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Behavioral Modeling of Pre-emphasis Drivers Including Power Supply Noise Using Neural Networks

机译:预注重驱动器的行为建模,包括使用神经网络的电源噪声

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This paper addresses the nonlinear behavioral modeling of pre-emphasis drivers including power supply noise. The proposed multiple-port model relies on the use of power-aware weighting functions that control the driver’s output stage to model the pre-emphasis behavior with non-ideal power supply accurately. The weighting functions are implemented using feed-forward neural networks (FFNNs), and the dynamic memory characteristics of driver’s ports are captured using recurrent neural networks (RNNs). Practical industrial driver example demonstrates that the proposed modeling method offers good accuracy, flexibility and significant simulation speed-up to facilitate signal integrity and power integrity analysis without compromising intellectual property (IP).
机译:本文解决了预重点驱动器的非线性行为建模,包括电源噪声。所提出的多端口模型依赖于使用控制驾驶员输出级的功率感知加权函数,以准确地使用非理想电源来模拟预加重行为。使用前馈神经网络(FFNN)来实现加权函数,并且使用经常性神经网络(RNN)捕获驾驶员端口的动态存储器特性。实用的工业驱动器示例演示了所提出的建模方法提供良好的精度,灵活性和显着的模拟速度,以便于信号完整性和功率完整性分析而不会影响知识产权(IP)。

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