References
- Wang, L., & Kuo, G. S. G. (2012). Mathematical modeling for network selection in heterogeneous wireless networks—A tutorial. IEEE Communications Surveys & Tutorials, 15(1), 271–292.
- Tran, P. N., & Boukhatem, N. (2008, September). Comparison of MADM decision algorithms for interface selection in heterogeneous wireless networks. In 2008 16th international conference on software, telecommunications and computer networks (pp. 119–124). EEE.
- Nasser, N., Guizani, S., & Al-Masri, E. (2007, June). Middleware vertical handoff manager: A neural network-based solution. In 2007 IEEE International Conference on Communications (pp. 5671–5676). IEEE. https://www.guru99.com/backpropagationneural-network-html
- Andreev, S., Gerasimenko, M., Galinina, O., Koucheryavy, Y., Himayat, N., Yeh, S.P. and Talwar, S., 2014. Intelligent access network selection in converged multi-radio heterogeneous networks. IEEE wireless communications, 21(6), pp. 86–96.
- Sodhi, S.S. and Chandra, P., 2014. Interval-based weight initialization method for sigmoidal feedforward artificial neural networks. AASRI Procedia, 6, pp.19–25.
- Ahuja, K., Singh, B. and Khanna, R., 2014. Particle swarm optimization-based network selection in a heterogeneous wireless environment. Optik, 125(1), pp. 214–219.
- Alotaibi, N.M. and Alwakeel, S.S., 2015, December. A neural network-based handover management strategy for heterogeneous networks. In 2015 IEEE 14th international conference on machine learning and Applications (ICMLA) (pp. 1210–1214). IEEE.
- Abbas, N. and Saade, J.J., 2015, January. A fuzzy logic-based approach for network selection in WLAN/3G heterogeneous network. In 2015 12th Annual IEEE Consumer Communications and Networking Conference (CCN C) (pp. 631–636). IEEE.
- Agiwal, M., Roy, A. and Saxena, N., 2016. Next generation 5G wireless networks: A comprehensive survey. IEEE Communications Surveys & Tutorials, 18(3), pp. 1617–1655.
- Kunarak, S., 2016, April. A Dynamic Channel Allocation Algorithm Based on Back-Propagation Neural Network for Vertical Handover in HetNets. In 2016 UKSim-AMSS 18th International Conference on Computer Modelling and Simulation (UKSim) (pp. 287–292). IEEE
- Ahuja, K., Singh, B. and Khanna, R., 2018. Network selection in the wireless heterogeneous environment by CPF hybrid algorithm. Wireless Personal Communications, 98(3), pp. 2733–2751.
- Goyal, R. K., Kaushal, S., & Sangaiah, A. K. (2018). The utility-based non-linear fuzzy AHP optimization model for network selection in heterogeneous wireless networks. Applied Soft Computing, 67, 800–811.
- Liang, G. and Yu, H., 2018. Network selection algorithm for heterogeneous wireless networks based on service characteristics and user preferences. EURASIP Journal on Wireless Communications and Networking, 2018(1), pp. 1–16.
- Baykasoğlu, A., & Ercan, E. (2021). Analysis of rank reversal problems in “Weighted Aggregated Sum Product Assessment” method. Soft Computing, 25(24), 15243–15254.
- Senouci, M.A., Senouci, H., Senouci, M.R., Ferdosian, N. and Mellouk, A., 2019. Flow/Interface Association for multi-connectivity in heterogeneous wireless networks: e-Health case. Ad Hoc Networks, 94, p. 101942.
- Chen, M., Challita, U., Saad, W., Yin, C. and Debbah, M., 2019. Artificial neural networks-based machine learning for wireless networks: A tutorial. IEEE Communications Surveys & Tutorials, 21(4), pp. 3039–3071.
- Khangura, S.K., Fidler, M. and Rosenhahn, B., 2019. Machine learning for measurement-based bandwidth estimation. Computer Communications, 144, pp. 18–30.
- Meng, Y. and Liu, X., 2019. Resource allocation and interference management for multi-layer wireless networks in heterogeneous cognitive networks. EURASIP Journal on Wireless Communications and Networking, 2019(1), pp.1–12.
- Sun, Y., Peng, M., Zhou, Y., Huang, Y. and Mao, S., 2019. Application of machine learning in wireless networks: Key techniques and open issues. IEEE Communications Surveys & Tutorials, 21(4), pp. 3072–3108.
- Gao, Z., Chen, Y. and Yi, Z., 2020. A novel method to compute the weights of neural networks. Neurocomputing, 407, pp. 409–427.
- Liang, G., Sun, G., Fang, J., Guo, X. and Yu, H., 2020. An Access Selection Algorithm for Heterogeneous Wireless Networks Based on Optimal Resource Allocation. Wireless Communications and Mobile Computing, 2020.
- Hosny, K.M., Khashaba, M.M., Khedr, W.I. and Amer, F.A., 2020. An Efficient Neural Network-Based Prediction Scheme for Heterogeneous Networks. International Journal of Sociotechnology and Knowledge Development (IJSKD), 12(2), pp. 63–76.
- Tan, X., Chen, G. and Sun, H., 2020. Vertical handover algorithm based on multi-attribute and neural networks in heterogeneous integrated network. EURASIP Journal on Wireless Communications and Networking, 2020(1), pp. 1–21.
- Liang, G., Guo, X., Sun, G. and Fang, J., 2020. A User-Oriented Intelligent Access Selection Algorithm in Heterogeneous Wireless Networks. Computational Intelligence and Neuroscience, 2020.
- Ogbebor, J.O., Imoize, A.L. and Atayero, A.A.A., 2020. Energy-efficient design techniques in next-generation wireless communication networks: Emerging trends and future directions. Wireless Communications and Mobile Computing, 2020.
- Ullah, R., Marwat, S.N.K., Ahmad, A.M., Ahmed, S., Hafeez, A., Kamal, T. and Tufail, M., 2020. A Machine Learning Approach for 5G SINR Prediction. Electronics, 9(10), p. 1660
- Allahham, M. S., Abdellatif, A. A., Mhaisen, N., Mohamed, A., Erbad, A., & Guizani, M. (2022). Multi-Agent Reinforcement Learning for Network Selection and Resource Allocation in Heterogeneous multi-RAT Networks. IEEE Transactions on Cognitive Communications and Networking.
- Guo, Y., Zhao, R., Lai, S., Fan, L., Lei, X., & Karagiannidis, G. K. (2022). Distributed machine learning for multiuser mobile edge computing systems. IEEE Journal of Selected Topics in Signal Processing.
- Mao, Y., Pranolo, A., Hernandez, L., Wibawa, A. P., & Nuryana, Z. (2022). Artificial intelligence in mobile communication: A Survey. In IOP Conference Series: Materials Science and Engineering (Vol. 1212, No. 1, p. 012046). IOP Publishing.