Enabling Cost-effective Wireless Data Collection by Piggybacking on Delivery Drones in Agriculture

Author:

Xiang Chaocan1,Cheng Wenhui1,Zheng Xiao2,Wu Tao3,Fan Xiaochen4,Wang Yingjie5,Zhou Yanlin1,Xiao Fu6

Affiliation:

1. College of Computer Science, Chongqing University, China

2. 1) Anhui University of Technology, China; 2) Institute of Artificial Intelligence, Hefei Comprehensive National Science Center, China

3. National University of Defense Technology, China

4. 1) Institute for Electronics and Information Technology in Tianjin, Tsinghua University, China; 2) Department of Electronic Engineering, Tsinghua University, China; 3) Consulting Center for Strategic Assessment, Academy of Military Science, China

5. School of Computer and Control Engineering, Yantai University, China

6. School of Computer, Nanjing University of Posts and Telecommunications, China

Abstract

Drones have drawn considerable attention as the agents in wireless data collection for agricultural applications, by virtue of their three-dimensional mobility and dominant line-of-sight communication channels. Existing works mainly exploit dedicated drones via deployment and maintenance, which is insufficient regarding resource and cost-efficiency. In contrast, leveraging existing delivery drones for the data collection on their way of delivery, called delivery drones’ piggybacking , is a promising solution. For achieving such cost-efficiency, drone scheduling inevitably stands in front, but the delivery missions involved have escalated it to a wholly different and unexplored problem. As an attempt, we first survey 514 delivery workers and conduct field experiments; noticeably, the collection cost, which mostly comes from the energy consumption of drones’ piggybacking, is determined by the decisions on package-route scheduling and data collection time distribution . Based on such findings, we build a new model that jointly optimizes these two decisions to maximize data collection amount, subject to the collection budget and delivery constraints. Further model analysis finds it a Mixed Integer Non-Linear Programming problem, which is NP-hard. The major challenge stems from interdependence entangling the two decisions. For this point, we propose Delta , a \(\frac{1}{9+\delta } \) -approximation delivery drone scheduling algorithm. The key idea is to devise an approximate collection time distribution scheme leveraging energy slicing, which transforms the complex problem with two interdependent variables into a submodular function maximization problem only with one variable . The theoretical proofs and extensive evaluations verify the effectiveness and the near-optimal performance of Delta .

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications

Reference53 articles.

1. Accessing from the sky: A tutorial on UAV communications for 5G and beyond;Zeng Yong;Proceedings of the IEEE,2019

2. SkyCore

3. Multi-area throughput and energy optimization of UAV-aided cellular networks powered by solar panels and grid;Chiaraviglio Luca;IEEE Transactions on Mobile Computing,2021

4. Economic analysis of unmanned aerial vehicle (UAV) provided mobile services;Wang Xuehe;IEEE Transactions on Mobile Computing,2021

5. Agricultural management through wireless sensors and internet of things;Navulur Sridevi;International Journal of Electrical and Computer Engineering,2017

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