Acceso abierto

Interface Selection and Optimization of Weights using Artificial Neural Network in Heterogeneous Wireless Environment


Cite

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. WangL. KuoG. S. G. 2012 Mathematical modeling for network selection in heterogeneous wireless networks—A tutorial IEEE Communications Surveys & Tutorials 15 1 271 292 Search in Google Scholar

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. TranP. N. BoukhatemN. 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 119 124 EEE Search in Google Scholar

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 NasserN. GuizaniS. Al-MasriE. 2007 June Middleware vertical handoff manager: A neural network-based solution In 2007 IEEE International Conference on Communications 5671 5676 IEEE https://www.guru99.com/backpropagationneural-network-html Search in Google Scholar

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. AndreevS. GerasimenkoM. GalininaO. KoucheryavyY. HimayatN. YehS.P. TalwarS. 2014 Intelligent access network selection in converged multi-radio heterogeneous networks IEEE wireless communications 21 6 86 96 Search in Google Scholar

Sodhi, S.S. and Chandra, P., 2014. Interval-based weight initialization method for sigmoidal feedforward artificial neural networks. AASRI Procedia, 6, pp.19–25. SodhiS.S. ChandraP. 2014 Interval-based weight initialization method for sigmoidal feedforward artificial neural networks AASRI Procedia 6 19 25 Search in Google Scholar

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. AhujaK. SinghB. KhannaR. 2014 Particle swarm optimization-based network selection in a heterogeneous wireless environment Optik 125 1 214 219 Search in Google Scholar

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. AlotaibiN.M. AlwakeelS.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) 1210 1214 IEEE Search in Google Scholar

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. AbbasN. SaadeJ.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) 631 636 IEEE Search in Google Scholar

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. AgiwalM. RoyA. SaxenaN. 2016 Next generation 5G wireless networks: A comprehensive survey IEEE Communications Surveys & Tutorials 18 3 1617 1655 Search in Google Scholar

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 KunarakS. 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) 287 292 IEEE Search in Google Scholar

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. AhujaK. SinghB. KhannaR. 2018 Network selection in the wireless heterogeneous environment by CPF hybrid algorithm Wireless Personal Communications 98 3 2733 2751 Search in Google Scholar

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. GoyalR. K. KaushalS. SangaiahA. K. 2018 The utility-based non-linear fuzzy AHP optimization model for network selection in heterogeneous wireless networks Applied Soft Computing 67 800 811 Search in Google Scholar

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. LiangG. YuH. 2018 Network selection algorithm for heterogeneous wireless networks based on service characteristics and user preferences EURASIP Journal on Wireless Communications and Networking 2018 1 1 16 Search in Google Scholar

Baykasoğlu, A., & Ercan, E. (2021). Analysis of rank reversal problems in “Weighted Aggregated Sum Product Assessment” method. Soft Computing, 25(24), 15243–15254. BaykasoğluA. ErcanE. 2021 Analysis of rank reversal problems in “Weighted Aggregated Sum Product Assessment” method Soft Computing 25 24 15243 15254 Search in Google Scholar

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. SenouciM.A. SenouciH. SenouciM.R. FerdosianN. MelloukA. 2019 Flow/Interface Association for multi-connectivity in heterogeneous wireless networks: e-Health case Ad Hoc Networks 94 101942 Search in Google Scholar

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. ChenM. ChallitaU. SaadW. YinC. DebbahM. 2019 Artificial neural networks-based machine learning for wireless networks: A tutorial IEEE Communications Surveys & Tutorials 21 4 3039 3071 Search in Google Scholar

Khangura, S.K., Fidler, M. and Rosenhahn, B., 2019. Machine learning for measurement-based bandwidth estimation. Computer Communications, 144, pp. 18–30. KhanguraS.K. FidlerM. RosenhahnB. 2019 Machine learning for measurement-based bandwidth estimation Computer Communications 144 18 30 Search in Google Scholar

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. MengY. LiuX. 2019 Resource allocation and interference management for multi-layer wireless networks in heterogeneous cognitive networks EURASIP Journal on Wireless Communications and Networking 2019 1 1 12 Search in Google Scholar

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. SunY. PengM. ZhouY. HuangY. MaoS. 2019 Application of machine learning in wireless networks: Key techniques and open issues IEEE Communications Surveys & Tutorials 21 4 3072 3108 Search in Google Scholar

Gao, Z., Chen, Y. and Yi, Z., 2020. A novel method to compute the weights of neural networks. Neurocomputing, 407, pp. 409–427. GaoZ. ChenY. YiZ. 2020 A novel method to compute the weights of neural networks Neurocomputing 407 409 427 Search in Google Scholar

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. LiangG. SunG. FangJ. GuoX. YuH. 2020 An Access Selection Algorithm for Heterogeneous Wireless Networks Based on Optimal Resource Allocation Wireless Communications and Mobile Computing 2020 Search in Google Scholar

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. HosnyK.M. KhashabaM.M. KhedrW.I. AmerF.A. 2020 An Efficient Neural Network-Based Prediction Scheme for Heterogeneous Networks International Journal of Sociotechnology and Knowledge Development (IJSKD) 12 2 63 76 Search in Google Scholar

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. TanX. ChenG. SunH. 2020 Vertical handover algorithm based on multi-attribute and neural networks in heterogeneous integrated network EURASIP Journal on Wireless Communications and Networking 2020 1 1 21 Search in Google Scholar

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. LiangG. GuoX. SunG. FangJ. 2020 A User-Oriented Intelligent Access Selection Algorithm in Heterogeneous Wireless Networks Computational Intelligence and Neuroscience 2020 Search in Google Scholar

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. OgbeborJ.O. ImoizeA.L. AtayeroA.A.A. 2020 Energy-efficient design techniques in next-generation wireless communication networks: Emerging trends and future directions Wireless Communications and Mobile Computing 2020 Search in Google Scholar

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 UllahR. MarwatS.N.K. AhmadA.M. AhmedS. HafeezA. KamalT. TufailM. 2020 A Machine Learning Approach for 5G SINR Prediction Electronics 9 10 1660 Search in Google Scholar

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. AllahhamM. S. AbdellatifA. A. MhaisenN. MohamedA. ErbadA. GuizaniM. 2022 Multi-Agent Reinforcement Learning for Network Selection and Resource Allocation in Heterogeneous multi-RAT Networks IEEE Transactions on Cognitive Communications and Networking Search in Google Scholar

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. GuoY. ZhaoR. LaiS. FanL. LeiX. KaragiannidisG. K. 2022 Distributed machine learning for multiuser mobile edge computing systems IEEE Journal of Selected Topics in Signal Processing Search in Google Scholar

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. MaoY. PranoloA. HernandezL. WibawaA. P. NuryanaZ. 2022 Artificial intelligence in mobile communication: A Survey In IOP Conference Series: Materials Science and Engineering 1212 1 012046 IOP Publishing Search in Google Scholar

eISSN:
1178-5608
Idioma:
Inglés
Calendario de la edición:
Volume Open
Temas de la revista:
Engineering, Introductions and Overviews, other