Wireless energy transfer (WET) is a ground-breaking technology for cutting the last wire between mobile sensors and power grids in smart cities. Yet, WET only offers effective transmission of energy over a short distance. Robotic WET is an emerging paradigm that mounts the energy transmitter on a mobile robot and navigates the robot through different regions in a large area to charge remote energy harvesters. However, it is challenging to determine the robotic charging strategy in an unknown and dynamic environment due to the uncertainty of obstacles. This paper proposes a hardware-in-the-loop joint optimization framework that offers three distinctive features: 1) efficient model updates and re-optimization based on the last-round experimental data; 2) iterative refinement of the anchor list for adaptation to different environments; 3) verification of algorithms in a high-fidelity Gazebo simulator and a multi-robot testbed. Experimental results show that the proposed framework significantly saves the WET mission completion time while satisfying collision avoidance and energy harvesting constraints.
翻译:无线能源传输(WET)是切断智能城市移动传感器和电网之间最后一条电线的突破性技术。然而,WET仅提供短距离有效传输能源。机器人式WET是一个新兴范例,将能源发射机挂在移动机器人上,在大片地区通过不同区域对机器人进行导航,向远程能源采集器收费。然而,由于障碍的不确定性,在未知和动态环境中确定机器人充电战略具有挑战性。本文件提议了一个硬件在运行中联合优化框架,提供三个不同的特点:(1) 高效的模型更新和根据最后一轮实验数据重新优化能源;(2) 迭接地完善用于不同环境的定位列表;(3) 核实高纤维加泽博模拟器和多机器人测试台的算法。实验结果表明,拟议的框架在满足避免碰撞和能源采集的限制的同时,大大节省了WET任务的完成时间。