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A hybrid genetic algorithm for generating optimal synthetic aperture radar target servicing strategies

机译:一种用于产生最优合成孔径雷达目标服务策略的混合遗传算法

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The purpose of this research was to develop a software tool for generating optimal target servicing strategies for imaging fixed ground targets with a spaceborne SAR. Given a list of targets and their corresponding geographic locations and relative priorities, this tool generates a target servicing strategy that maximizes the overall collection utility based on the number of targets successfully imaged weighted by their relative priorities. This tool is specifically designed to maximize sensor utility in the case of a target-rich environment. For small numbers of targets, a target servicing strategy is unnecessary, and the targets may be imaged in any order without paying any particular attention to geographic proximity or target priority. However, for large, geographically diverse target decks, the order in which targets are serviced is of great importance. The target servicing problem is shown to be of the class NP-hard, and thus cannot be solved to optimality in polynomial time. Therefore, global search techniques such as genetic algorithms are called for. A unique hybrid algorithm that combines genetic algorithms with simulated annealing has been developed to generate optimized target servicing strategies. The performance of this hybrid algorithm was compared against that of three different greedy algorithms in a series of 20 test cases. Preliminary results indicate consistent performance improvements over greedy algorithms for target-rich environments. Over the course of 20 trials, the hybrid optimizing algorithm produced weighted collection scores that were on average 10% higher than the best greedy algorithm.
机译:本研究的目的是开发一种用于生成具有与星载SAR成像固定地面目标的最佳目标服务策略的软件工具。鉴于目标列表及其相应的地理位置和相对优先级,此工具生成目标维修策略,该策略基于成功成功成像由其相对优先级加权的目标数量来最大化整体集合实用程序。该工具专门设计用于最大化目标富含目标的环境的传感器实用程序。对于少量目标,不需要目标服务策略,并且目标可以在任何顺序上成像,而无需支付地理邻近或目标优先级的任何特殊关注。然而,对于大型地理上不同的目标甲板,目标是服务的顺序非常重要。目标维修问题显示为阶级NP - 硬,因此不能解决多项式时间中的最优性。因此,调用全球搜索技术,例如遗传算法。已经开发出与模拟退火结合遗传算法的独特混合算法,以产生优化的目标服务策略。将该混合算法的性能与三种不同贪婪算法中的一系列20个测试用例进行了比较。初步结果表明,对目标富含环境的贪婪算法的一致性改进。在20个试验过程中,混合优化算法产生了平均比最佳贪婪算法高10%的加权收集得分。

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