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Minimizing sensors for system monitoring - a case study with EEG signals

机译:最小化系统监测的传感器 - 以EEG信号为例

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For monitoring any system, be it a chemical plant, a nuclear power station, or a human heart or brain, we need to attach sensors and analyze the multivariate time-series data collected by those sensors. If the system has two states, say state 1 (good) and state 2 (bad), we need to infer which state the system is, by classifying the collected time-series signals. To make this work efficiently, it is important to search the least number of probes that would give best classification result. It is a multi-objective optimization problem. The proposed approach works in two steps. We start with a large number of probes. As the first step, we cluster the time-series signals. and choose a representative one from each cluster. Next, we run pareto GA to select the smallest set of probes (from cluster representatives), that would give the highest classification result. Depending on the nature of the signals, and the target application, appropriate signal-features, clustering and classification algorithms will be different, but the basic principle is applicable to any system. In this paper, we tested the effectiveness of our algorithm with EEG signals, to detect the presence or absence of ERP 300. Improved results with less number of probes compared with previous works validated the approach.
机译:为了监测任何系统,成为化工厂,核电站或人体心脏或大脑,我们需要附加传感器并分析由这些传感器收集的多变量时间序列数据。如果系统有两个状态,请说出状态1(良好)和状态2(坏),我们需要通过分类收集的时间序列信号来推断系统是系统。为了有效地使这项工作,重要的是要搜索最少的探针,这将提供最佳分类结果。这是一个多目标优化问题。建议的方法有两步起作用。我们从大量的探针开始。作为第一步,我们聚集时间序列信号。并从每个群集中选择代表性。接下来,我们运行Pareto Ga以选择最小的探针(来自集群代表),这将提供最高的分类结果。根据信号的性质,以及目标应用程序,适当的信号 - 特征,聚类和分类算法将是不同的,但基本原理适用于任何系统。在本文中,我们用EEG信号测试了我们的算法的有效性,以检测ERP 300的存在或不存在。与之前的工程相比,探测器数量较少的探测结果验证了这种方法。

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