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Sensor networks: From dependence analysis via matroid bases to online synthesis

机译:传感器网络:从通过拟阵的依赖关系分析到在线综合

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摘要

Consider the two related problems of sensor selection and sensor fusion. In the first, given a set of sensors, one wishes to identify a subset of the sensors, which while small in size, captures the essence of the data gathered by the sensors. In the second, one wishes to construct a fused sensor, which utilizes the data from the sensors (possibly after discarding dependent ones) in order to create a single sensor which is more reliable than each of the individual ones. In this work, we rigorously define the dependence among sensors in terms of joint empirical measures and incremental parsing. We show that these measures adhere to a polymatroid structure, which in turn facilitates the application of efficient algorithms for sensor selection. We suggest both a random and a greedy algorithm for sensor selection. Given an independent set, we then turn to the fusion problem, and suggest a novel variant of the exponential weighting algorithm. In the suggested algorithm, one competes against an augmented set of sensors, which allows it to converge to the best fused sensor in a family of sensors, without having any prior data on the sensors' performance.
机译:考虑传感器选择和传感器融合的两个相关问题。首先,给定一组传感器,人们希望识别出传感器的一个子集,尽管该子集很小,但可以捕获由传感器收集的数据的本质。在第二个中,人们希望构造一个融合传感器,该传感器利用来自传感器的数据(可能在丢弃相关传感器之后),以创建一个比每个独立传感器更可靠的传感器。在这项工作中,我们根据联合经验测度和增量分析严格定义了传感器之间的依赖性。我们表明这些措施坚持多类脉结构,这反过来又有利于传感器选择的有效算法的应用。对于传感器选择,我们建议使用随机算法和贪婪算法。给定一个独立的集合,然后我们转向融合问题,并提出指数加权算法的一种新颖变体。在建议的算法中,一个人与一组扩充的传感器竞争,这使它可以收敛到一组传感器中最好的融合传感器,而无需任何有关传感器性能的先前数据。

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