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首页> 外文期刊>Parallel and Distributed Systems, IEEE Transactions on >General Maximal Lifetime Sensor-Target Surveillance Problem and Its Solution
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General Maximal Lifetime Sensor-Target Surveillance Problem and Its Solution

机译:一般最大寿命传感器目标监视问题及其解决方案

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We address a new and general maximal lifetime problem in sensor-target surveillance. We assume that each sensor can watch at most k targets (k ge 1) and each target should be watched by h sensors (h ge 1) at any time. The problem is to schedule sensors to watch targets and forward the sensed data to a base station such that the lifetime of the surveillance network is maximized. This general problem includes the existing ones as its special cases (k = 1 and h = 1 in [12] and k = 1 and h ge 2 in [13]). It is also important in practice because some sensors can monitor multiple or all targets within their surveillance ranges and multisensor fusion (i.e., watching a target by multiple sensors) gives better surveillance results. The problem involves several subproblems and one of them is a new matching problem called (k, h)-matching. The (k, h)-matching problem is a generalized version of the classic bipartite matching problem (when k = h = 1, (k, h)-matching becomes bipartite matching). We design an efficient (k, h)-matching algorithm to solve the (k, h)-matching problem and then solve the general maximal lifetime problem. As a byproduct of this study, the (k, h)-matching problem and the proposed (k, h)-matching algorithm can potentially be applied to other problems in computer science and operations research.
机译:我们解决了传感器目标监视中的一个新的和一般的最大寿命问题。我们假设每个传感器最多可以监视k个目标(k ge 1),并且每个目标应随时由h个传感器(h ge 1)监视。问题是安排传感器监视目标,并将感测到的数据转发到基站,以使监视网络的寿命最大化。这个一般问题包括现有问题作为其特殊情况([12]中的k = 1和h = 1,[13]中的k = 1和h ge 2)。在实践中也很重要,因为某些传感器可以监视其监视范围内的多个或所有目标,并且多传感器融合(即通过多个传感器监视目标)可提供更好的监视结果。该问题涉及几个子问题,其中一个是称为(k,h)-matching的新匹配问题。 (k,h)匹配问题是经典二分匹配问题的广义形式(当k = h = 1时,(k,h)匹配变成二分匹配)。我们设计了一种有效的(k,h)匹配算法来解决(k,h)匹配问题,然后解决一般的最大寿命问题。作为本研究的副产品,(k,h)匹配问题和提出的(k,h)匹配算法可以潜在地应用于计算机科学和运筹学中的其他问题。

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