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Adaptive sleep-wake control using reinforcement learning in sensor networks

机译:在传感器网络中使用强化学习的自适应睡眠-唤醒控制

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The aim in this paper is to allocate the ‘sleep time’ of the individual sensors in an intrusion detection application so that the energy consumption from the sensors is reduced, while keeping the tracking error to a minimum. We propose two novel reinforcement learning (RL) based algorithms that attempt to minimize a certain long-run average cost objective. Both our algorithms incorporate feature-based representations to handle the curse of dimensionality associated with the underlying partially-observable Markov decision process (POMDP). Further, the feature selection scheme used in our algorithms intelligently manages the energy cost and tracking cost factors, which in turn assists the search for the optimal sleeping policy. We also extend these algorithms to a setting where the intruder's mobility model is not known by incorporating a stochastic iterative scheme for estimating the mobility model. The simulation results on a synthetic 2-d network setting are encouraging.
机译:本文的目的是在入侵检测应用程序中分配各个传感器的“睡眠时间”,以减少传感器的能耗,同时将跟踪误差保持在最低水平。我们提出了两种新颖的基于强化学习(RL)的算法,这些算法试图最小化某些长期平均成本目标。我们的两种算法都结合了基于特征的表示,以处理与潜在的部分可观察到的马尔可夫决策过程(POMDP)相关的维数诅咒。此外,我们算法中使用的特征选择方案可以智能地管理能源成本和跟踪成本因素,从而有助于搜索最佳睡眠策略。通过将随机迭代方案用于估计移动性模型,我们还将这些算法扩展到未知入侵者的移动性模型的设置。在合成二维网络设置上的仿真结果令人鼓舞。

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