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Semi-supervised Gaussian and t-distribution hybrid mixture model for water leak detection

机译:水泄漏检测半监控高斯和T分布混合混合物模型

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摘要

The last few years have seen a great number of announcements and projections on cities of the future, where technological interconnected metering infrastructure is the main smart-grid unit, promoting higher sustainability due to its more efficient management capability. The water supply network is one of the grids that has been given additional attention due to the problem of waste caused by water leakage, usually requiring rapid detection for fast intervention to prevent high costs. With centralised information coming from the grid, like the measurement of pressure and flow, it is revealed that anomaly detection could be an important tool for quick automatic detection without needing permanent analysis by a human operator. However, there is a need for a more robust approach, especially when noisy data are present. In this paper, we propose the implementation of a new approach based on a hybrid expectation maximization (EM) Gaussian model combined with a t-distribution mixture. This approach is compared to both a pure EM Gaussian mixture model and a t-distribution mixture model that can use labelled data or not. Each EM algorithm was applied to real data acquired from a water supply grid with the aim of automatically detecting water leaks. Using the newly developed approach, the results show that detection is both possible and more accurate for this type of database.
机译:过去几年已经看到了未来城市的大量公告和预测,技术互联的计量基础设施是主要的智能电网单元,由于其更有效的管理能力,促进了更高的可持续性。供水网络是由于漏水造成的废物问题而获得额外关注的电网之一,通常需要快速检测快速干预以防止高成本。利用来自网格的集中信息,如压力和流量的测量,揭示异常检测可能是快速自动检测的重要工具,而无需通过人工操作员进行永久性分析。然而,需要一种更强大的方法,尤其是当存在嘈杂的数据时。在本文中,我们提出了一种基于混合期预期最大化(EM)高斯模型与T分布混合物结合的新方法的实现。将这种方法与纯EM高斯混合模型和可以使用标记数据使用的T分布混合物模型进行比较。将每个EM算法应用于从供水网格获取的真实数据,其目的是自动检测漏水泄漏。使用新开发的方法,结果表明,这种类型的数据库都可以更准确地进行检测。

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