Acceso abierto

Medical emergency supplies dispatching vehicle path optimization based on demand urgency


Cite

Lyridis, D. V. (2021). An improved ant colony optimization algorithm for unmanned surface vehicle local path planning with multi-modality constraints. Ocean Engineering, 241, 120590. Search in Google Scholar

Wang, Y., Yuan, Y., Guan, X., et al. (2020). Collaborative two-echelon multicenter vehicle routing optimization based on state–space–time network representation. Journal of Cleaner Production, 258, 120590. Search in Google Scholar

Kim, S., Lee, U., Lee, I., et al. (2022). Idle vehicle relocation strategy through deep learning for shared autonomous electric vehicle system optimization. Journal of Cleaner Production, 333, 120590. Search in Google Scholar

Miske, L., Kinney, Z., Garcia, V., et al. (2017). Preventing Catastrophe: Verification of Tracheostomy Emergency Supplies for Patients Living at Home With an Artificial Airway. Chest, 152(4), A572. Search in Google Scholar

Tao, N., Hua, J., Yang, M. (2016). Research on last mile distribution of emergency medical supplies in earthquake disasters. Journal of Investigative Medicine, 64(Suppl 8), A19-. Search in Google Scholar

Hallman, W., Byrd-Bredbenner, C., Cuite, C., et al. (2009). Characterizing Quantities and Nutritional Qualities of Household Food Supplies for Emergency Preparedness. Epidemiology, 20(6). Search in Google Scholar

Lo, Y. C. (2015). Selling science: Resource mobilization strategies in the emerging field of nanotechnology. Research Policy. Search in Google Scholar

Markus, H., Lorenzo, P., Markus, K., et al. (2021). The evolutionarily conserved kinase SnRK1 orchestrates resource mobilization during Arabidopsis seedling establishment. The Plant Cell, 1. Search in Google Scholar

Hong, L., Zhang, X. (2011). Study on location selection of multi-objective emergency logistics center based on AHP. Procedia Engineering, 15, 2128-2132. Search in Google Scholar

Ershadi, M. M., Shemirani, H. S. (2021). A multi-objective optimization model for logistic planning in the crisis response phase. Journal of Humanitarian Logistics and Supply Chain Management, ahead-of-print(ahead-of-print). Search in Google Scholar

Tang, M., Hu, M., Zhang, H., et al. (2022). Research on Multi Unmanned Aerial Vehicles Emergency Task Planning Method Based on Discrete Multi-Objective TLBO Algorithm. Sustainability, 14. Search in Google Scholar

Zhang, Dong, Chen, et al. (2013). A bottleneck Steiner tree based multi-objective location model and intelligent optimization of emergency logistics systems. ROBOT CIM-INT MANUF. Search in Google Scholar

Surman, G., Lambert, T. W., Goldacre, M. (2016). Doctors’ enjoyment of their work and satisfaction with time available for leisure: UK time trend questionnaire-based study. Postgraduate Medical Journal, 92(1086), 194-200. Search in Google Scholar

Barkaoui, M., Berger, J., Boukhtouta, A. (2015). Customer satisfaction in dynamic vehicle routing problem with time windows. Applied Soft Computing, 35(C), 423-432. Search in Google Scholar

Falak, N., Khalid, J. N. (2020). Dynamic QoS-Aware Cloud Service Selection Using Best-Worst Method and Timeslot Weighted Satisfaction Scores. The Computer Journal, 9. Search in Google Scholar

Li, L., Li, C., Tang, Y., et al. (2017). An integrated approach of process planning and cutting parameter optimization for Energy-aware CNC Machining. Journal of Cleaner Production, 162(Sep.20), 458-473. Search in Google Scholar

Han, J., Liu, Y., Luo, L., et al. (2020). Integrated production planning and scheduling under uncertainty: A fuzzy bi-level decision-making approach. Knowledge-Based Systems, 201–202. Search in Google Scholar

Xiao, L., Lu, S., Su, H., et al. (2015). Application of Two-Phase Fuzzy Optimization Approach to Multiproduct Multistage Integrated Production Planning with Linguistic Preference under Uncertainty. Mathematical Problems in Engineering, 2015(PT.17), 1-20. Search in Google Scholar

Ding, X., Sun, W., Harrison, G. P., et al. (2020). Multi-objective optimization for an integrated renewable, power-to-gas and solid oxide fuel cell/gas turbine hybrid system in microgrid. Energy, 213(8–9), 118804. Search in Google Scholar

Minas, Hearne, Martell. (2015). An integrated optimization model for fuel management and fire suppression preparedness planning. ANN OPER RES. Search in Google Scholar

Wang, J., Guo, M., Liu, Y. (2018). Hydropower Unit Commitment with Nonlinearity Decoupled from Mixed Integer Nonlinear Problem. Energy, S0360544218303621. Search in Google Scholar

Xin, J., Meng, C., Ariano, A., et al. (2021). Mixed-Integer Nonlinear Programming for Energy-Efficient Container Handling: Formulation and Customized Genetic Algorithm. IEEE Transactions on Intelligent Transportation Systems, PP(99). Search in Google Scholar

Liberti, L. (2019). Undecidability and hardness in mixed-integer nonlinear programming. RAIRO - Operations Research, 53(1), 81-109. Search in Google Scholar

Buuren, M. V., Aardal, K., Mei, R., et al. (2012). Evaluating dynamic dispatch strategies for emergency medical services: TIFAR simulation tool. In Simulation Conference. Search in Google Scholar

Dan, B., Zhu, W., Li, H., et al. (2013). Dynamic Optimization Model and Algorithm Design for Emergency Materials Dispatch. Mathematical Problems in Engineering, (2013-12-3), 2013, 2013, 1-6. Search in Google Scholar

Huang, X., Ren, Y., Zhang, J., et al. (2020). Dynamic Scheduling Optimization of Marine Oil Spill Emergency Resource. Journal of Coastal Research, 107(sp1), 437. Search in Google Scholar

Li, C., Zhang, F., Zhu, T., et al. (2013). Evaluation and correlation analysis of land use performance based on entropy-weight TOPSIS method. Transactions of the Chinese Society of Agricultural Engineering, 29(5), 217-227. Search in Google Scholar

Wu, X., Zhang, C., Yang, L. (2021). Evaluation and selection of transportation service provider by TOPSIS method with entropy weight. Thermal Science, 50-50. Search in Google Scholar

Li, M., Sun, H., Singh, V. P., et al. (2019). Agricultural Water Resources Management Using Maximum Entropy and Entropy-Weight-Based TOPSIS Methods. Entropy, 21(4), 364. Search in Google Scholar

Hu, C., Ma, Y., Chen, T. (2021). Application on Online Process Learning Evaluation Based on Optimal Discrete Hopfield Neural Network and Entropy Weight TOPSIS Method. Complexity, 2021. Search in Google Scholar

Lacomme, P., Prins, C., Prodhon, C., et al. (2015). A Multi-Start Split based Path Relinking (MSSPR) approach for the vehicle routing problem with route balancing. Engineering Applications of Artificial Intelligence, 38, 237-251. Search in Google Scholar

Farooq, S. U. (2013). Evolutionary algorithms for solving multi-objective shortest path problem - Case study of vehicle navigation problems. Search in Google Scholar

Xu, T., Yang, F., Li, J., et al. (2014). A Bi-objective Mathematical Model for Hazmat Vehicle Routing Problem with Path-Based Risk Estimation. In Sixth International Conference on Business Intelligence & Financial Engineering. Search in Google Scholar

Li, X., Yin, M. (2015). Modified cuckoo search algorithm with self adaptive parameter method. Information Sciences, 298, 80-97. Search in Google Scholar

Abdelaziz, A. Y., El-Fergany, A. A. (2014). Capacitor allocations in radial distribution networks using cuckoo search algorithm. IET generation, transmission & distribution. Search in Google Scholar

Euchi, J., Sadok, A. (2021). Optimising the travel of home health carers using a hybrid ant colony algorithm. Transport, 3, 1-22. Search in Google Scholar

Liu, J. (2021). Automatic Film Label Acquisition Method Based on Improved Neural Networks Optimized by Mutation Ant Colony Algorithm. Computational Intelligence and Neuroscience, 2021. Search in Google Scholar

eISSN:
2444-8656
Idioma:
Inglés
Calendario de la edición:
Volume Open
Temas de la revista:
Life Sciences, other, Mathematics, Applied Mathematics, General Mathematics, Physics