Energy-Efficient Federated Learning With Resource Allocation for Green IoT Edge Intelligence in B5G

An edge intelligence-aided Internet-of-Things (IoT) network has been proposed to accelerate the response of IoT services by deploying edge intelligence near IoT devices. The transmission of data from IoT devices to the edge nodes leads to large network traffic in the wireless connections. Federatedm...

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Main Authors: ADEB SALH, ADEB SALH, RAZALI NGAH, RAZALI NGAH, LUKMAN AUDAH, LUKMAN AUDAH, KWANG SOON KIM, KWANG SOON KIM, QAZWAN ABDULLAH, QAZWAN ABDULLAH, YAHYA M. AL-MOLIKI, YAHYA M. AL-MOLIKI, KHALED A. ALJALOUD, KHALED A. ALJALOUD, HAIRUL NIZAM TALIB, HAIRUL NIZAM TALIB
Format: Article
Language:English
Published: Ieee Acces 2023
Subjects:
Online Access:http://eprints.uthm.edu.my/9177/1/J15916_cf78dab738eabff1c909c88fd9243b22.pdf
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author ADEB SALH, ADEB SALH
RAZALI NGAH, RAZALI NGAH
LUKMAN AUDAH, LUKMAN AUDAH
KWANG SOON KIM, KWANG SOON KIM
QAZWAN ABDULLAH, QAZWAN ABDULLAH
YAHYA M. AL-MOLIKI, YAHYA M. AL-MOLIKI
KHALED A. ALJALOUD, KHALED A. ALJALOUD
HAIRUL NIZAM TALIB, HAIRUL NIZAM TALIB
author_facet ADEB SALH, ADEB SALH
RAZALI NGAH, RAZALI NGAH
LUKMAN AUDAH, LUKMAN AUDAH
KWANG SOON KIM, KWANG SOON KIM
QAZWAN ABDULLAH, QAZWAN ABDULLAH
YAHYA M. AL-MOLIKI, YAHYA M. AL-MOLIKI
KHALED A. ALJALOUD, KHALED A. ALJALOUD
HAIRUL NIZAM TALIB, HAIRUL NIZAM TALIB
author_sort ADEB SALH, ADEB SALH
collection UTHM
description An edge intelligence-aided Internet-of-Things (IoT) network has been proposed to accelerate the response of IoT services by deploying edge intelligence near IoT devices. The transmission of data from IoT devices to the edge nodes leads to large network traffic in the wireless connections. Federatedm Learning (FL) is proposed to solve the high computational complexity by training the model locally on IoT devices and sharing the model parameters in the edge nodes. This paper focuses on developing an efficient integration of joint edge intelligence nodes depending on investigating an energy-efficient bandwidth allocation, computing Central Processing Unit (CPU) frequency, optimization transmission power, and the desired level of learning accuracy to minimize the energy consumption and satisfy the FL time requirement for all IoT devices. The proposal efficiently optimized the computation frequency allocation and reduced energy consumption in IoT devices by solving the bandwidth optimization problem in closed form. The remaining computational frequency allocation, transmission power allocation, and loss could be resolved with an Alternative Direction Algorithm (ADA) to reduce energy consumption and complexity at every iteration of FL time from IoT devices to edge intelligence nodes. The simulation results indicated that the proposed ADA can adapt the central processing unit frequency and power transmission control to reduce energy consumption at the cost of a small growth of FL time.
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spelling uthm.eprints-91772023-07-17T07:32:10Z http://eprints.uthm.edu.my/9177/ Energy-Efficient Federated Learning With Resource Allocation for Green IoT Edge Intelligence in B5G ADEB SALH, ADEB SALH RAZALI NGAH, RAZALI NGAH LUKMAN AUDAH, LUKMAN AUDAH KWANG SOON KIM, KWANG SOON KIM QAZWAN ABDULLAH, QAZWAN ABDULLAH YAHYA M. AL-MOLIKI, YAHYA M. AL-MOLIKI KHALED A. ALJALOUD, KHALED A. ALJALOUD HAIRUL NIZAM TALIB, HAIRUL NIZAM TALIB T Technology (General) An edge intelligence-aided Internet-of-Things (IoT) network has been proposed to accelerate the response of IoT services by deploying edge intelligence near IoT devices. The transmission of data from IoT devices to the edge nodes leads to large network traffic in the wireless connections. Federatedm Learning (FL) is proposed to solve the high computational complexity by training the model locally on IoT devices and sharing the model parameters in the edge nodes. This paper focuses on developing an efficient integration of joint edge intelligence nodes depending on investigating an energy-efficient bandwidth allocation, computing Central Processing Unit (CPU) frequency, optimization transmission power, and the desired level of learning accuracy to minimize the energy consumption and satisfy the FL time requirement for all IoT devices. The proposal efficiently optimized the computation frequency allocation and reduced energy consumption in IoT devices by solving the bandwidth optimization problem in closed form. The remaining computational frequency allocation, transmission power allocation, and loss could be resolved with an Alternative Direction Algorithm (ADA) to reduce energy consumption and complexity at every iteration of FL time from IoT devices to edge intelligence nodes. The simulation results indicated that the proposed ADA can adapt the central processing unit frequency and power transmission control to reduce energy consumption at the cost of a small growth of FL time. Ieee Acces 2023 Article PeerReviewed text en http://eprints.uthm.edu.my/9177/1/J15916_cf78dab738eabff1c909c88fd9243b22.pdf ADEB SALH, ADEB SALH and RAZALI NGAH, RAZALI NGAH and LUKMAN AUDAH, LUKMAN AUDAH and KWANG SOON KIM, KWANG SOON KIM and QAZWAN ABDULLAH, QAZWAN ABDULLAH and YAHYA M. AL-MOLIKI, YAHYA M. AL-MOLIKI and KHALED A. ALJALOUD, KHALED A. ALJALOUD and HAIRUL NIZAM TALIB, HAIRUL NIZAM TALIB (2023) Energy-Efficient Federated Learning With Resource Allocation for Green IoT Edge Intelligence in B5G. Digital Object Identifier, 11. https://doi.org/10.1109/ACCESS.2023.3244099
spellingShingle T Technology (General)
ADEB SALH, ADEB SALH
RAZALI NGAH, RAZALI NGAH
LUKMAN AUDAH, LUKMAN AUDAH
KWANG SOON KIM, KWANG SOON KIM
QAZWAN ABDULLAH, QAZWAN ABDULLAH
YAHYA M. AL-MOLIKI, YAHYA M. AL-MOLIKI
KHALED A. ALJALOUD, KHALED A. ALJALOUD
HAIRUL NIZAM TALIB, HAIRUL NIZAM TALIB
Energy-Efficient Federated Learning With Resource Allocation for Green IoT Edge Intelligence in B5G
title Energy-Efficient Federated Learning With Resource Allocation for Green IoT Edge Intelligence in B5G
title_full Energy-Efficient Federated Learning With Resource Allocation for Green IoT Edge Intelligence in B5G
title_fullStr Energy-Efficient Federated Learning With Resource Allocation for Green IoT Edge Intelligence in B5G
title_full_unstemmed Energy-Efficient Federated Learning With Resource Allocation for Green IoT Edge Intelligence in B5G
title_short Energy-Efficient Federated Learning With Resource Allocation for Green IoT Edge Intelligence in B5G
title_sort energy efficient federated learning with resource allocation for green iot edge intelligence in b5g
topic T Technology (General)
url http://eprints.uthm.edu.my/9177/1/J15916_cf78dab738eabff1c909c88fd9243b22.pdf
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