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Physics-Inspired Neural Networks for Efficient Device Compact Modeling

机译:物理启发式神经网络,可进行高效的设备紧凑建模

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摘要

We present a novel physics-inspired neural network (Pi-NN) approach for compact modeling. Development of high-quality compact models for devices is a key to connect device science with applications. One recent approach is to treat compact modeling as a regression problem in machine learning. The most common learning algorithm to develop compact models is the multilayer perceptron (MLP) neural network. However, device compact models derived using the MLP neural networks often exhibit unphysical behavior, which is eliminated in the Pi-NN approach proposed in this paper, since the Pi-NN incorporates fundamental device physics. As a result, smooth, accurate, and computationally efficient device models can be learned from discrete data points by using Pi-NN. This paper sheds new light on the future of the neural network compact modeling.
机译:我们提出了一种新颖的物理启发式神经网络(Pi-NN)方法进行紧凑建模。为设备开发高质量紧凑模型是将设备科学与应用程序联系起来的关键。最近的一种方法是将紧凑模型视为机器学习中的回归问题。开发紧凑模型的最常见的学习算法是多层感知器(MLP)神经网络。但是,使用MLP神经网络推导的设备紧凑模型通常表现出非物理行为,由于Pi-NN包含了基本的设备物理原理,因此在本文提出的Pi-NN方法中已将其消除。结果,通过使用Pi-NN,可以从离散的数据点中学习到平滑,准确且计算高效的设备模型。本文为神经网络紧凑建模的未来提供了新的思路。

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