Accès libre

Research on the optimisation of logistics parcel intelligent sorting and conveying chain combined with variable clustering mathematical method

À propos de cet article

Citez

Liu, P. and Y. Li, Multiattribute decision method for comprehensive logistics distribution center location selection based on 2-dimensional linguistic information. Information Sciences, 2020. 538: p. 209-244. Search in Google Scholar

Zhu, X., et al., A Flexsim-based Optimization for the Operation Process of Cold-Chain Logistics Distribution Centre. Journal of applied research and technology, 2014. 12(2): p. 270-278. Search in Google Scholar

Yang, L., et al., Logistics distribution centers location problem and algorithm under fuzzy environment. Journal of Computational and Applied Mathematics, 2007. 208(2): p. 303-315. Search in Google Scholar

Hua, X., X. Hu and W. Yuan, Research optimization on logistics distribution center location based on adaptive particle swarm algorithm. Optik, 2016. 127(20): p. 8443-8450. Search in Google Scholar

Holzapfel, A., H. Kuhn and M.G. Sternbeck, Product allocation to different types of distribution center in retail logistics networks. European Journal of Operational Research, 2018. 264(3): p. 948-966. Search in Google Scholar

Liu, W., et al., Intelligent logistics transformation problems in efficient commodity distribution. Transportation Research Part E: Logistics and Transportation Review, 2022. 163: p. 102735. Search in Google Scholar

Kostrzewski, M., L. Filina-Dawidowicz and S. Walusiak, Modern technologies development in logistics centers: the case study of Poland. Transportation Research Procedia, 2021. 55: p. 268-275. Search in Google Scholar

Boysen, N., et al., Automated sortation conveyors: A survey from an operational research perspective. European Journal of Operational Research, 2019. 276(3): p. 796-815. Search in Google Scholar

Schenk, L. and D. Klabjan, Intra market optimization for express package carriers with station to station travel and proportional sorting. Computers & operations research, 2010. 37(10): p. 1749-1761. Search in Google Scholar

Tan, Z., H. Li and X. He, Optimizing parcel sorting process of vertical sorting system in e-commerce warehouse. Advanced Engineering Informatics, 2021. 48: p. 101279. Search in Google Scholar

Leung, K.H., C.K.M. Lee and K.L. Choy, An integrated online pick-to-sort order batching approach for managing frequent arrivals of B2B e-commerce orders under both fixed and variable time-window batching. Advanced Engineering Informatics, 2020. 45: p. 101125. Search in Google Scholar

He, X., S. Meng and J. Liang, Analysis of cross-border E-Commerce logistics model based on embedded system and genetic algorithm. Microprocessors and Microsystems, 2021. 82: p. 103827. Search in Google Scholar

Sisman, S. and A.C. Aydinoglu, Improving performance of mass real estate valuation through application of the dataset optimization and Spatially Constrained Multivariate Clustering Analysis. Land Use Policy, 2022. 119: p. 106167. Search in Google Scholar

Park, J., T. Lee and D. Kim, Improving PMF source reconciliation with cluster analysis for PM2.5 hourly data from Seoul, Korea. Atmospheric Pollution Research, 2022. 13(5): p. 101398. Search in Google Scholar

Govender, P. and V. Sivakumar, Application of k-means and hierarchical clustering techniques for analysis of air pollution: A review (1980–2019). Atmospheric pollution research, 2020. 11(1): p. 40-56. Search in Google Scholar

Jiang, Z., et al., Comparison of adverse events between cluster and conventional immunotherapy for allergic rhinitis patients with or without asthma: A systematic review and meta-analysis. American Journal of Otolaryngology, 2019. 40(6): p. 102269. Search in Google Scholar

Grabowski, J. and A. Smoliński, The application of hierarchical clustering to analyzing ashes from the combustion of wood pellets mixed with waste materials. Environmental Pollution, 2021. 276: p. 116766. Search in Google Scholar

Dong, L., et al., Wind power day-ahead prediction with cluster analysis of NWP. Renewable and Sustainable Energy Reviews, 2016. 60: p. 1206-1212. Search in Google Scholar

Ahmad, A. and S.S. Khan, initKmix-A novel initial partition generation algorithm for clustering mixed data using k-means-based clustering. Expert Systems with Applications, 2021. 167: p. 114149. Search in Google Scholar

Dobrykh, F., S. Muravyov and O. Ilyasova, Ensemble Clustering Algorithm Development for Tabular Data by a Given Partition Quality Measure. Procedia Computer Science, 2021. 193: p. 415-421. Search in Google Scholar

Xu, N., et al., Coal elemental (compositional) data analysis with hierarchical clustering algorithms. International Journal of Coal Geology, 2022. 249: p. 103892. Search in Google Scholar

Habib, A., M. Akram and C. Kahraman, Minimum spanning tree hierarchical clustering algorithm: A new Pythagorean fuzzy similarity measure for the analysis of functional brain networks. Expert Systems with Applications, 2022. 201: p. 117016. Search in Google Scholar

Varshney, A.K., P.K. Muhuri and Q.M. Danish Lohani, PIFHC: The Probabilistic Intuitionistic Fuzzy Hierarchical Clustering Algorithm. Applied Soft Computing, 2022. 120: p. 108584. Search in Google Scholar

Zhang, R., et al., Adaptive density-based clustering algorithm with shared KNN conflict game. Information Sciences, 2021. 565: p. 344-369. Search in Google Scholar

Cen, L., et al., Application of density-based clustering algorithm and capsule network to performance monitoring of antimony flotation process. Minerals Engineering, 2022. 184: p. 107603. Search in Google Scholar

Hu, L., et al., KR-DBSCAN: A density-based clustering algorithm based on reverse nearest neighbor and influence space. Expert Systems with Applications, 2021. 186: p. 115763. Search in Google Scholar

Deng, X., G. Tang and Q. Wang, A novel fast classification filtering algorithm for LiDAR point clouds based on small grid density clustering. Geodesy and Geodynamics, 2022. 13(1): p. 38-49. Search in Google Scholar

Cheng, M., et al., Adaptive grid-based forest-like clustering algorithm. Neurocomputing, 2022. 481: p. 168-181. Search in Google Scholar

Li, B., et al., DNC: A Deep Neural Network-based Clustering-oriented Network Embedding Algorithm. Journal of Network and Computer Applications, 2021. 173: p. 102854. Search in Google Scholar

Sun, Y., et al., Uncertain data stream algorithm based on clustering RBF neural network. Microprocessors and Microsystems, 2021. 81: p. 103731. Search in Google Scholar

eISSN:
2444-8656
Langue:
Anglais
Périodicité:
Volume Open
Sujets de la revue:
Life Sciences, other, Mathematics, Applied Mathematics, General Mathematics, Physics