高能效无线传感器网络中改进的分层马尔可夫目标跟踪算法

Keyvan Yasami, Morteza Ziyadi, B. Abolhassani
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引用次数: 6

摘要

本文考虑目标跟踪传感器网络,在保持可接受的跟踪精度的同时,通过预测目标轨迹和降低传感器采样率来提高其能量感知能力。将跟踪问题表述为一个层次马尔可夫决策过程(MDP),并通过神经动力学规划进行求解。虽然这并不新鲜,但由于解决方案的能源效率和收敛速度是紧密耦合的,因此通过使用强化学习算法来解决比前面使用的方法更快的MDP,可以实现网络性能的改进。仿真结果表明,该算法与其他已知的目标跟踪算法相比是有效的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Improved Hierarchical Markovian Target Tracking (I-HMTT) Algorithm for Energy Efficient Wireless Sensor Networks
In this paper, we consider a target-tracking sensor network and improve its energy awareness through predicting a target trajectory and decreasing sampling rate of sensors while maintaining an acceptable tracking accuracy. The tracking problem is formulated as a hierarchical Markov decision process (MDP) and is solved through neurodynamic programming. Though this is not new, improvements in performance of the network are achieved by use of a reinforcement learning algorithm to solve the MDP that converges faster than the preceding used methods, since the energy efficiency and speed of convergence of the solution are tightly coupled. Simulation results show the effectiveness of our algorithm against other known target tracking algorithms.
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