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Hardware-software partitioning of real-time operating systems using Hopfield neural networks

机译:使用Hopfield神经网络的实时操作系统的软硬件分区

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The hardware-software automated partitioning of a real-time operating system in the system-on-a-chip (SoC-RTOS partitioning) is a NP-complete problem, and a crucial step in the hardware-software co-design of SoC. In this paper, a new model for SoC-RTOS partitioning is introduced, which can help in understanding the essence of the SoC-RTOS partitioning. A discrete Hopfield neural network approach for implementing the SoC-RTOS partitioning is proposed, where a novel energy function, operating equation and coefficients of the neural network are redefined. Simulations are carried out with comparison to other optimization techniques. Experimental results demonstrate the feasibility and effectiveness of the proposed method.
机译:片上系统中实时操作系统的硬件-软件自动分区(SoC-RTOS分区)是一个完整的NP问题,并且是SoC硬件-软件协同设计中的关键步骤。本文介绍了一种新的SoC-RTOS分区模型,可以帮助您理解SoC-RTOS分区的本质。提出了一种用于实现SoC-RTOS分区的离散Hopfield神经网络方法,其中重新定义了神经网络的新能量函数,运算方程式和系数。与其他优化技术相比,进行了仿真。实验结果证明了该方法的可行性和有效性。

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