This paper describes the development and testing of a passive sonar, multi-target tracker, and adaptive behavior that enable an autonomous underwater vehicle (AUV) to detect and actively track nearby surface… Click to show full abstract
This paper describes the development and testing of a passive sonar, multi-target tracker, and adaptive behavior that enable an autonomous underwater vehicle (AUV) to detect and actively track nearby surface vessels. A planar hullmounted hydrophone array, originally designed for active sonar, is repurposed for passive sonar use and provides acoustic data to a time-delay-and-sum beamformer that generates multiple angle-only contacts. A particle filter tracker assimilates these contacts with a single-hypothesis data association strategy to estimate the position and velocity of targets. Summary statistics of each track are periodically reported to an onboard database, along with qualitative labels. To improve tracking performance, detections trigger an adaptive behavior that maneuvers the AUV to maintain multiple targets in the field of view by minimizing the worst-case aspect angle deviation from broadside (across all targets). The tracking system is demonstrated through atsea experiments in which a Bluefin-21 AUV adaptively tracks multiple surface vessels, including another autonomous platform, in the approaches to Boston Harbor.
               
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