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Data Collection in Sensor Networks via the Novel Fast Markov Decision Process Framework

机译:通过新型快速马尔可夫决策过程框架进行传感器网络中的数据收集

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摘要

We investigate the data collection problem in sensor networks. The network consists of a number of stationary sensors deployed at different sites for sensing and storing data locally. A mobile element moves from site to site to collect data from the sensors periodically. There are different costs associated with the mobile element moving from one site to another, and different rewards for obtaining data at different sensors. Furthermore, the costs and the rewards are assumed to change abruptly. The goal is to find a “fast” optimal movement pattern/policy of the mobile element that optimizes for the costs and rewards in non-stationary environments. We formulate and solve this problem using a novel optimization framework called fast Markov decision process (FMDP). The proposed FMDP framework extends the classical Markov decision process theory by incorporating the notion of mixing time that allows for the trade-off between the optimality and the convergence rate to the optimality of a policy. Theoretical and simulation results are provided to verify the proposed approach.
机译:我们调查传感器网络中的数据收集问题。该网络由多个固定传感器组成,这些传感器部署在不同的位置,用于本地感测和存储数据。移动元件从一个站点移动到另一个站点,以定期从传感器收集数据。从一个站点到另一个站点的移动元素有不同的成本,在不同的传感器获取数据有不同的奖励。此外,成本和报酬被假定为突然改变。目标是找到可在非固定环境中优化成本和报酬的移动元素的“快速”最佳运动模式/策略。我们使用称为快速马尔可夫决策过程(FMDP)的新型优化框架来制定和解决此问题。所提出的FMDP框架通过结合混合时间的概念扩展了经典的马尔可夫决策过程理论,这种混合时间允许在策略的最优性和收敛速度之间进行权衡。提供理论和仿真结果以验证所提出的方法。

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