自适应机会机载传感器共享

J. Beal, K. Usbeck, J. Loyall, Mason Rowe, J. Metzler
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引用次数: 14

摘要

机载传感器平台在民用和军事行动中变得越来越重要;然而,目前,它们的传感器通常在飞行时间的大部分时间内处于闲置状态,例如,当配备传感器的平台在往返传感任务地点的途中。因此,可以通过共享这些传感器来满足许多其他潜在信息消费者的感知需求,从而允许其他信息消费者在其他未安排的时间内机会地执行任务,并实现其他改进,例如减少实现目标所需的平台数量,并通过重复增加传感器任务的弹性。我们已经在信息生产者的任务驱动任务(MTIP)中实现了实现这些目标的原型系统,该系统利用基于代理的任务和传感器表示来实现快速、有效和自适应的机载传感器机会共享。通过使用公开可用的地理信息系统(GIS)数据集模拟大规模灾害响应场景,我们证明了任务位置的相关性可能导致传感器共享的高度潜力。然后,我们验证了MTIP的实现可以成功地执行这种共享,表明它增加了服务的传感器任务数量,减少了服务给定传感器任务集所需的平台数量,并且很好地适应了飞行路径的急剧变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Opportunistic Airborne Sensor Sharing
Airborne sensor platforms are becoming increasingly significant for both civilian and military operations; yet, at present, their sensors are typically idle for much of their flight time, e.g., while the sensor-equipped platform is in transit to and from the locations of sensing tasks. The sensing needs of many other potential information consumers might thus be served by sharing such sensors, thereby allowing other information consumers to opportunistically task them during their otherwise unscheduled time, as well as enabling other improvements, such as decreasing the number of platforms needed to achieve a goal and increasing the resilience of sensor tasks through duplication. We have implemented a prototype system realizing these goals in Mission-Driven Tasking of Information Producers (MTIP), which leverages an agent-based representation of tasks and sensors to enable fast, effective, and adaptive opportunistic sharing of airborne sensors. Using a simulated large-scale disaster-response scenario populated with publicly available Geographic Information System (GIS) datasets, we demonstrate that correlations in task location are likely to lead to a high degree of potential for sensor-sharing. We then validate that our implementation of MTIP can successfully carry out such sharing, showing that it increases the number of sensor tasks served, reduces the number of platforms required to serve a given set of sensor tasks, and adapts well to radical changes in flight path.
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