Siqi Liu,∗ Xianjun Shi,∗ Lingsong Di,∗ Liang Qin,∗ and Defeng Sun∗
[1] Z. Wang, W. Liu, H. Jing, and N. Qu, An optimization methodfor parallel test task scheduling, Acta Armamentarii, 39(2),2018, 399–404. [2] J. Fang, H. Xue, and M. Xiao, Parallel test tasks schedulingand resources configuration based on GA-ACA, Journalof Measurement Science and Instrumentation, 2(4), 2011,321–326. [3] Y. Qin and X. Liang, Research on parallel test task schedulingbased on hybrid genetic algorithm, Foreign ElectronicMeasurement Technology, 35(9), 2016, 72–75. [4] A. De Campos, A. T. R. Pozo, and E. P. Duarte, Parallel multi-swarm PSO strategies for solving many objective optimizationproblems, Journal of Parallel and Distributed Computing,126(3), 2019, 13–33. [5] X. Sun, X. Hu, X. Zhang, X. Huang, and C. Wang, Design ofparking lot system based on pheromone optimization ant colonyalgorithm, Journal of Chongqing Technology and BusinessUniversity (Natural Science Edition), 39(2), 2022, 1–7. [6] L. Chen, M. Xiao, F. Gao, and L. Zhao, Application of artificialbee colony algorithm in parallel test task scheduling, ComputerMeasurement & Control, 20(6), 2012, 1470–1472. [7] Z. Liu, Research on parallel test system task scheduling basedon Petri net and ant colony algorithm, Master’s Dissertation,Chongqing University, Chongqing, China, 2015. [8] Y. Liu, Y. Wu, and X. Deng, Research on parallel testing ofavionics system based on timed Petri net and artificial beecolony algorithm, Control Technology and Application, 33(11),2014, 37–41. [9] W. Li, Y. Wang, Y. Shang, and Z. Wu, Research on parallel testsystem task scheduling based on colored Petri net and IPSO,Computer Measurement & Control, 19(10), 2011, 2390–2393. [10] Y. Liu, M. Cong, H. Dong, D. Liu, and H. Yu, Time-optimalmotion planning for robot manipulators based on elitist geneticalgorithm, International Journal of Robotics and Automation,32(4), 2017, 396–405. [11] R. Senthilnathan, G. Vignesh, A. Venugopal, S. A. Kanna,and S. Sidhanathan, Optimization algorithms for nodeallocation in vision guided multi-robot pattern formation,International Journal of Robotics and Automation, 36(3), 2021,148–153. [12] M. Srinivas and L. M. Patnaik, Adaptive probabilitiesof crossover and mutation in genetic algorithms, IEEETransactions on System, Man, and Cybernetics, 24(4), 1994,656–667. [13] Y. Fang, X. Xiao, and J. Ge, Cloud computing task schedulingalgorithm based on improved genetic algorithm, in Proceedings3rd IEEE Conference on Information Technology, Networking,Electronic and Automation Control Conference (ITNEC),Chengdu, China, 2019, 852–856. [14] C. Choubey and J. Ohri, GWO-based tuning of LQR-PIDcontroller for a 3-DOF parallel manipulator, InternationalJournal of Robotics and Automation, 37(3), 2022, 248–256. [15] T. Jiang, and C. Zhang, Application of grey wolf optimizationfor solving combinatorial problems: Job shop and flexible jobshop scheduling cases, IEEE Access, 6(1), 2018, 26231–26240. [16] T. Jiang, Solving flexible job shop scheduling problem withhybrid grey wolf optimization algorithm, Control and Decision,33(3), 2018, 503–508. [17] J. Gu, T. Jiang, and H. Zhu, Multi-objective discrete greywolf optimization algorithm for solving job shop energy-savingscheduling problem, Computer Integrated ManufacturingSystems, 27(8), 2021, 2295–2306. [18] H. A. Bazoobandi, M. Khorashadizadeh, and M. Eftekhari,Solving task scheduling problem in multi-processors withgenetic algorithm and task duplication, in Proceedings of IEEEIranian Conference on Intelligent Systems, Bam, Brazil, 2014,1–4. [19] Y. Hu, Research on modeling of parallel automatic test systembased on colored Petri net theory, Doctoral Dissertation,University of Electronic Science and Technology, Chengdu,China, 2003. [20] H. Tang, Y. Li, and L. Wang, Solving algorithm for fuzzydistributed flexible job shop scheduling problem, Journal ofHuazhong University of Science and Technology (NaturalScience Edition), 50(6), 2022, 81–88. [21] C. Wang, Research on job shop scheduling problem based on greywolf optimization algorithm, Master’s Dissertation, LanzhouUniversity of Technology, Lanzhou, China, 2021. [22] R. Xia, M. Xiao, and J. Cheng, Optimization of parallel testtask scheduling based on hybrid genetic simulated annealingalgorithm, Journal of System Simulation, 19(15), 2007,3564–3567. [23] Z. Zheng, H. Fan, and S. Zhang, Parallel test task schedulingbased on improved discrete particle swarm optimization withtabu algorithm, Measurement and Control Technology, 33(9),2014, 143–145.
Important Links:
Go Back