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首页> 外文期刊>Journal of systems architecture >Hierarchical neural networks based prediction and control of dynamic reconfiguration for multilevel embedded systems
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Hierarchical neural networks based prediction and control of dynamic reconfiguration for multilevel embedded systems

机译:基于层次神经网络的多层嵌入式系统动态重构预测与控制

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摘要

Multimedia design such as video decoders are typically composed of several communicating tasks. Each task is characterized by its workload variation. The target device of this kind of application contains several processing unit. This calls for a dynamic management of hardware units to improve the QOS of the application and to optimally allocate resources. In this paper, we propose a new architecture based on hierarchical multilevel neural network to model workload variation of each task. The hierarchical structure of this neural network perfectly describes the multilevel decomposition of each hardware unit. The aim of this investigation is to build a design with a control unit that manages the architecture and resource allocation according to the neural network workload prediction.
机译:诸如视频解码器之类的多媒体设计通常由多个通信任务组成。每个任务都有其工作量变化的特征。这种应用的目标设备包含几个处理单元。这就要求对硬件单元进行动态管理,以改善应用程序的QOS并优化分配资源。在本文中,我们提出了一种基于分层多级神经网络的新架构,以对每个任务的工作量变化进行建模。该神经网络的层次结构完美地描述了每个硬件单元的多级分解。这项研究的目的是建立一个带有控制单元的设计,该控制单元根据神经网络工作负载预测来管理体系结构和资源分配。

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