基于现代网络基础设施的城市水威胁检测仿真研究

Lizhe Wang, Dan Chen, Ze Deng, R. Ranjan
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引用次数: 1

摘要

污染源表征(CSC)的计算是配水系统管理中的一个关键研究问题。我们使用模拟框架来确定传感器的优化位置,从而快速检测污染源。优化引擎基于遗传算法(GA),该算法将试验解解释为个体。在优化过程中,生成了成千上万个这样的解。对于大型WDS,这些解决方案的计算非常重要且耗时。因此,它是一个需要大量计算资源的计算密集型应用程序。此外,我们努力迅速产生解决办法,以便对紧急反应作出反应。为了执行计算,我们需要用户级中间件,它可以支持应用程序的工作流,并以有效和容错的方式管理资源分配。为此,我们对中间件框架进行了原型化,该框架提供了一个方便的命令行和门户层,用于在网格上控制应用程序。在内部,我们利用了一个复杂的工作流引擎,该引擎提供了访问基本容错机制以进行作业调度的能力。这包括作业副本的管理和对延迟返回结果的反应。本文报道了在一个真实的网格试验台——Tera网格试验台上求解CSC问题的测试结果。此外,我们将此系统架构与基于hadoop的实现(自动包含容错)进行对比。后一项活动已在Future Grid上进行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Simulation Study on Urban Water Threat Detection in Modern Cyberinfrastructures
The computation of Contaminant Source Characterization (CSC) is a critical research issue in Water Distribution System (WDS) management. We use a simulation framework to identify optimized locations of sensors that lead to fast detection of contamination sources. The optimization engine is based on a Genetic Algorithm (GA) that interprets trial solutions as individuals. During the optimization process many thousands of these solutions are generated. For a large WDS, the calculation of these solutions are non-trivial and time consuming. Hence, it is a compute intensive application that requires significant compute resources. Furthermore, we strive to generate solutions quickly in order to respond to the urgency of a response. To carry out the calculations we require user-level middleware that can be supporting the workflow of the application and manages the resource assignment in an efficient and fault tolerant fashion. To do so we have prototyped the middleware framework that provides a convenient command line and portal layer of steering applications on Grids. Internally, we utilize a sophisticated workflow engine that provides the ability to access elementary fault tolerant mechanisms for job scheduling. This includes the management of job replicas and the reaction on late return of results. We report the test results of CSC problem solving on a real Grid test bed - the Tera Grid test bed. In addition, we contrast this system architecture with a Hadoop-based implementation that automatically includes fault tolerance. The later activity has been conducted on Future Grid.
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