Matches in SemOpenAlex for { <https://semopenalex.org/work/W4293057992> ?p ?o ?g. }
Showing items 1 to 90 of
90
with 100 items per page.
- W4293057992 abstract "Ultra-dense network is the key technology of 5G. It provides mobile users with high transmission rates and efficient radio resource management. However, due to the dense deployment of base stations and the small coverage of a single base station in the ultra-dense network, user equipment may have to perform handovers more frequently. The current handover mechanism is more like a “passive handover” triggered by objective conditions. So frequent handover may degrade the user experience and affect the overall performance of the network. Therefore, it is necessary to predict the trajectory of the mobile user, and then take the prediction results into account to perform a more positive and intelligent handover. In response to this problem, in this paper, we propose an LSTM model that can predict a mobile user’s next location based on his historical trajectory and which cell he should connect to at the next moment. We use real mobile user trajectory data for training and testing. Reassuringly, it is best to achieve a prediction accuracy of 92.155% in the scenario we assumed." @default.
- W4293057992 created "2022-08-25" @default.
- W4293057992 creator A5008494532 @default.
- W4293057992 creator A5008881208 @default.
- W4293057992 creator A5009488469 @default.
- W4293057992 date "2022-06-01" @default.
- W4293057992 modified "2023-09-26" @default.
- W4293057992 title "Mobile User Trajectory Prediction Based on Machine Learning" @default.
- W4293057992 cites W2008598469 @default.
- W4293057992 cites W2034847907 @default.
- W4293057992 cites W2067261106 @default.
- W4293057992 cites W2126194848 @default.
- W4293057992 cites W2485739238 @default.
- W4293057992 cites W2775492430 @default.
- W4293057992 cites W2923508303 @default.
- W4293057992 cites W2963393241 @default.
- W4293057992 cites W3011420108 @default.
- W4293057992 cites W3015506282 @default.
- W4293057992 cites W3112857541 @default.
- W4293057992 cites W3135035553 @default.
- W4293057992 cites W3167052796 @default.
- W4293057992 cites W3203309212 @default.
- W4293057992 doi "https://doi.org/10.1109/vtc2022-spring54318.2022.9860494" @default.
- W4293057992 hasPublicationYear "2022" @default.
- W4293057992 type Work @default.
- W4293057992 citedByCount "0" @default.
- W4293057992 crossrefType "proceedings-article" @default.
- W4293057992 hasAuthorship W4293057992A5008494532 @default.
- W4293057992 hasAuthorship W4293057992A5008881208 @default.
- W4293057992 hasAuthorship W4293057992A5009488469 @default.
- W4293057992 hasConcept C105339364 @default.
- W4293057992 hasConcept C111852164 @default.
- W4293057992 hasConcept C111919701 @default.
- W4293057992 hasConcept C121332964 @default.
- W4293057992 hasConcept C1276947 @default.
- W4293057992 hasConcept C13662910 @default.
- W4293057992 hasConcept C144543869 @default.
- W4293057992 hasConcept C153646914 @default.
- W4293057992 hasConcept C179254644 @default.
- W4293057992 hasConcept C186967261 @default.
- W4293057992 hasConcept C207029474 @default.
- W4293057992 hasConcept C26517878 @default.
- W4293057992 hasConcept C2781307350 @default.
- W4293057992 hasConcept C31258907 @default.
- W4293057992 hasConcept C38652104 @default.
- W4293057992 hasConcept C41008148 @default.
- W4293057992 hasConcept C68649174 @default.
- W4293057992 hasConcept C74650414 @default.
- W4293057992 hasConcept C761482 @default.
- W4293057992 hasConcept C76155785 @default.
- W4293057992 hasConcept C79403827 @default.
- W4293057992 hasConcept C95491727 @default.
- W4293057992 hasConceptScore W4293057992C105339364 @default.
- W4293057992 hasConceptScore W4293057992C111852164 @default.
- W4293057992 hasConceptScore W4293057992C111919701 @default.
- W4293057992 hasConceptScore W4293057992C121332964 @default.
- W4293057992 hasConceptScore W4293057992C1276947 @default.
- W4293057992 hasConceptScore W4293057992C13662910 @default.
- W4293057992 hasConceptScore W4293057992C144543869 @default.
- W4293057992 hasConceptScore W4293057992C153646914 @default.
- W4293057992 hasConceptScore W4293057992C179254644 @default.
- W4293057992 hasConceptScore W4293057992C186967261 @default.
- W4293057992 hasConceptScore W4293057992C207029474 @default.
- W4293057992 hasConceptScore W4293057992C26517878 @default.
- W4293057992 hasConceptScore W4293057992C2781307350 @default.
- W4293057992 hasConceptScore W4293057992C31258907 @default.
- W4293057992 hasConceptScore W4293057992C38652104 @default.
- W4293057992 hasConceptScore W4293057992C41008148 @default.
- W4293057992 hasConceptScore W4293057992C68649174 @default.
- W4293057992 hasConceptScore W4293057992C74650414 @default.
- W4293057992 hasConceptScore W4293057992C761482 @default.
- W4293057992 hasConceptScore W4293057992C76155785 @default.
- W4293057992 hasConceptScore W4293057992C79403827 @default.
- W4293057992 hasConceptScore W4293057992C95491727 @default.
- W4293057992 hasLocation W42930579921 @default.
- W4293057992 hasOpenAccess W4293057992 @default.
- W4293057992 hasPrimaryLocation W42930579921 @default.
- W4293057992 hasRelatedWork W1543027051 @default.
- W4293057992 hasRelatedWork W1975310756 @default.
- W4293057992 hasRelatedWork W2138045580 @default.
- W4293057992 hasRelatedWork W2168691487 @default.
- W4293057992 hasRelatedWork W2305763747 @default.
- W4293057992 hasRelatedWork W2494683361 @default.
- W4293057992 hasRelatedWork W2498747238 @default.
- W4293057992 hasRelatedWork W2738925102 @default.
- W4293057992 hasRelatedWork W2775184616 @default.
- W4293057992 hasRelatedWork W2111948274 @default.
- W4293057992 isParatext "false" @default.
- W4293057992 isRetracted "false" @default.
- W4293057992 workType "article" @default.