基于贝叶斯吸引子模型的遗传算法的分布式视频处理系统能量优化

H. Shimonishi, M. Murata, G. Hasegawa, Nattaon Techasarntikul
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引用次数: 0

摘要

在未来的信息物理系统(CPS)社会中,需要使用大量的摄像头和传感器来实时构建真实世界的数字孪生(DTs)。因此,用于大规模分布式视频分析的网络和计算机的能源效率是cps和dt全面推广的主要挑战。为了实现这一目标,我们首先提出了一个模型,可以将视频分析任务任意拆分和分配到终端、边缘服务器和云服务器,并动态地为它们分配合适的CNN模型。这种分布式处理的全系统优化可以通过减少网络带宽和有效利用分布式CPU/GPU资源来降低系统整体功耗。为了在实际系统中实现这种优化,我们还提出了一个基于大量实验测量的模型来估计这些设备的GPU负载,处理时间和功耗。针对问题的动态性和多目标性给大规模优化带来的困难,提出了一种由遗传算法和贝叶斯吸引子模型组成的优化算法。最后,进行了仿真评估,表明即使在不断变化的环境条件下,该方法也能最大限度地降低系统功耗,满足每次视频分析的延迟和识别精度要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy Optimization of Distributed Video Processing System using Genetic Algorithm with Bayesian Attractor Model
For the future cyber-physical system (CPS) society, it is necessary to construct digital twins (DTs) of a real world in real time using a lot of cameras and sensors. Hence, the energy efficiency of both networks and computers for largescale distributed video analysis is a major challenge for the full-scale spread of CPSs and DTs. Toward this goal, we first propose a model to arbitrarily split and distribute the video analysis task to terminals, edge servers, and cloud servers and dynamically assign appropriate CNN models to them. System-wide optimization of such distributed processing can reduce overall system power consumption by reducing network bandwidth and efficiently utilizing distributed CPU/GPU resources. To realize this optimization in a real system, we also propose a model to estimate the GPU load, processing time, and power consumption of these devices based on massive experimental measurements. Since such a large-scale optimization is difficult because of the dynamic and multi-objective nature of the problem, we propose a new optimization algorithm composed of Genetic Algorithm and Bayesian Attractor Model. Finally, simulation evaluations are performed to demonstrate that the proposed method can minimize system power consumption and satisfy latency and recognition accuracy requirements of each video analysis, even under changing environmental conditions.
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