Computer Science ›› 2025, Vol. 52 ›› Issue (10): 336-347.doi: 10.11896/jsjkx.240800113

• Computer Network • Previous Articles     Next Articles

Wireless Charging Scheduling with Minimized Maximum Return-to-Work Time for Heterogeneous Mobile Rechargeable Devices

XU Jia, LIU Jingyi, XU Lijie, LIU Linfeng   

  1. Jiangsu Key Laboratory of Big Data Security and Intelligent Processing,Nanjing University of Posts and Telecommunications,Nanjing 210023,China
  • Received:2024-08-21 Revised:2024-11-10 Online:2025-10-15 Published:2025-10-14
  • About author:XU Jia,born in 1980,Ph.D,professor,Ph.D supervisor,is a senior member of CCF(No.18435S).His main research interests include crowdsourcing,edge computing and wireless rechargeable sensor networks.
  • Supported by:
    National Natural Science Foundation of China(62372249,62072254,62272237).

Abstract: With the widespread application of wireless rechargeable devices,wireless power transfer technology has become a key enabler for enhancing device battery life.However,most existing research focuses on optimizing charging efficiency,charging costs,and other charging-related performance metrics.Task-driven charging scheduling has received limited attention.In addition,the majority of charging systems assume homogeneity either in chargers or rechargeable devices,and there is a lack of focus on charging scheduling for mobile rechargeable devices.Considering the heterogeneity of rechargeable devices in real-world scena-rios,this paper proposes a heterogeneous wireless charging model and formalizes the problem of minimizing the maximum return-to-work time of mobile rechargeable devices in heterogeneous wireless rechargeable sensor networks.Initially,it studies the simplified problem of minimizing the maximum return-to-work time under the assumption of ignoring device movement time and energy consumption,and proposes an approximation algorithm.To address the more challenging problem of minimizing the maximum return-to-work time,this paper proposes a heuristic algorithm based on the idea of this approximate algorithm for this problem.The results of extensive simulation and field experiments demonstrate that the proposed algorithm has significant advantages over other algorithms.The proposed algorithm can reduce at most 38.78% maximum return-to-work time of devices comparing with the benchmark algorithms.

Key words: Wireless rechargeable sensor network,Mobile rechargeable devices,Charging scheduling,Heterogeneous wireless charging,Heuristic algorithm

CLC Number: 

  • TP393
[1]ULLO S L,SINHA G R.Advances in smart environment monitoring systems using IoT and sensors[J].Sensors,2020,20(11):3113.
[2]BILAL M,KANG S G.An authentication protocol for futuresensor networks[J].Sensors,2017,17(5):979.
[3]FEINBERG S,WILLIAMS R,HAGLER G S W,et al.Long-term evaluation of air sensor technology under ambient conditions in Denver,Colorado[J].AtmosphericMeasurement Techniques,2018,11(8):4605-4615.
[4]PASTOR-APARICIO A,SEGURA-GARCIA J,LOPEZ-BALLESTER J,et al.Psychoacoustic annoyance implementation with wireless acoustic sensor networks for monitoring in smart cities[J].IEEE Internet of Things Journal,2019,7(1):128-136.
[5]MARRIWALA N,RATHEE P.An approach to increase thewireless sensor network lifetime[C]//2012 World Congress on Information and Communication Technologies.Piscataway,NJ:IEEE,2012:495-499.
[6]ZHOU P,WANG C,YANG Y.Self-sustainable sensor networks with multi-source energy harvesting and wireless charging[C]//IEEE INFOCOM 2019-IEEE Conference on Computer Communications.Piscataway,NJ:IEEE,2019:1828-1836.
[7]KURS A,KARALIS A,MOFFATT R,et al.Wireless power transfer via strongly coupled magnetic resonances[J].Science,2007,317(5834):83-86.
[8]WU T,YANG P,DAI H.Charging on the Move:SchedulingStatic Chargers with Tunable Power for Mobile Devices[C]//2021 IEEE/ACM 29th International Symposium on Quality of Service(IWQOS).Piscataway,NJ:IEEE,2021:1-10.
[9]XU J,HU S,WU S,et al.Cooperative charging as service:Scheduling for mobile wireless rechargeable sensor networks[C]//2021 IEEE 41st International Conference on Distributed Computing Systems(ICDCS).Piscataway,NJ:IEEE,2021:685-695.
[10]WANG X,DAI H,HUANG H,et al.Robust scheduling for wireless charger networks[C]//IEEE INFOCOM 2019-IEEE Conference on Computer Communications.Piscataway,NJ:IEEE,2019:2323-2331.
[11]YANG P,WU T,DAI H,et al.MORE:Multi-node mobile charging scheduling for deadline constraints[J].ACM Transactions on Sensor Networks,2020,17(1):1-21.
[12]ZHANG J,GAO H,CHEN Q,et al.Task-oriented EnergyScheduling in Wireless Rechargeable Sensor Networks[J].ACM Transactions on Sensor Networks,2023,19(4):1-32.
[13]WU T,YANG P,DAI H,et al.Collaborated tasks-driven mobile charging and scheduling:A near optimal result[C]//IEEE INFOCOM 2019-IEEE Conference on Computer Communications.Piscataway,NJ:IEEE,2019:1810-1818.
[14]XUX L,CHEN C,HUANGFU X J,et al.Wireless charging scheduling algorithm of single mobile vehicle with limited energy[J].Computer Science,2018,45(3):110-116.
[15]KURS A,MOFFATT R,SOLJAČIC′ M.Simultaneous mid-range power transfer to multiple devices[J].Applied Physics Letters,2010,96(4):044102.
[16]WU S,DAI H,XU L,et al.Comprehensive Cost Optimization for Charger Deployment in Multi-hop Wireless Charging[J].IEEE Transactions on Mobile Computing,2023,22(8):4563-4577.
[17]WU S,XU L,DAI H,et al.Optimizing Comprehensive Cost of Charger Deployment in Multi-hop Wireless Charging[J].ACM Transactions on Sensor Networks,2023,19(4):1-24.
[18]JIN Y,XU J,WU S,et al.Enabling the Wireless Charging via Bus Network:Route Scheduling for Electric Vehicles[J].IEEE Transactions on Intelligent Transportation Systems,2021,22(3):1827-1839.
[19]HE S,CHEN J,JIANG F,et al.Energy provisioning in wireless rechargeable sensor networks[J].IEEE Transactions on Mobile Computing,2012,12(10):1931-1942.
[20]SUN Y,LIN C,DAI H,et al.Trading off charging and sensing for stochastic events monitoring in WRSNs[J].IEEE/ACM Transactions on Networking,2021,30(2):557-571.
[21]GHARBI A,HAOUARI M.An approximate decomposition algorithm for scheduling on parallel machines with heads and tails[J].Computers & Operations Research,2007,34(3):868-883.
[22]Powercast[EB/OL].[2024-05-18].http://www.powercastco.com.
[23]WU S,DAI H,LIU L,et al.Cooperative scheduling for directional wireless charging with spatial occupation[J].IEEE Transactions on Mobile Computing,2024,23(1):286-301.
[24]KOULAMAS C,KYPARISIS G J.Makespan minimization onuniform parallel machines with release times[J].European Journal of Operational Research,2004,157(1):262-266.
[25]LI Y,CHEN Y,CHEN C S,et al.Charging while moving:Deploying wireless chargers for powering wearable devices[J].IEEE Transactions on Vehicular Technology,2018,67(12):11575-11586.
[26]CHEN L,LIN S,HUANG H,et al.Charging path optimization in mobile networks[J].IEEE/ACM Transactions on Networking,2022,30(5):2262-2273.
[27]LIU T,WU B,XU W,et al.RLC:A reinforcement learning-based charging algorithm for mobile devices[J].ACM Transactions on Sensor Networks,2021,17(4):1-23.
[28]LIN C,YANG Z,DAI H,et al.Minimizing charging delay for directional charging[J].IEEE/ACM Transactions on Networking,2021,29(6):2478-2493.
[29]XU W,LIANG W,JIA X,et al.Minimizing the maximum charging delay of multiple mobile chargers under the multi-node energy charging scheme[J].IEEE Transactions on Mobile Computing,2020,20(5):1846-1861.
[30]SUN Y,LIN C,YANG W,et al.Charging dynamic sensorsthrough online learning[C]//IEEE INFOCOM 2023-IEEE Conference on Computer Communications.Piscataway,NJ:IEEE,2023:1-10.
[31]DING X,GUO J,WANG Y,et al.Task-driven charger placement and power allocation for wireless sensor networks[J].Ad Hoc Networks,2021,119:102556.
[32]PRIYADARSHANI S,TOMAR A,JANA P K.An efficientpartial charging scheme using multiple mobile chargers in wireless rechargeable sensor networks[J].Ad Hoc Networks,2021,113:102407.
[33]LIN C,GUO C,DENG J,et al.3DCS:A 3-D dynamic collaborative scheduling scheme for wireless rechargeable sensor networks with heterogeneous chargers[C]//2018 IEEE 38th International Conference on Distributed Computing Systems(ICDCS).Piscataway,NJ:IEEE,2018:311-320.
[34]JIA R,WU J,LU J,et al.Energy saving in heterogeneous wireless rechargeable sensor networks[C]//IEEE INFOCOM 2022-IEEE Conference on Computer Communications.Piscataway,NJ:IEEE,2022:1838-1847.
[35]CHEN L,LIN S,HUANG H.Charge me if youcan:Charging path optimization and scheduling in mobile networks[C]//Proceedings of the 17th ACM International Symposium on Mobile Ad Hoc Networking and Computing.ACM,2016:101-110.
[36]QI N,HUANG Z,ZHOU F,et al.A task-driven sequentialoverlapping coalition formation game for resource allocation in heterogeneous UAV networks[J].IEEE Transactions on Mobile Computing,2023,22(8):4439-4455.
[37]AL-SHAYEA A M,SALEH M,ALATEFI M,et al.Scheduling two identical parallel machines subjected to release times,delivery times and unavailability constraints[J].Processes,2020,8(9):1025.
[38]SCHUTTEN J M J,LEUSSINK R A M.Parallel machinescheduling with release dates,due dates and family setup times[J].International Journal of Production Economics,1996,46:119-125.
[39]LIU P,LU X.Online Scheduling on Two Parallel Machines with Release Times and Delivery Times[C]//International Confe-rence on Combinatorial Optimization and Applications.Berlin:Springer,2013:96-105.
[40]LI K,YANG S.Heuristic algorithms for scheduling on uniform parallel machines with heads and tails[J].Journal of Systems Engineering and Electronics,2011,22(3):462-467.
[41]DAI H,WANG X,LIU A X,et al.Optimizing wireless charger placement for directional charging[C]//IEEE INFOCOM 2017-IEEE Conference on Computer Communications.Piscataway,NJ:IEEE,2017:1-9.
[42]WANG Z,TAO J,XU Y,et al.Toward the Minimal Wait-forDelay for Rechargeable WSNs with Multiple Mobile Chargers[J].ACM Transactions on Sensor Networks,2023,19(4):1-24.
[43]Clearpath Robotics Dingo[EB/OL].[2024-05-18].https://clearpathrobotics.com/.
[44]KOULAMAS C,KYPARISIS G J.Scheduling on uniform parallel machines to minimize maximum lateness[J].Operations Research Letters,2000,26(4):175-179.
[1] HU Yongqing, YANG Han, LIU Ziyuan, QING Guangjun, DAI Qinglong. ACCF:Time Prediction Mechanism-driven Top-k Flow Measurement [J]. Computer Science, 2025, 52(10): 98-105.
[2] DUAN Pengsong, ZHANG Yihang, FANG Tao, CAO Yangjie, WANG Chao. WiLCount:A Lightweight Crowd Counting Model for Wireless Perception Scenarios [J]. Computer Science, 2025, 52(10): 317-327.
[3] WANG Pengrui, HU Yuxiang, CUI Pengshuai, DONG Yongji, XIA Jiqiang. SRv6 Functional Conformance Verification Mechanism Based on the Programmable Data Plane [J]. Computer Science, 2025, 52(10): 328-335.
[4] WU Moxun, PENG Zeshun, YU Minghe, LI Xiaohua, DONG Xiaomei, NIE Tiezheng, YU Ge. Approach for Lightweight Verifiable Data Management Based on Blockchains [J]. Computer Science, 2025, 52(10): 348-356.
[5] HE Hao, ZHANG Hui. Intrusion Detection Method Based on Improved Active Learning [J]. Computer Science, 2025, 52(10): 357-365.
[6] ZHU Ziyi, ZHANG Jianhui, ZENG Junjieand ZHANG Hongyuan. Security-aware Service Function Chain Deployment Method Based on Deep ReinforcementLearning [J]. Computer Science, 2025, 52(10): 404-411.
[7] WU Jiagao, YI Jing, ZHOU Zehui, LIU Linfeng. Personalized Federated Learning Framework for Long-tailed Heterogeneous Data [J]. Computer Science, 2025, 52(9): 232-240.
[8] SHEN Tao, ZHANG Xiuzai, XU Dai. Improved RT-DETR Algorithm for Small Object Detection in Remote Sensing Images [J]. Computer Science, 2025, 52(8): 214-221.
[9] LONG Tie, XIAO Fu, FAN Weibei, HE Xin, WANG Junchang. Cubic+:Enhanced Cubic Congestion Control for Cross-datacenter Networks [J]. Computer Science, 2025, 52(8): 335-342.
[10] YE Miao, WANG Jue, JIANG Qiuxiang, WANG Yong. SDN-based Integrated Communication and Storage Edge In-network Storage Node Selection Method [J]. Computer Science, 2025, 52(8): 343-353.
[11] FAN Xinggang, JIANG Xinyang, GU Wenting, XU Juntao, YANG Youdong, LI Qiang. Effective Task Offloading Strategy Based on Heterogeneous Nodes [J]. Computer Science, 2025, 52(8): 354-362.
[12] ZHAO Jihong, MA Jian, LI Qianwen, NING Lijuan. Service Function Chain Deployment Method Based on VNF Divided Backup Mechanisms [J]. Computer Science, 2025, 52(7): 287-294.
[13] LIU Wenfei, LIU Jiafei, WANG Qi, WU Jingli, LI Gaoshi. Component Reliability Analysis of Interconnected Networks Based on Star Graph [J]. Computer Science, 2025, 52(7): 295-306.
[14] CHEN Shangyu, HU Hongchao, ZHANG Shuai, ZHOU Dacheng, YANG Xiaohan. Tor Multipath Selection Based on Threaten Awareness [J]. Computer Science, 2025, 52(7): 363-371.
[15] ZHOU Lei, SHI Huaifeng, YANG Kai, WANG Rui, LIU Chaofan. Intelligent Prediction of Network Traffic Based on Large Language Model [J]. Computer Science, 2025, 52(6A): 241100058-7.
Viewed
Full text


Abstract

Cited

  Shared   
  Discussed   
No Suggested Reading articles found!