Matches in SemOpenAlex for { <https://semopenalex.org/work/W3100287269> ?p ?o ?g. }
- W3100287269 endingPage "173" @default.
- W3100287269 startingPage "156" @default.
- W3100287269 abstract "The concept of the 5G mobile network system has emerged in recent years as telecommunication operators and service providers look to upgrade their infrastructure and delivery modes to meet the growing demand. Concepts such as softwarization, virtualization, and machine learning will be key components as innovative and flexible enablers of such networks. In particular, paradigms such as software-defined networks, software-defined perimeters, cloud and edge computing, and network function virtualization will play a major role in addressing several of the challenges of 5G networks, especially in terms of flexibility, programmability, scalability, and security. In this article, the role and potential of these paradigms in the context of vehicle-to-everything (V2X) communication is discussed. This article provides an overview and background of V2X communications and then a detailed discussion of the various challenges facing V2X communications and some of the previous studies done to tackle them. Finally, the article describes how softwarization, virtualization, and machine learning can be adapted to tackle the challenges of such networks." @default.
- W3100287269 created "2020-11-23" @default.
- W3100287269 creator A5022670644 @default.
- W3100287269 creator A5041270670 @default.
- W3100287269 date "2022-03-01" @default.
- W3100287269 modified "2023-10-17" @default.
- W3100287269 title "Softwarization, Virtualization, and Machine Learning for Intelligent and Effective Vehicle-to-Everything Communications" @default.
- W3100287269 cites W1577515394 @default.
- W3100287269 cites W1907046357 @default.
- W3100287269 cites W1977353034 @default.
- W3100287269 cites W2021669721 @default.
- W3100287269 cites W2032294805 @default.
- W3100287269 cites W2053598121 @default.
- W3100287269 cites W2055350293 @default.
- W3100287269 cites W2066216731 @default.
- W3100287269 cites W2066720139 @default.
- W3100287269 cites W2081811828 @default.
- W3100287269 cites W2103978752 @default.
- W3100287269 cites W2138170080 @default.
- W3100287269 cites W2144256528 @default.
- W3100287269 cites W2163006843 @default.
- W3100287269 cites W2186519857 @default.
- W3100287269 cites W2241416697 @default.
- W3100287269 cites W2342712621 @default.
- W3100287269 cites W2344957338 @default.
- W3100287269 cites W2403167913 @default.
- W3100287269 cites W2432389845 @default.
- W3100287269 cites W2468121020 @default.
- W3100287269 cites W2490051280 @default.
- W3100287269 cites W2511262144 @default.
- W3100287269 cites W2554670332 @default.
- W3100287269 cites W2556972391 @default.
- W3100287269 cites W2561080359 @default.
- W3100287269 cites W2578236620 @default.
- W3100287269 cites W2583142076 @default.
- W3100287269 cites W2589253474 @default.
- W3100287269 cites W2603791362 @default.
- W3100287269 cites W2617623090 @default.
- W3100287269 cites W2619155606 @default.
- W3100287269 cites W2626074815 @default.
- W3100287269 cites W2754202139 @default.
- W3100287269 cites W2754797441 @default.
- W3100287269 cites W2759910885 @default.
- W3100287269 cites W2762327599 @default.
- W3100287269 cites W2766449036 @default.
- W3100287269 cites W2766857871 @default.
- W3100287269 cites W2767873707 @default.
- W3100287269 cites W2768526075 @default.
- W3100287269 cites W2768966073 @default.
- W3100287269 cites W2782819472 @default.
- W3100287269 cites W2787942757 @default.
- W3100287269 cites W2789893592 @default.
- W3100287269 cites W2790544619 @default.
- W3100287269 cites W2793519446 @default.
- W3100287269 cites W2798801497 @default.
- W3100287269 cites W2807258775 @default.
- W3100287269 cites W2853855333 @default.
- W3100287269 cites W2883325838 @default.
- W3100287269 cites W2886360093 @default.
- W3100287269 cites W2889374188 @default.
- W3100287269 cites W2889406945 @default.
- W3100287269 cites W2889422196 @default.
- W3100287269 cites W2891546119 @default.
- W3100287269 cites W2893645384 @default.
- W3100287269 cites W2898927724 @default.
- W3100287269 cites W2922299940 @default.
- W3100287269 cites W2962924943 @default.
- W3100287269 cites W2963706687 @default.
- W3100287269 cites W2963865852 @default.
- W3100287269 cites W2979657369 @default.
- W3100287269 cites W2982633340 @default.
- W3100287269 cites W2983559761 @default.
- W3100287269 cites W3009046953 @default.
- W3100287269 cites W3009513989 @default.
- W3100287269 cites W3012289806 @default.
- W3100287269 cites W3022199973 @default.
- W3100287269 cites W3100493006 @default.
- W3100287269 cites W3101647584 @default.
- W3100287269 cites W3117331835 @default.
- W3100287269 cites W4254703201 @default.
- W3100287269 cites W2901851791 @default.
- W3100287269 doi "https://doi.org/10.1109/mits.2020.3014124" @default.
- W3100287269 hasPublicationYear "2022" @default.
- W3100287269 type Work @default.
- W3100287269 sameAs 3100287269 @default.
- W3100287269 citedByCount "15" @default.
- W3100287269 countsByYear W31002872692020 @default.
- W3100287269 countsByYear W31002872692021 @default.
- W3100287269 countsByYear W31002872692022 @default.
- W3100287269 countsByYear W31002872692023 @default.
- W3100287269 crossrefType "journal-article" @default.
- W3100287269 hasAuthorship W3100287269A5022670644 @default.
- W3100287269 hasAuthorship W3100287269A5041270670 @default.
- W3100287269 hasBestOaLocation W31002872692 @default.
- W3100287269 hasConcept C105795698 @default.
- W3100287269 hasConcept C111919701 @default.
- W3100287269 hasConcept C151730666 @default.
- W3100287269 hasConcept C2776061582 @default.