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ESB-Based Sensor Web Integration for the Prediction of Electric Power Supply System Vulnerability

机译:基于ESB的传感器Web集成用于预测电源系统漏洞

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摘要

Electric power supply companies increasingly rely on enterprise IT systems to provide them with a comprehensive view of the state of the distribution network. Within a utility-wide network, enterprise IT systems collect data from various metering devices. Such data can be effectively used for the prediction of power supply network vulnerability. The purpose of this paper is to present the Enterprise Service Bus (ESB)-based Sensor Web integration solution that we have developed with the purpose of enabling prediction of power supply network vulnerability, in terms of a prediction of defect probability for a particular network element. We will give an example of its usage and demonstrate our vulnerability prediction model on data collected from two different power supply companies. The proposed solution is an extension of the GinisSense Sensor Web-based architecture for collecting, processing, analyzing, decision making and alerting based on the data received from heterogeneous data sources. In this case, GinisSense has been upgraded to be capable of operating in an ESB environment and combine Sensor Web and GIS technologies to enable prediction of electric power supply system vulnerability. Aside from electrical values, the proposed solution gathers ambient values from additional sensors installed in the existing power supply network infrastructure. GinisSense aggregates gathered data according to an adapted Omnibus data fusion model and applies decision-making logic on the aggregated data. Detected vulnerabilities are visualized to end-users through means of a specialized Web GIS application.
机译:供电公司越来越依赖企业IT系统为他们提供配电网络状态的全面视图。在公用事业网络中,企业IT系统从各种计量设备收集数据。这样的数据可以有效地用于预测供电网络的脆弱性。本文的目的是提供一种基于企业服务总线(ESB)的传感器Web集成解决方案,该解决方案旨在根据特定网络元素的缺陷概率预测来实现对电源网络漏洞的预测。 。我们将举例说明其用法,并根据从两个不同供电公司收集的数据演示我们的漏洞预测模型。提出的解决方案是GinisSense传感器基于Web的体系结构的扩展,用于基于从异构数据源接收的数据来收集,处理,分析,决策和警报。在这种情况下,已对GinisSense进行了升级,使其能够在ESB环境中运行,并结合了Sensor Web和GIS技术,从而可以预测电源系统的脆弱性。除了电气值,建议的解决方案还从现有电源网络基础结构中安装的其他传感器中收集环境值。 GinisSense根据经过修改的Omnibus数据融合模型聚合收集的数据,并将决策逻辑应用于聚合的数据。通过专用的Web GIS应用程序将检测到的漏洞可视化给最终用户。

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