Autonomous Recharging and Flight Mission Planning for Battery-Operated Autonomous Drones

Autonomous drones (also known as unmanned aerial vehicles) are increasingly popular for diverse applications of light-weight delivery and as substitutions of manned operations in remote locations. The computing systems for drones are becoming a new venue for research in cyber-physical systems. Autonomous drones require integrated intelligent decision systems to control and manage their flight missions in the absence of human operators. One of the most crucial aspects of drone mission control and management is related to the optimization of battery lifetime. Typical drones are powered by on-board batteries, with limited capacity. But drones are expected to carry out long missions. Thus, a fully automated management system that can optimize the operations of battery-operated autonomous drones to extend their operation time is highly desirable. This paper presents several contributions to automated management systems for battery-operated drones: (1) We conduct empirical studies to model the battery performance of drones, considering various flight scenarios. (2) We study a joint problem of flight mission planning and recharging optimization for drones with an objective to complete a tour mission for a set of sites of interest in the shortest time. This problem captures diverse applications of delivery and remote operations by drones. (3) We present algorithms for solving the problem of flight mission planning and recharging optimization. We implemented our algorithms in a drone management system, which supports real-time flight path tracking and re-computation in dynamic environments. We evaluated the results of our algorithms using data from empirical studies. (4) To allow fully autonomous recharging of drones, we also develop a robotic charging system prototype that can recharge drones autonomously by our drone management system.

[1]  Roland Siegwart,et al.  PID vs LQ control techniques applied to an indoor micro quadrotor , 2004, 2004 IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS) (IEEE Cat. No.04CH37566).

[2]  Chi-Kin Chau,et al.  Personalized Prediction of Vehicle Energy Consumption Based on Participatory Sensing , 2016, IEEE Transactions on Intelligent Transportation Systems.

[3]  Jelena Kovacevic,et al.  Energy-efficient route planning for autonomous aerial vehicles based on graph signal recovery , 2015, 2015 53rd Annual Allerton Conference on Communication, Control, and Computing (Allerton).

[4]  Khaled M. Elbassioni,et al.  Drive Mode Optimization and Path Planning for Plug-In Hybrid Electric Vehicles , 2016, IEEE Transactions on Intelligent Transportation Systems.

[5]  Tarek F. Abdelzaher,et al.  GreenGPS: a participatory sensing fuel-efficient maps application , 2010, MobiSys '10.

[6]  Kang G. Shin,et al.  Real-time prediction of battery power requirements for electric vehicles , 2013, 2013 ACM/IEEE International Conference on Cyber-Physical Systems (ICCPS).

[7]  Roland Siegwart,et al.  Introduction to Autonomous Mobile Robots , 2004 .

[8]  Kamin Whitehouse,et al.  Reactive Control of Autonomous Drones , 2016, MobiSys.

[9]  Kenzo Nonami,et al.  Autonomous Flying Robots: Unmanned Aerial Vehicles and Micro Aerial Vehicles , 2010 .

[10]  Nicos Christofides Worst-Case Analysis of a New Heuristic for the Travelling Salesman Problem , 1976, Operations Research Forum.

[11]  Markus Lienkamp,et al.  A modular and dynamic approach to predict the energy consumption of electric vehicles , 2013 .

[12]  Samir Khuller,et al.  To fill or not to fill: The gas station problem , 2007, TALG.

[13]  M. Abou Zeid,et al.  A statistical model of vehicle emissions and fuel consumption , 2002, Proceedings. The IEEE 5th International Conference on Intelligent Transportation Systems.

[14]  Wang Yi,et al.  Speed planning for solar-powered electric vehicles , 2016, e-Energy.

[15]  Majid Khonji,et al.  Autonomous Inductive Charging System for Battery-operated Electric Drones , 2017, e-Energy.

[16]  Erik Wilhelm,et al.  A Participatory Sensing Approach for Personalized Distance-to-Empty Prediction and Green Telematics , 2015, e-Energy.