6533b853fe1ef96bd12acde4
RESEARCH PRODUCT
Cell state prediction through distributed estimation of transmit power
Farhan AzharMuhammad Zeeshan AsgharMuaz MaqboolNouman AliMirza Mubasher BaigMuhammad NaumanMuhammad Saqib Ilyassubject
050101 languages & linguisticsComputer science05 social sciencesProcess (computing)Decision tree5G-tekniikka02 engineering and technologymatkaviestinverkotTransmitter power outputcomputer.software_genreRandom forestcell outage detectionSupport vector machineBase stationmachine learningkoneoppiminen0202 electrical engineering electronic engineering information engineeringCellular network5G cellular networks020201 artificial intelligence & image processing0501 psychology and cognitive sciencesData miningcomputerTest datadescription
Determining the state of each cell, for instance, cell outages, in a densely deployed cellular network is a difficult problem. Several prior studies have used minimization of drive test (MDT) reports to detect cell outages. In this paper, we propose a two step process. First, using the MDT reports, we estimate the serving base station’s transmit power for each user. Second, we learn summary statistics of estimated transmit power for various networks states and use these to classify the network state on test data. Our approach is able to achieve an accuracy of 96% on an NS-3 simulation dataset. Decision tree, random forest and SVM classifiers were able to achieve a classification accuracy of 72.3%, 76.52% and 77.48%, respectively . peerReviewed
year | journal | country | edition | language |
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2019-01-01 |