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Processor Free Time Forecasting Based on Convolutional Neural Network

机译:基于卷积神经网络的处理器空闲时间预测

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For a complex multitask and multiple low power mode processor, to make the processor enter a suitable low power mode in free time to reduce the power consumption, we can forecast the free time of the processor by Back Propagation (BP) neural network algorithm. But as a local search method and having the disadvantage being sensitive to initial weights, BP neural network has the low forecasting accuracy. In this paper, one dimensional convolution neural network is chosen to establish the forecasting model of free time, and some improvements are made based on two-dimensional convolution neural network to improve the suitableness for forecasting one-dimensional array. The simulation experiment shows that the accuracy of the data predicted by one dimensional convolutional neural network is higher than that of the BP neural network.
机译:对于复杂的多任务多低功耗模式处理器,为了使处理器在空闲时间内进入合适的低功耗模式以减少功耗,我们可以通过反向传播(BP)神经网络算法预测处理器的空闲时间。但是,BP神经网络作为一种局部搜索方法,具有对初始权重敏感的缺点,其预测精度较低。本文选择一维卷积神经网络来建立空闲时间的预测模型,并在二维卷积神经网络的基础上进行了一些改进,以提高对一维数组进行预测的适用性。仿真实验表明,一维卷积神经网络预测数据的准确性高于BP神经网络。

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