Bulletin of Electrical Engineering and Informatics
Vol 8, No 1: March 2019

Progress in neural network based techniques for signal integrity analysis–a survey

Chan Hong Goay (Universiti Sains Malaysia)
Azniza Abd Aziz (Universiti Sains Malaysia)
Nur Syazreen Ahmad (Universiti Sains Malaysia)
Patrick Goh (Universiti Sains Malaysia)



Article Info

Publish Date
01 Mar 2019

Abstract

With the increase in data rates, signal integrity analysis has become more time and memory intensive. Simulation tools such as 3D electromagnetic field solvers can be accurate but slow, whereas faster models such as design equations and equivalent circuit models lack accuracy. Artificial neural networks (ANNs) have recently gained popularity in the RF and microwave circuit modeling community as a new modeling tool. This has in turn spurred progress towards applications of neural networks in signal integrity. A neural network can learn from a set of data generated during the design process. It can then be used as a fast and accurate modeling tool to replace conventional approaches. This paper reviews the recent advancement of neural networks in the area of signal integrity modeling. Key advancements are considered, particularly those that assist the ability of the neural network to cope with an increasing number of inputs and handle large amounts of data.

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