Deep Learning-Based Prediction of Resource Block Usage Rate for Spectrum Saturation Diagnosis

Strict restrictions on spectrum utilization and the rapid increases in mobile users have brought fundamental challenges for mobile network operators in securing sufficient spectrum resources. In designing reliable cellular networks, it is essential to predict spectrum saturation events in the future...

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Main Authors: Han Seung Jang, Hoon Lee, Hyeyeon Kwon, Seungkeun Park
Format: Article
Language:English
Published: IEEE 2021-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9406027/
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author Han Seung Jang
Hoon Lee
Hyeyeon Kwon
Seungkeun Park
author_facet Han Seung Jang
Hoon Lee
Hyeyeon Kwon
Seungkeun Park
author_sort Han Seung Jang
collection DOAJ
description Strict restrictions on spectrum utilization and the rapid increases in mobile users have brought fundamental challenges for mobile network operators in securing sufficient spectrum resources. In designing reliable cellular networks, it is essential to predict spectrum saturation events in the future by analyzing the past behavior of base stations, especially their frequency resource block (RB) utilization states. This paper investigates a deep learning-based forecasting strategy of the future RB usage rate (RBUR) status of hundreds of LTE base stations deployed in Seoul, South Korea. The dataset consists of real measurement RBUR samples with a randomly varying number of base stations at each measurement time. This poses a difficulty in handling variable-length RBUR data vectors, which is not trivial for state-of-the-art deep learning estimation models, e.g., recurrent neural networks (RNNs), developed for handling fixed-length inputs. To this end, we propose a two-step RBUR estimation approach. In the first step, we extract a useful feature of the RBUR dataset that accurately approximates the behavior of the top quantile base stations. The feature parameters are carefully designed to be fixed-length vectors regardless of the dimensions of the raw RBUR samples. The fixed-length feature parameter vectors are readily exploited as the training dataset of RNN-based prediction models. Thus, in the second step, we propose a feature estimation strategy where the RNN is trained to predict the future RBUR from the input feature parameter sequences. With the estimated RBUR at hand, we can easily predict the spectrum saturation of the future LTE systems by examining the resource utilization states of the top quantile base stations. Numerical results demonstrate the performance of the proposed RBUR estimation methods with the real measurement dataset.
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spelling doaj.art-ab9a3aced11f4aeea010c6bb7bfe7a732022-12-21T17:17:10ZengIEEEIEEE Access2169-35362021-01-019597035971410.1109/ACCESS.2021.30736709406027Deep Learning-Based Prediction of Resource Block Usage Rate for Spectrum Saturation DiagnosisHan Seung Jang0https://orcid.org/0000-0002-9024-8952Hoon Lee1https://orcid.org/0000-0003-0753-8324Hyeyeon Kwon2https://orcid.org/0000-0002-4869-2523Seungkeun Park3https://orcid.org/0000-0003-4956-8775School of Electrical, Electronic Communication, and Computer Engineering, Chonnam National University, Yeosu, South KoreaDepartment of Information and Communications Engineering, Pukyong National University, Busan, South KoreaRadio Resource Research Group, Electronics and Telecommunications Research Institute (ETRI), Daejeon, South KoreaRadio Resource Research Group, Electronics and Telecommunications Research Institute (ETRI), Daejeon, South KoreaStrict restrictions on spectrum utilization and the rapid increases in mobile users have brought fundamental challenges for mobile network operators in securing sufficient spectrum resources. In designing reliable cellular networks, it is essential to predict spectrum saturation events in the future by analyzing the past behavior of base stations, especially their frequency resource block (RB) utilization states. This paper investigates a deep learning-based forecasting strategy of the future RB usage rate (RBUR) status of hundreds of LTE base stations deployed in Seoul, South Korea. The dataset consists of real measurement RBUR samples with a randomly varying number of base stations at each measurement time. This poses a difficulty in handling variable-length RBUR data vectors, which is not trivial for state-of-the-art deep learning estimation models, e.g., recurrent neural networks (RNNs), developed for handling fixed-length inputs. To this end, we propose a two-step RBUR estimation approach. In the first step, we extract a useful feature of the RBUR dataset that accurately approximates the behavior of the top quantile base stations. The feature parameters are carefully designed to be fixed-length vectors regardless of the dimensions of the raw RBUR samples. The fixed-length feature parameter vectors are readily exploited as the training dataset of RNN-based prediction models. Thus, in the second step, we propose a feature estimation strategy where the RNN is trained to predict the future RBUR from the input feature parameter sequences. With the estimated RBUR at hand, we can easily predict the spectrum saturation of the future LTE systems by examining the resource utilization states of the top quantile base stations. Numerical results demonstrate the performance of the proposed RBUR estimation methods with the real measurement dataset.https://ieeexplore.ieee.org/document/9406027/LTErecurrent neural networkresource block usage ratespectrum saturation
spellingShingle Han Seung Jang
Hoon Lee
Hyeyeon Kwon
Seungkeun Park
Deep Learning-Based Prediction of Resource Block Usage Rate for Spectrum Saturation Diagnosis
IEEE Access
LTE
recurrent neural network
resource block usage rate
spectrum saturation
title Deep Learning-Based Prediction of Resource Block Usage Rate for Spectrum Saturation Diagnosis
title_full Deep Learning-Based Prediction of Resource Block Usage Rate for Spectrum Saturation Diagnosis
title_fullStr Deep Learning-Based Prediction of Resource Block Usage Rate for Spectrum Saturation Diagnosis
title_full_unstemmed Deep Learning-Based Prediction of Resource Block Usage Rate for Spectrum Saturation Diagnosis
title_short Deep Learning-Based Prediction of Resource Block Usage Rate for Spectrum Saturation Diagnosis
title_sort deep learning based prediction of resource block usage rate for spectrum saturation diagnosis
topic LTE
recurrent neural network
resource block usage rate
spectrum saturation
url https://ieeexplore.ieee.org/document/9406027/
work_keys_str_mv AT hanseungjang deeplearningbasedpredictionofresourceblockusagerateforspectrumsaturationdiagnosis
AT hoonlee deeplearningbasedpredictionofresourceblockusagerateforspectrumsaturationdiagnosis
AT hyeyeonkwon deeplearningbasedpredictionofresourceblockusagerateforspectrumsaturationdiagnosis
AT seungkeunpark deeplearningbasedpredictionofresourceblockusagerateforspectrumsaturationdiagnosis