TY - JOUR
T1 - AI-based quality of service optimization for multimedia transmission on Internet of Vehicles (IoV) systems
AU - Xin, Qin
AU - Alazab, Mamoun
AU - González Crespo, Rubén
AU - Enrique Montenegro-Marin, Carlos
N1 - Publisher Copyright:
© 2022
PY - 2022/8
Y1 - 2022/8
N2 - Multimedia Communications of Internet of Vehicles (IoV) uses WLAN, NFC and Fifth Generation networks. At the same time, in multimedia communications in healthcare, IoV's essential task is optimizing the quality of experience (QoE) via regulating wireless links between cars. In addition, the artificial intelligence (AI) method has revolutionized IoV's environment in total, and portable wireless devices have become highly essential to end consumers in their various activities for transferring multimedia material into IoV systems. Most consumers face their irritated and not-so-sufficient view of the performance, QoE. When the service delivery is not pleasurable, most customers can stop, and the market can eventually devalue the overall performance of a product, organization, or system as a whole. This article initially offers two new algorithms called Energy-aware QoE Optimization Algorithm (EQOA) and Queue aware QoE Optimization Algorithm (QQOA) and contrasts their results with Baseline. This article provides an alternative approach to these problems. Secondly, it presents a system for multimodal communication. Thirdly, multimedia IoV transmission through mobile devices offers the QoE Optimization Model. The experimental findings show that the proposed methods maximize QoE by delighting end-users service of mobile devices to levels greater than Baseline reference. Therefore, the suggested algorithms surpass the Baseline such that during multimedia transmission, they can be regarded as promising contenders for IoV implementations.
AB - Multimedia Communications of Internet of Vehicles (IoV) uses WLAN, NFC and Fifth Generation networks. At the same time, in multimedia communications in healthcare, IoV's essential task is optimizing the quality of experience (QoE) via regulating wireless links between cars. In addition, the artificial intelligence (AI) method has revolutionized IoV's environment in total, and portable wireless devices have become highly essential to end consumers in their various activities for transferring multimedia material into IoV systems. Most consumers face their irritated and not-so-sufficient view of the performance, QoE. When the service delivery is not pleasurable, most customers can stop, and the market can eventually devalue the overall performance of a product, organization, or system as a whole. This article initially offers two new algorithms called Energy-aware QoE Optimization Algorithm (EQOA) and Queue aware QoE Optimization Algorithm (QQOA) and contrasts their results with Baseline. This article provides an alternative approach to these problems. Secondly, it presents a system for multimodal communication. Thirdly, multimedia IoV transmission through mobile devices offers the QoE Optimization Model. The experimental findings show that the proposed methods maximize QoE by delighting end-users service of mobile devices to levels greater than Baseline reference. Therefore, the suggested algorithms surpass the Baseline such that during multimedia transmission, they can be regarded as promising contenders for IoV implementations.
KW - Artificial intelligence
KW - Internet of things
KW - Internet of vehicles
KW - Multimedia communication
KW - Qos optimization
UR - http://www.scopus.com/inward/record.url?scp=85124180793&partnerID=8YFLogxK
U2 - 10.1016/j.seta.2022.102055
DO - 10.1016/j.seta.2022.102055
M3 - Article
AN - SCOPUS:85124180793
SN - 2213-1388
VL - 52
SP - 1
EP - 10
JO - Sustainable Energy Technologies and Assessments
JF - Sustainable Energy Technologies and Assessments
IS - Part A
M1 - 102055
ER -