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压缩采样中基于离散时间马尔科夫链的动态控制机制
引用本文:安春燕,纪红,李屹,张晓亮. 压缩采样中基于离散时间马尔科夫链的动态控制机制[J]. 东南大学学报, 2012, 0(3): 287-291
作者姓名:安春燕  纪红  李屹  张晓亮
作者单位:北京邮电大学泛网无线通信教育部重点实验室
基金项目:Innovation Funds for Outstanding Graduate Students in School of Information and Communication Engineering in BUPT;the National Natural Science Foundation of China(No.61001115, 61271182)
摘    要:针对信号稀疏度在大多数情况下时变且未知的问题,提出了一种实时信号稀疏度预测及最优采样速率确定机制.利用离散时间马尔科夫链对信号稀疏度进行建模,分析信号稀疏度各状态之间变化的规律,根据当前状态预测下一个采样周期内信号的稀疏度状态及概率.此外,基于预测结果,综合考虑采样过程中的能量消耗和信号重构的精确度,以最大化预期收益为...

关 键 词:压缩采样  信号稀疏度预测  离散时间马尔科夫链

Discrete-time Markov-based dynamic control approach for compressed sampling
An Chunyan Ji Hong Li Yi Zhang Xiaoliang. Discrete-time Markov-based dynamic control approach for compressed sampling[J]. Journal of Southeast University(English Edition), 2012, 0(3): 287-291
Authors:An Chunyan Ji Hong Li Yi Zhang Xiaoliang
Affiliation:An Chunyan Ji Hong Li Yi Zhang Xiaoliang(Key Laboratory of Universal Wireless Communication of Ministry of Education,Beijing University of Posts and Telecommunications,Beijing 100876,China)
Abstract:To solve the problem that the signal sparsity level is time-varying and not known as a priori in most cases,a signal sparsity level prediction and optimal sampling rate determination scheme is proposed.The discrete-time Markov chain is used to model the signal sparsity level and analyze the transition between different states.According to the current state,the signal sparsity level state in the next sampling period and its probability are predicted.Furthermore,based on the prediction results,a dynamic control approach is proposed to find out the optimal sampling rate with the aim of maximizing the expected reward which considers both the energy consumption and the recovery accuracy.The proposed approach can balance the tradeoff between the energy consumption and the recovery accuracy.Simulation results show that the proposed dynamic control approach can significantly improve the sampling performance compared with the existing approach.
Keywords:compressed sampling  signal sparsity level prediction  discrete-time Markov chain
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