Artificial intelligent power prediction for efficient resource management of WCDMA mobile network
This paper presents a method of predicting changes of power consumption at Node B of a wideband code division multiple access (WCDMA) mobile network due to dynamic resource allocation such as movement of unit equipment (UE), handover call from adjacent cell and accommodation of new service request....
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my.uniten.dspace-297122024-04-17T10:52:48Z Artificial intelligent power prediction for efficient resource management of WCDMA mobile network Tee Y.K. Tinng S.K. Koh J. David Y. 55031013900 26636199000 22951210700 58254200300 Call admission control Genetic algorithm Quality of service Support vector regression Wideband code division multiple access Access control Code division multiple access Electric power utilization Genetic algorithms Genetic engineering Network management Planning Quality of service Regression analysis Resource allocation Telecommunication services Vectors Wireless networks Wireless telecommunication systems Artificial intelligent Call admission control Dynamic resource allocations Handover Integrated supports Mobile networks New services Optimal beams Power Consumption Prediction errors Resource management Support vector regression Support vector regressions Wideband code division multiple access Quality control This paper presents a method of predicting changes of power consumption at Node B of a wideband code division multiple access (WCDMA) mobile network due to dynamic resource allocation such as movement of unit equipment (UE), handover call from adjacent cell and accommodation of new service request. The method learns the mapping of power consumption at Node B by monitoring power changes that response to previous performed resource allocation. Estimation of the unknown function is implemented with support vector regression (SVR). The output of SVR will be used by WCDMA mobile network to decide on new service admission. Genetic algorithm (GA) is then applied to form optimal beams to cover all UEs in a cell with minimum power. This artificial intelligent call admission control (CAC) was validated using a dynamic WCDMA mobile network simulator. A few comparative results in downlink have shown that our integrated support vector regression assists genetic algorithm (SVRaGA) is capable of predicting next interval power consumption at Node B with low prediction error and improving the quality of service (QoS) by reducing dropped calls. � 2008 IEICE. Final 2023-12-28T07:41:45Z 2023-12-28T07:41:45Z 2008 Conference Paper 2-s2.0-66149134740 https://www.scopus.com/inward/record.uri?eid=2-s2.0-66149134740&partnerID=40&md5=bd41f59929009a9e7b54b5194df53f35 https://irepository.uniten.edu.my/handle/123456789/29712 4773836 Scopus |
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Call admission control Genetic algorithm Quality of service Support vector regression Wideband code division multiple access Access control Code division multiple access Electric power utilization Genetic algorithms Genetic engineering Network management Planning Quality of service Regression analysis Resource allocation Telecommunication services Vectors Wireless networks Wireless telecommunication systems Artificial intelligent Call admission control Dynamic resource allocations Handover Integrated supports Mobile networks New services Optimal beams Power Consumption Prediction errors Resource management Support vector regression Support vector regressions Wideband code division multiple access Quality control |
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Call admission control Genetic algorithm Quality of service Support vector regression Wideband code division multiple access Access control Code division multiple access Electric power utilization Genetic algorithms Genetic engineering Network management Planning Quality of service Regression analysis Resource allocation Telecommunication services Vectors Wireless networks Wireless telecommunication systems Artificial intelligent Call admission control Dynamic resource allocations Handover Integrated supports Mobile networks New services Optimal beams Power Consumption Prediction errors Resource management Support vector regression Support vector regressions Wideband code division multiple access Quality control Tee Y.K. Tinng S.K. Koh J. David Y. Artificial intelligent power prediction for efficient resource management of WCDMA mobile network |
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This paper presents a method of predicting changes of power consumption at Node B of a wideband code division multiple access (WCDMA) mobile network due to dynamic resource allocation such as movement of unit equipment (UE), handover call from adjacent cell and accommodation of new service request. The method learns the mapping of power consumption at Node B by monitoring power changes that response to previous performed resource allocation. Estimation of the unknown function is implemented with support vector regression (SVR). The output of SVR will be used by WCDMA mobile network to decide on new service admission. Genetic algorithm (GA) is then applied to form optimal beams to cover all UEs in a cell with minimum power. This artificial intelligent call admission control (CAC) was validated using a dynamic WCDMA mobile network simulator. A few comparative results in downlink have shown that our integrated support vector regression assists genetic algorithm (SVRaGA) is capable of predicting next interval power consumption at Node B with low prediction error and improving the quality of service (QoS) by reducing dropped calls. � 2008 IEICE. |
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55031013900 |
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55031013900 Tee Y.K. Tinng S.K. Koh J. David Y. |
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Conference Paper |
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Tee Y.K. Tinng S.K. Koh J. David Y. |
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title |
Artificial intelligent power prediction for efficient resource management of WCDMA mobile network |
title_short |
Artificial intelligent power prediction for efficient resource management of WCDMA mobile network |
title_full |
Artificial intelligent power prediction for efficient resource management of WCDMA mobile network |
title_fullStr |
Artificial intelligent power prediction for efficient resource management of WCDMA mobile network |
title_full_unstemmed |
Artificial intelligent power prediction for efficient resource management of WCDMA mobile network |
title_sort |
artificial intelligent power prediction for efficient resource management of wcdma mobile network |
publishDate |
2023 |
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1806427937378926592 |
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13.211869 |