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Wireless Sensor Network nodes correlation method in coal mine tunnel based on Bayesian decision

机译:基于贝叶斯决策的煤矿隧道无线传感器网络节点关联方法

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The path selection of active objects in the coal mine tunnel has a strong spatial-temporal correlativity. By analyzing the path choices and reasonably selecting relevance among the WSNs nodes in the coal mine tunnel, it is good to reducing the network energy consumption and improving the efficiency of the network monitoring. This paper analyzes the structural characteristics of the coal mine tunnel based on the minimum error Bayesian decision method and the minimum risk Bayesian decision method. According to the probability of moving objects (to the miners, for example) on the choice between tunnels and crossways, we propose the prediction method of path choose based on Bayesian decision, associated Nodes in tunnel and branch. Experiment validation shows that the Bayesian decision method can effectively link nodes.
机译:煤矿巷道中活动对象的路径选择具有很强的时空相关性。通过分析煤矿隧道中无线传感器网络节点之间的路径选择和合理选择相关性,有利于降低网络能耗,提高网络监控效率。本文基于最小误差贝叶斯决策方法和最小风险贝叶斯决策方法对煤矿隧道的结构特征进行了分析。根据在隧道和人行横道之间进行选择时移动物体(例如到矿工)的可能性,我们提出了一种基于贝叶斯决策,隧道和分支中关联节点的路径选择的预测方法。实验验证表明,贝叶斯决策方法可以有效地链接节点。

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