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Context-Aware Sensors

机译:情境感知传感器

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摘要

Wireless sensor networks typically consist of a large number of sensor nodes embedded in a physical space. Such sensors are low-power devices that are primarily used for monitoring several physical phenomena, potentially in remote harsh environments. Spatial and temporal dependencies between the readings at these nodes highly exist in such scenarios. Statistical contextual information encodes these spatio-temporal dependencies. It enables the sensors to locally predict their current readings based on their own past readings and the current readings of their neighbors. In this paper, we introduce context-aware sensors. Specifically, we propose a technique for modeling and learning statistical contextual information in sensor networks. Our approach is based on Bayesian classifiers; we map the problem of learning and utilizing contextual information to the problem of learning the parameters of a Bayes classifier, and then making inferences, respectively. We propose a scalable and energy-efficient procedure for online learning of these parameters in-network, in a distributed fashion. We discuss applications of our approach in discovering outliers and detection of faulty sensors, approximation of missing values, and in-network sampling. We experimentally analyze our approach in two applications, tracking and monitoring.
机译:无线传感器网络通常由嵌入物理空间中的大量传感器节点组成。这种传感器是低功率设备,主要用于监视可能在远程恶劣环境中的几种物理现象。在这种情况下,这些节点处的读数之间存在时空依赖性。统计上下文信息对这些时空依赖性进行了编码。它使传感器能够根据自己过去的读数和邻居的当前读数来本地预测其当前读数。在本文中,我们介绍了上下文感知传感器。具体来说,我们提出了一种用于在传感器网络中建模和学习统计上下文信息的技术。我们的方法基于贝叶斯分类器。我们将学习和利用上下文信息的问题映射到学习贝叶斯分类器的参数的问题,然后分别进行推论。我们提出了一种可扩展的节能程序,用于以分布式方式在线学习这些参数。我们讨论了我们的方法在发现异常值和检测故障传感器,近似值缺失以及网络内采样中的应用。我们在两个应用程序(跟踪和监视)中通过实验分析了我们的方法。

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