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Designing Teams of Unattended Ground Sensors Using Genetic Algorithms

机译:使用遗传算法设计无人值守地面传感器团队

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摘要

Improvements in sensor capabilities have driven the need for automated sensor allocation and management systems. Such systems provide a penalty-free test environment and valuable input to human operators by offering candidate solutions. These abilities lead, in turn, to savings in manpower and time. Determining an optimal team of cooperating sensors for military operations is a challenging task. There is a tradeoff between the desire to decrease the cost and the need to increase the sensing capabilities of a sensor suite. This work focuses on unattended ground sensor networks consisting of teams of small, inexpensive sensors. Given a possible configuration of enemy radar, our goal is to generate sensor suites that monitor as many enemy radar as possible while minimizing cost. In previous work, we have shown that genetic algorithms (GAs) can be used to evolve successful teams of sensors for this problem. This work extends our previous work in two ways: we use an improved simulator containing a more accurate model of radar and sensor capabilities for out fitness evaluations and we introduce two new genetic operators, insertion and deletion, that are expected to improve the GA's fine tuning abilities. Empirical results show that our GA approach produces near optimal results under a variety of enemy radar configurations using sensors with varying capabilities. Detection percentage remains stable regardless of changes in the enemy radar placements.
机译:传感器功能的提高推动了对自动化传感器分配和管理系统的需求。这样的系统通过提供候选解决方案,为操作人员提供了无损失的测试环境和有价值的输入。这些能力反过来节省了人力和时间。确定用于军事行动的协作传感器的最佳团队是一项艰巨的任务。在降低成本的期望与增加传感器套件的感测能力的需求之间需要权衡。这项工作着重于无人值守的地面传感器网络,该网络由小型廉价传感器组成的团队组成。给定敌方雷达的可能配置,我们的目标是生成可监视尽可能多的敌方雷达并最小化成本的传感器套件。在以前的工作中,我们已经证明了遗传算法(GA)可用于发展成功的传感器团队以解决此问题。这项工作以两种方式扩展了我们之前的工作:我们使用了改进的模拟器,其中包含更精确的雷达和传感器功能模型,可以进行适应性评估;我们引入了两个新的遗传算子(插入和删除),有望改善遗传算法的微调能力。实证结果表明,我们的遗传算法在各种敌方雷达配置下,使用具有不同功能的传感器,可以产生接近最佳的结果。无论敌方雷达位置如何变化,探测百分比均保持稳定。

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