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首页> 外文期刊>IEEE Transactions on Signal Processing >Sequential Joint Detection and Estimation: Optimum Tests and Applications
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Sequential Joint Detection and Estimation: Optimum Tests and Applications

机译:顺序联合检测和估计:最佳测试和应用

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摘要

We treat the statistical inference problems in which one needs to detect the correct signal model among multiple hypotheses and estimate a parameter simultaneously using as small number of samples as possible. Conventional methods treat the detection and estimation subproblems separately, ignoring the intrinsic coupling between them. However, a joint detection and estimation problem should be solved to maximize the overall performance. We address the sample size concern through a sequential and Bayesian setup. Specifically, we seek the optimum triplet of stopping time, detector, and estimator(s) that minimizes the number of samples subject to a constraint on the combined detection and estimation cost. A general framework for optimum sequential joint detection and estimation is developed. The resulting optimum detector and estimator(s) are strongly coupled with each other, proving that the separate treatment is strictly suboptimum. The theoretical results derived for a quite general model are then applied to several problems with linear quadratic Gaussian (LQG) models, including dynamic spectrum access in cognitive radio, and state estimation in smart grid with topological uncertainty. Numerical results corroborate the superior overall detection and estimation performance of the proposed schemes over the conventional methods that handle the subproblems separately.
机译:我们处理统计推断问题,其中需要在多个假设中检测正确的信号模型,并使用尽可能少的样本同时估计参数。常规方法会分别处理检测和估计子问题,而忽略它们之间的固有耦合。但是,应该解决联合检测和估计问题以使整体性能最大化。我们通过顺序和贝叶斯设置解决了样本量问题。具体来说,我们寻求停止时间,检测器和估计器的最佳三元组,以使受到合并的检测和估计成本约束的样本数量最小化。建立了用于最佳顺序关节检测和估计的通用框架。所得到的最佳检测器和估计器彼此紧密耦合,证明了单独的处理严格次优。然后,将针对非常通用的模型得出的理论结果应用于线性二次高斯(LQG)模型的若干问题,包括认知无线电中的动态频谱访问以及具有拓扑不确定性的智能电网中的状态估计。数值结果证实了所提方案优于单独处理子问题的常规方法的优越总体检测和估计性能。

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