代表性论文专著
SCI论文:
2023年
[1] Xu H W, Qin W*, Sun Y N, et al. Attention mechanism-based deep learning for heat load prediction in blast furnace ironmaking process[J]. Journal of Intelligent Manufacturing, 2023: 1-14.
[2] Zhu J Y, Qin W*, Hu J H, et al. Influential process nodes identification strategy for aircraft assembly system based on complex network and improved PageRank[J]. Advanced Engineering Informatics, 2023:1-14.
[3] Qin W*, Zhuang Z, Sun Y, et al. An available-to-promise stochastic model for order promising based on dynamic resource reservation policy[J]. International Journal of Production Research, 2023, 61(16): 5525-5542.
[4] Qin W*, Hu Q, Zhuang Z*, et al. IPPE-PCR: a novel 6D pose estimation method based on point cloud repair for texture-less and occluded industrial parts[J]. Journal of Intelligent Manufacturing, 2023, 34(6): 2797-2807.
[5] Sun Y N, Chen Q L, Hu J H, Qin W*, et al. An integrated CRN-SVR approach for the quality consistency improvement in a diesel engine assembly process[J]. International Journal of Computer Integrated Manufacturing, 2023: 1-16.
[6] Sun Y N, Qin W, Hu J H, et al. A causal model-inspired automatic feature-selection method for developing data-driven soft sensors in complex industrial processes[J]. Engineering, 2023, 22: 82-93.
2022年
[1] Sun Y-N, Qin W*, Xu H-W, et al. A multiphase information fusion strategy for data-driven quality prediction of industrial batch processes [J]. Information Sciences, 2022, 608: 81-95.
[2 ]Xu H-W, Qin W*, Lv Y-L, et al. Data-Driven Adaptive Virtual Metrology for Yield Prediction in Multi-Batch Wafers[J]. IEEE Transactions on Industrial Informatics, 2022. doi:10.1109/TII.2022.3162268.
[3] Qin W*, Zhuang Z, Liu Y, et al. Sustainable service oriented equipment maintenance management of steel enterprises using a two-stage optimization approach[J]. Robotics and Computer-Integrated Manufacturing, 2022, 75: 102311.
[4]Zhuang Z, Li Y, Sun Y, Qin W*, et al. Network-based dynamic dispatching rule generation mechanism for real-time production scheduling problems with dynamic job arrivals[J]. Robotics and Computer-Integrated Manufacturing, 2022, 73: 102261.
[5]Zhuang Z, Zhang Z, Teng H, Qin W*, et al. Optimization for integrated scheduling of intelligent handling equipment with bidirectional flows and limited buffers at automated container terminals[J]. Computers & Operations Research, 2022: 105863.
[6]Qin W*, Hu Q, et al. A novel 6D pose estimation method for texture-less and occluded industrial parts. Journal of Intelligent Manufacturing, 2022.
2021年
[1] Qin W*, Sun Y N, Zhuang Z L, et al. Multi-agent reinforcement learning-based dynamic task assignment for vehicles in urban transportation system[J]. International Journal of Production Economics, 2021, 240: 108251.
[2] Qin W*, Zhuang Z, Guo L, et al. A hybrid multi-class imbalanced learning method for predicting the quality level of diesel engines[J]. Journal of Manufacturing Systems, 2022, 62: 846-856.
[3] Qin W*, Zhuang Z, Zhou Y, et al. Dynamic dispatching for interbay automated material handling with lot targeting using improved parallel multiple-objective genetic algorithm[J]. Computers & Operations Research, 2021, 131: 105264.
[4] Qin W*, Zhuang Z, Huang Z, et al. A novel reinforcement learning-based hyper-heuristic for heterogeneous vehicle routing problem[J]. Computers & Industrial Engineering, 2021, 156: 107252.
[5] Qin W*, Zhuang Z, Guo L, et al. A hybrid multi-class imbalanced learning method for predicting the quality level of diesel engines[J]. Journal of Manufacturing Systems, 2022, 62: 846-856.
[6] Sun Y N, Zhuang Z L, Xu H W, Qin W* et al. Data-driven modeling and analysis based on complex network for multimode recognition of industrial processes[J]. Journal of Manufacturing Systems, 2022, 62: 915-924.
[7] Sun Y N, Qin W*, Zhuang Z L. Nonparametric-copula-entropy and network deconvolution method for causal discovery in complex manufacturing systems[J]. Journal of Intelligent Manufacturing, 2021, 1-15.
[8] Sun Y N, Qin W*, Zhuang Z L, Xu H W. An adaptive fault detection and root-cause analysis scheme for complex industrial processes using moving window KPCA and information geometric causal inference[J]. Journal of Intelligent Manufacturing, 2021, 32: 2007-2021.
2020年
[1] Zhuang Z, Huang Z, Sun Y, Qin W*, et al. Optimization for cooperative task planning of heterogeneous multi-robot systems in an order picking warehouse[J]. Engineering Optimization, 2021, 53(10): 1715-1732.
[2] Zhuang Z, Chen Y, Sun Y, and Qin W*. Complex scheduling network: an objective performance testing platform for evaluating vital nodes identification algorithms [J]. The International Journal of Advanced Manufacturing Technology. 2020, 111: 273–282.
[3] Zhuang Z, Guo L, Huang Z, Qin W*,et al. DyS-IENN: a novel multiclass imbalanced learning method for early warning of tardiness in rocket final assembly process[J]. Journal of Intelligent Manufacturing, 2021, 32(8): 2197-2207.
[4] Datta N, Zhuang Z, Qin W*. Experimental study of a liquid desiccant regeneration system: performance analysis for high feed concentrations[J]. Clean Technologies and Environmental Policy, 2020, 22(6): 1255-1267.
2019年
[1] Qin W*, Lv H, Liu C, et al. Remaining useful life prediction for lithium-ion batteries using particle filter and artificial neural network [J]. Industrial Management & Data Systems. 2019.
[2] Qin W*, Zhuang Z, Liu Y, et al. A two-stage ant colony algorithm for hybrid flow shop scheduling with lot sizing and calendar constraints in printed circuit board assembly[J]. Computers & Industrial Engineering, 2019, 138: 106115.
[3] Zhuang Z, Lv H, Xu J, Huang Z, and Qin W*. A Deep Learning Method for Bearing Fault Diagnosis through Stacked Residual Dilated Convolutions [J]. Applied Sciences, 2019, 9(9), 1823.
[4] Zhuang Z, Lu Z, Huang Z, Liu C, and Qin W*. A novel complex network based dynamic rule selection approach for open shop scheduling problem with release dates [J]. Mathematical Biosciences and Engineering, 2019, 16(5): 4491-4505.
2018年
[1] Qin W*, Zha D, Zhang J. An effective approach for causal variables analysis in diesel engine production by using mutual information and network deconvolution[J]. Journal of Intelligent Manufacturing, 2020, 31(7): 1661-1671.
[2] Qin W*, Zhang J, and Song D.L. An improved ant colony algorithm for dynamic hybrid flow shop scheduling with uncertain processing time [J]. Journal of Intelligent Manufacturing. 2018, 29(4): 891-904.
[3] Jahanshahi P, Qin W*, Zhang J, and Erfan Z. Designing a non-invasive surface acoustic resonator for ultra-high sensitive ethanol detection for an on-the-spot health monitoring system [J]. Biotechnology and Bioprocess Engineering. 2018, 23(4), 394-404.
[4] Lv Y, Qin W, Yang J and Zhang J*. (2018). Adjustment mode decision based on support vector data description and evidence theory for assembly lines. Industrial Management & Data Systems, 118(8), 1711-1726.
[5] Wang J, Zheng P, Qin W, et al. A novel resilient scheduling paradigm integrating operation and design for manufacturing systems with uncertainties[J]. Enterprise Information Systems, 2019, 13(4): 430-447.
2017年
[1] W.Qin*, Ray.Y.Zhong, H.Y.Dai, and Z.L.Zhuang. An Assessment Model for RFID Impacts on Prevention and Visibility of Inventory Inaccuracy Presence [J]. Advanced Engineering Informatics. 2017, 34: 70-79.
[2] Lv Y, Zhang J, Qin W. A genetic regulatory network-based method for dynamic hybrid flow shop scheduling with uncertain processing times[J]. Applied sciences, 2017, 7(1): 23.
[3] Lv Y, Zhang J*, Qin W. A genetic regulatory network-based sequencing method for mixed-model assembly lines [J]. Advances in Production Engineering & Management. 2017, 12(1): 62-74.
[4] Pan C, Zhang J*, Qin W. Real-time OHT Dispatching Mechanism for the Interbay Automated Material Handling System with Shortcuts and Bypasses [J]. Chinese Journal of Mechanical Engineering. 2017, 30(3): 663-675.
2016年及之前
[1] P.Jahanshahi*, W.Qin, J.Zhang, M.Ghomeishi, S.D.Sekaran, and F.R.Mahamd Adikan. Kinetic analysis of IgM monoclonal antibodies for determination of dengue sample concentration using SPR technique [J]. Bioengineered. 2015, 8(3): 239-247.
[2] J.Zhang*, W.Qin, and L.H.Wu. A performance analytical model of automated material handling system for semiconductor wafer fabrication system [J]. International Journal of Production Research. 2015, 54(6): 1650-1669.
[3] J.Zhang*, W.Qin, L.H.Wu, and W.B.Zhai. Fuzzy neural network-based rescheduling decision mechanism for semiconductor manufacturing [J]. Computers in Industry. 2014, 65:1115-1125.
[4] W.Qin, J.Zhang*, and Y.B.Sun. Multiple-objective scheduling for interbay AMHS by using genetic-programming-based composite dispatching rules generator [J]. Computers in Industry. 2013, 64(6): 694-707.
[5] W.Qin, J.Zhang*, and Y.B.Sun. Dynamic dispatching for interbay material handling by using modified Hungarian algorithm and fuzzy-logic-based control [J]. International Journal of Advanced Manufacturing Technology. 2013, 67(1): 295-309.
[6] Qu, T., Yang, H. D., Huang, G. Q., Zhang, Y. F., Luo, H., & Qin, W. (2012). A case of implementing RFID-based real-time shop-floor material management for household electrical appliance manufacturers. Journal of Intelligent Manufacturing, 23(6), 2343-2356.
[7] W.Qin, and Geroge.Q.Huang*. A Two-Level Genetic Algorithm for Scheduling in Assembly Islands with Fixed-Position Layouts [J]. Journal of System Science and System Engineering. 2010, 19(2): 150-161.
专著:
[1] 秦威. 面向智能制造的机器智能理论与方法 [M]. 电子工业出版社, 2020. (已签约,撰稿中)
[2] 张洁, 秦威, 高亮. 大数据驱动的智能车间运行分析与决策方法 [M]. 华中科技大学出版社. 2020.
[3] 张小红, 秦威. 智能制造导论 [M]. 上海交通大学出版社, 2019.
[4] Jie Zhang, Wei Qin, Lihui Wu, Junliang Wang, Youlong Lv and Xiaoxi Wang. Wafer Fabrication: Automatic Materiel Handling System [M]. Walter de Gruyter GmbHr, 2018.
[5] 张洁, 秦威. 制造系统智能调度方法与云服务 [M]. 华中科技大学出版社, 2018.
[6] 张洁, 秦威, 鲍劲松. 制造业大数据 [M]. 上海科学技术出版社, 2016.
[7] 张洁, 秦威, 吴立辉. 晶圆制造自动化物料运输系统调度 [M]. 华中科技大学出版社, 2015.