article, we introduce a Knowledge infused CEP (chi-CEP) framework that provides domain-aware knowledge query constructs along with temporal operators that allow end-to-end queries to span across real-time and persistent streams. We translate this query model to efficient query execution over online and offline data streams, proposing several optimizations to mitigate the overheads introduced by evaluating semantic predicates and in accessing high-volume historic data streams. In particular, we also address temporal consistency issues that arise during fault recovery of query plans that span the boundary between real-time and persistent streams. The proposed chi-CEP query model and execution approaches are implemented in our prototype semantic CEP engine, SCEPter. We validate our query model using domain-aware CEP queries from a real-world Smart Power Grid application, and experimentally analyze the benefits of our optimizations for executing these queries, using event streams from a campus-microgrid loT deployment. Our results show that we are able to sustain a processing throughput of 3, 000 events/secs for chi-CEP queries, a 30 x improvement over the baseline and sufficient to support a Smart Township, and can resume consistent processing within 20 secs after stream outages as long as 2 hours. (C) 2016 Elsevier B.V. All rights reserved.
机译:物联网(IoT)和网络物理系统(CPS)中的新兴应用程序对执行在线分析的大数据平台提出了新的挑战。来自物联网部署的无处不在的传感器能​​够高速生成数据流,其中包括来自多个域的信息,并累积到磁盘上的大容量中。复杂事件处理(CEP)被认为是用于分析连续数据流的重要实时计算范例。但是,有关CEP的现有工作在很大程度上限于关系查询处理,这暴露了查询规范和执行方面的两个明显差距:(1)向关系查询模型注入更高级别的知识语义,以及(2)跨跨越时间空间的无缝查询评估过去,现在和将来的事件。这些允许对具有不同学科属性的数据流进行可访问的分析,并有助于跨越速度(实时)和体积(持久)维度。在本文中,我们介绍了一个知识注入CEP(chi-CEP)框架,该框架提供了领域感知的知识查询结构以及允许端到端查询跨越实时和持久流的时间运算符。我们将此查询模型转换为对在线和脱机数据流进行有效查询执行的方法,并提出了一些优化措施来减轻因评估语义谓词和访问大量历史数据流而带来的开销。特别是,我们还解决了跨越实时流和持久流之间的边界的查询计划的故障恢复期间出现的时间一致性问题。在我们的原型语义CEP引擎SCEPter中实现了提出的chi-CEP查询模型和执行方法。我们使用来自现实世界的Smart Power Grid应用程序的域感知CEP查询来验证我们的查询模型,并使用来自校园微电网loT部署的事件流来实验性地分析执行这些查询的优化优势。我们的结果表明,对于chi-CEP查询,我们能够维持3,000个事件/秒的处理吞吐量,比基线提高30倍,足以支持Smart Township,并且可以在流传输后20秒内恢复一致的处理停机时间长达2小时。 (C)2016 Elsevier B.V.保留所有权利。

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