计算机科学
体验质量
能源消耗
恒定比特率
实时计算
流算法
基于HTTP的动态自适应流媒体
适应性
能量(信号处理)
可变比特率
高效能源利用
计算机网络
多媒体
分布式计算
服务质量
比特率
生态学
数学分析
统计
数学
上下界
电气工程
生物
工程类
作者
Bekir Turkkan,Ting Dai,Adithya Raman,Tevfik Kosar,Changyou Chen,Muhammed Fatih Bulut,Jarosław Żola,Daby Sow
摘要
Adaptive bitrate (ABR) algorithms play a critical role in video streaming by making optimal bitrate decisions in dynamically changing network conditions to provide a high quality of experience (QoE) for users. However, most existing ABRs suffer from limitations such as predefined rules and incorrect assumptions about streaming parameters. They often prioritize higher bitrates and ignore the corresponding energy footprint, resulting in increased energy consumption, especially for mobile device users. Additionally, most ABR algorithms do not consider perceived quality, leading to suboptimal user experience. This paper proposes a novel ABR scheme called GreenABR+, which utilizes deep reinforcement learning to optimize energy consumption during video streaming while maintaining high user QoE. Unlike existing rule-based ABR algorithms, GreenABR+ makes no assumptions about video settings or the streaming environment. GreenABR+ model works on different video representation sets and can adapt to dynamically changing conditions in a wide range of network scenarios. Our experiments demonstrate that GreenABR+ outperforms state-of-the-art ABR algorithms by saving up to 57% in streaming energy consumption and 57% in data consumption while providing up to 25% more perceptual QoE due to up to 87% less rebuffering time and near-zero capacity violations. The generalization and dynamic adaptability make GreenABR+ a flexible solution for energy-efficient ABR optimization.
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