Combined Docking-and-Recharging for a Flexible Aerial / Legged Marsupial Autonomous System

2023 IEEE AEROSPACE CONFERENCE(2023)

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摘要
In this work we address the flexible physical dockingand-release as well as recharging needs for a marsupial system comprising an autonomous tiltrotor hybrid Micro Aerial Vehicle and a high-end legged locomotion robot. Within persistent monitoring and emergency response situations, such aerial / ground robot teams can offer rapid situational awareness by taking off from the mobile ground robot and scouting a wide area from the sky. For this type of operational profile to retain its long-term effectiveness, regrouping via landing and docking of the aerial robot onboard the ground one is a key requirement. Moreover, onboard recharging is a necessity in order to perform systematic missions. We present a framework comprising: a novel landing mechanism with recharging capabilities embedded into its design, an external battery-based recharging extension for our previously developed power-harvesting Micro Aerial Vehicle module, as well as a strategy for the reliable landing and the docking-and-release between the two robots. We specifically address the need for this system to be ferried by a quadruped ground system while remaining reliable during aggressive legged locomotion when traversing harsh terrain. We present conclusive experimental validation studies by deploying our solution on a marsupial system comprising the MiniHawk micro tiltrotor and the Boston Dynamics Spot legged robot.
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关键词
-release,aerial robot,aggressive legged locomotion,autonomous tiltrotor hybrid MicroAerial Vehicle,developed power-harvesting MicroAerial Vehicle module,emergency response situations,flexible physical docking,framework comprising,high-end legged locomotion robot,long-term effectiveness,marsupial system,MiniHawk microtiltrotor,mobile ground robot,novel landing mechanism,onboard recharging,persistent monitoring,quadruped ground system,rapid situational awareness,recharging capabilities,reliable landing
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