Secure learning-based coordinated UAV–UGV framework design for medical waste transportation

D. Sharma, Jeremy Lin
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Abstract

A cost-effective solution with less human involvement must be developed for medical waste (MW) transportation. A learning-based coordinated unmanned aerial vehicle–unmanned ground vehicle (UAV–UGV) (CUU) framework, currently unavoidable use, with a transfer learning algorithm is suggested. A transfer learning algorithm is implemented for collision-free optimal path planning. In the framework, mobile ground robots collect medical waste from waste disposal centers through the pick-and-place technique. Then, networked drones lift the collected medical waste and fly through a predefined optimal trajectory. The framework considers the dynamic behavior of the environment and explores the actions for picking, placing, and dropping medical waste. A deep reinforcement learning mechanism has been incorporated for each successful or unsuccessful action by the framework to provide the rewards. With optimal policies, the coordinated UAV and UGV change their actions in dynamic conditions. An optimal cost of transportation of medical waste by the proposed framework is created by considering the weight of MW packets as the payload capacity of a CUU framework, the cost of steering the UAV and UGV, and the time required to transport the MW. The effectiveness of the CUU framework for MW transportation has been tested using MATLAB. The MW transportation data have been encrypted using an encryption key for security and authenticity.
基于安全学习的 UAV-UGV 医疗废物运输协调框架设计
必须为医疗废物(MW)的运输开发一种成本效益高、人力参与少的解决方案。建议采用基于学习的无人飞行器-无人地面车辆(UAV-UGV)(CUU)协调框架,该框架目前不可避免地使用转移学习算法。转移学习算法用于无碰撞的最优路径规划。在该框架中,移动地面机器人通过拾放技术从废物处理中心收集医疗废物。然后,联网无人机将收集到的医疗废物吊起,并通过预定义的最优轨迹飞行。该框架考虑了环境的动态行为,并探索了拾取、放置和丢弃医疗废物的行动。该框架为每个成功或不成功的行动纳入了深度强化学习机制,以提供奖励。有了最优策略,无人驾驶飞行器(UAV)和无人驾驶地形车(UGV)就能在动态条件下改变行动。考虑到作为 CUU 框架有效载荷容量的医疗废物包的重量、无人飞行器和 UGV 的转向成本以及运输医疗废物所需的时间,拟议框架创建了运输医疗废物的最佳成本。我们使用 MATLAB 测试了 CUU 框架在运输小武器方面的有效性。为确保安全性和真实性,已使用加密密钥对小武器运输数据进行加密。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
3.90
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