Vehicle Scheduling Model and Optimization of Crowdsourcing Logistics Distribution
DU Zi-chao1, LU Fu-qiang2, WANG Su-xin1,3, WANG Lei-zhen1,3
1. School of Information Science & Engineering, Northeastern University, Shenyang 110819, China; 2. School of Economics and Management, Yanshan University, Qinhuangdao 066004, China; 3. School of Control Engineering, Northeastern University at Qinhuangdao, Qinhuangdao 066004, China.
DU Zi-chao, LU Fu-qiang, WANG Su-xin, WANG Lei-zhen. Vehicle Scheduling Model and Optimization of Crowdsourcing Logistics Distribution[J]. Journal of Northeastern University(Natural Science), 2021, 42(8): 1210-1216.
[1]Wang Y,Zhang D X,Liu Q,et al.Towards enhancing the last-mile delivery:an effective crowd-tasking model with scalable solutions[J].Transportation Research Part E:Logistics and Transportation Review,2016,93:279-293. [2]Dupljanin D,Mirkovic M,Dumnic S,et al.Urban crowdsourced last mile delivery:mode of transport effects on fleet performance[J].International Journal of Simulation Modelling,2019,18(3):441-452. [3]Akeb H,Moncef B,Durand B.Building a collaborative solution in dense urban city settings to enhance parcel delivery:an effective crowd model in Paris[J].Transportation Research Part E:Logistics and Transportation Review,2018,119:223-233. [4]王文杰,陈颖,蒋帅杰.考虑平台竞争的众包物流社会配送服务最优定价策略[J].运筹与管理,2020,29(10):11-20.(Wang Wen-jie,Chen Ying,Jiang Shuai-jie.Optimal design of a service system with free experience service under a dedicated service discipline[J].Operations Research and Management Science,2020,29(10):11-20.) [5]刘悦秋,李军,潘旭.基于大众参与度的众包物流定价策略研究[J].西南交通大学学报(社会科学版),2019,20(1):107-115.(Liu Yue-qiu,Li Jun,Pan Xu.Research on pricing strategy of crowdsourcing distribution based on public participation[J].Journal of Southwest Jiaotong University(Social Sciences),2019,20(1):107-115.) [6]Castillo V E,Bell J E,Rose W J,et al.Crowdsourcing last mile delivery:strategic implications and future research directions[J].Journal of Business Logistics,2018,39(1):7-25. [7]Li L X,Wang X,Rezaei J.A Bayesian best-worst method-based multicriteria competence analysis of crowdsourcing delivery personnel[J].Complexity,2020(6):1-17. [8]Devari A,Nikolaev A G,He Q.Crowdsourcing the last mile delivery of online orders by exploiting the social networks of retail store customers[J].Transportation Research Part E:Logistics and Transportation Review,2017,105:105-122. [9]Sampaio A,Savelsbergh M,Veelenturf L P,et al.Delivery systems with crowd-sourced drivers:a pickup and delivery problem with transfers[J].Networks,2020,76(2):1-24. [10]Rechavi A,Toch E.Crowd logistics:understanding auction-based pricing and couriers’ strategies in crowdsourcing package delivery[J/OL].Journal of Intelligent Transportation Systems,2020 [2020-11-29].https://doi.org/10.1080/15472450.2020.1797503. [11]Kafle N,Zou B,Lin J.Design and modeling of a crowdsource-enabled system for urban parcel relay and delivery[J].Transportation Research Part B:Methodological,2017,99:62-82. [12]Alnaggar A,Gzara F,Bookbinder J H.Crowdsourced delivery:a review of platforms and academic literature[J].Omega,2021,98:102139. [13]Meng S,Kang J S,Chi K,et al.Gearbox fault diagnosis through quantum particle swarm optimization algorithm and kernel extreme learning machine[J].Journal of Vibroengineering,2020,22(6):1399-1414. [14]Zhang Z J,Wang W L,Xia R F,et al.Achieving large and distant ancestral genome inference by using an improved discrete quantum-behaved particle swarm optimization algorithm[J/OL].BMC Bioinformatics,2020 [2020-11-18].https://bmcbioinformatics.biomedcentral.com/articles/10.1186/s12859-020-03833-7. [15]Su X Y,Wei S W.Sliding mode control design for active suspension systems using quantum particle swarm optimisation[J/OL].International Journal of Vehicle Design,2020,81(1/2)[2020-11-18].http://dx.doi.org/10.1504/IJVD.2019.10033091. [16]Zhao X G,Liang J,Meng J,et al.An improved quantum particle swarm optimization algorithm for environmental economic dispatch[J].Expert Systems with Applications,2020,152:113370. [17]Gan W Y,Zhu D Q,Ji D X.QPSO-model predictive control-based approach to dynamic trajectory tracking control for unmanned underwater vehicles[J].Ocean Engineering,2018,158:208-220. [18]Liu R C,Li J X,Fan J.A dynamic multiple populations particle swarm optimization algorithm based on decomposition and prediction[J].Applied Soft Computing,2018,73:434-459. [19]Zhang D G,Wang J X,Fan H R,et al.New method of traffic flow forecasting based on quantum particle swarm optimization strategy for intelligent transportation system[J].International Journal of Communication Systems,2020,34(1):1-20.