边界(拓扑)
二叉树
计算机科学
无线传感器网络
支持向量机
二进制数
跟踪(教育)
树(集合论)
算法
人工智能
理论计算机科学
数学
计算机网络
教育学
算术
数学分析
心理学
作者
Li Liu,Guangjie Han,Zhengwei Xu,Jinfang Jiang,Lei Shu,Miguel Martínez-García
标识
DOI:10.1109/tmc.2020.3019393
摘要
Due to the flammability, explosiveness and toxicity of continuous objects (e.g., chemical gas, oil spill, radioactive waste) in the petrochemical and nuclear industries, boundary tracking of continuous objects is a critical issue for industrial wireless sensor networks (IWSNs). In this article, we propose a continuous object boundary tracking algorithm for IWSNs – which fully exploits the collective intelligence and machine learning capability within the sensor nodes. The proposed algorithm first determines an upper bound of the event region covered by the continuous objects. A binary tree-based partition is performed within the event region, obtaining a coarse-grained boundary area mapping. To study the irregularity of continuous objects in detail, the boundary tracking problem is then transformed into a binary classification problem; a hierarchical soft margin support vector machine training strategy is designed to address the binary classification problem in a distributed fashion. Simulation results demonstrate that the proposed algorithm shows a reduction in the number of nodes required for boundary tracking by at least 50 percent. Without additional fault-tolerant mechanisms, the proposed algorithm is inherently robust to false sensor readings, even for high ratios of faulty nodes ( $\approx 9\%$ ).
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