Open Access

Research on passenger flow prediction of tourist attractions by integrating differential evolution and GWO optimization

,  and   
Jul 09, 2024

Cite
Download Cover

Herrero-Prieto, Luis César, & Gómez-Vega, Mafalda. (2017). Cultural resources as a factor in cultural tourism attraction: technical efficiency estimation of regional destinations in spain. Tourism Economics the Business & Finance of Tourism & Recreation, 23(2), págs. 260-280. Search in Google Scholar

José Manuel Sánchez Martín, Gallego, J. I. R., & Luz María Martín Delgado. (2018). Tourist mobility at the destination toward protected areas: the case-study of extremadura. Sustainability, 10. Search in Google Scholar

Xiaofeng, J. I., Kangkang, L. I., & Fang, C. (2018). Study on spatial and temporal differentiation of holiday tourism flow and its formation mechanism:a case study of yunnan province. economic geography. Search in Google Scholar

Dong, H., Liang, Q. B., & Peypoch, N. (2021). Tourist attractions in efficiency analysis. Tourism Economics, 29, 835 - 841. Search in Google Scholar

Xue, X., & Jiang, C. (2021). Matching sensor ontologies with multi-context similarity measure and parallel compact differential evolution algorithm. IEEE sensors journal(21-21). Search in Google Scholar

Alizadeh, Z., & Yazdi, J. (2023). Calibration of hydrological models for ungauged catchments by automatic clustering using a differential evolution algorithm: the gorganrood river basin case study. Journal of Hydroinformatics. Search in Google Scholar

Kar, M. K., Kumar, S., Singh, A. K., & Panigrahi, S. (2023). Reactive power management by using a modified differential evolution algorithm. Optimal Control Applications and Methods. Search in Google Scholar

He, L., Cao, Y., Li, W., Cao, J., & Zhong, L. (2022). Optimization of energy-efficient open shop scheduling with an adaptive multi-objective differential evolution algorithm. Applied Soft Computing(118-), 118. Search in Google Scholar

Mohanty, S., Subudhi, B., & Ray, P. K. (2017). A grey wolf-assisted perturb & observe mppt algorithm for a pv system. IEEE Transactions on Energy Conversion, 32(1), 340-347. Search in Google Scholar

Kumar, Vijay, & Dinesh. (2017). An astrophysics-inspired grey wolf algorithm for numerical optimization and its application to engineering design problems. Advances in engineering software. Search in Google Scholar

Li, M. Q., Xu, L. P., Xu, N., Huang, T., & Yan, B. (2018). Sar image segmentation based on improved grey wolf optimization algorithm and fuzzy c-means. Mathematical Problems in Engineering, 2018(PT.10), 1-11. Search in Google Scholar

Jangir, P., & Jangir, N. (2018). A new non-dominated sorting grey wolf optimizer (ns-gwo) algorithm: development and application to solve engineering designs and economic constrained emission dispatch problem with integration of wind power. Engineering Applications of Artificial Intelligence, 72(JUN.), 449-467. Search in Google Scholar

Zhang, J., Tian, H., Wang, D., Li, H., & Mouazen, A. M. (2020). A novel approach for estimation of above-ground biomass of sugar beet based on wavelength selection and optimized support vector machine. Remote Sensing, 12(4), 620. Search in Google Scholar

Ibrahim, R. A., Abd Elaziz, M., & Lu, S. (2018). Chaotic opposition-based grey-wolf optimization algorithm based on differential evolution and disruption operator for global optimization. Expert Systems with Applications, 108(OCT.), 1-27. Search in Google Scholar

Sakipour, R., & Abdi, H. (2020). Optimizing battery energy storage system data in the presence of wind power plants: a comparative study on evolutionary algorithms. Sustainability, 12, 10257. Search in Google Scholar

Stonier, A. A., Chinnaraj, G., Kannan, R., & Mani, G. (2020). Investigation and validation of an eleven level symmetric modular multilevel inverter using grey wolf optimization and differential evolution control algorithm for solar pv applications. Circuit World. Search in Google Scholar

Wang, B. (2020). Forecasting of short-term daily tourist flow based on seasonal clustering method and pso-lssvm. ISPRS International Journal of Geo-Information, 9. Search in Google Scholar

Lijuan, Wu, Guohua, & Cao. (2016). Seasonal svr with foa algorithm for single-step and multi-step ahead forecasting in monthly inbound tourist flow. Knowledge-Based Systems. Search in Google Scholar

Lu, W., Jin, J., Wang, B., Li, K., Liang, C., & Dong, J., et al. (2020). Intelligence in tourist destinations management: improved attention-based gated recurrent unit model for accurate tourist flow forecasting. Sustainability, 12. Search in Google Scholar

Zhang, H., Liu, Y., Xu, Y., Liu, M., & An, P. (2023). An improved convolutional network capturing spatial heterogeneity and correlation for crowd flow prediction. Expert Systems with Applications, 220, 119702-. Search in Google Scholar

Wang, S., Miao, H., Li, J., & Cao, J. (2021). Spatio-temporal knowledge transfer for urban crowd flow prediction via deep attentive adaptation networks. IEEE Transactions on Intelligent Transportation Systems, PP(99), 1-11. Search in Google Scholar

Ghosh, A., Das, S., Mullick, S. S., Mallipeddi, R., & Das, A. K. (2017). A switched parameter differential evolution with optional blending crossover for scalable numerical optimization. Applied Soft Computing, S15684946173012 Search in Google Scholar

B, W. L. A., B, J. J., C, X. L., & D, M. T. (2018). An exploration-enhanced grey wolf optimizer to solve high-dimensional numerical optimization. Engineering Applications of Artificial Intelligence, 68, 63-80. Search in Google Scholar

Language:
English