This article presents a length-dependent deep neural network (LD-DNN) based channel modeling methodology to predict the frequency response of high-speed channels. The proposed method significantly enhances the model accuracy and design efficiency while considering the channel length dependence that was neglected in previous modeling approaches. We define the concept of the electrical length to model the length and frequency dependence, then further leverage the activation function to capture the multiple reflection effects to improve accuracy. Additionally, we model the insertion loss resonance induced by crosstalk that can seriously deteriorate signal integrity. As a result, by adopting the proposed model which can predict the S-parameters...
Design space exploration and sensitivity analysis for electrical performance of high-speed serial li...
The paper describes the exploitation of feed-forward neural networks and recurrent neural networks f...
Comprehensive and accurate channel modeling is paramount to the systematic analysis of wireless netw...
This letter proposes a fast and precise high-speed channel modeling and optimization technique based...
In this paper, artificial neural networks are applied to the modeling of the frequency-dependent par...
An advanced method of modeling radio-frequency (RF) devices based on a deep learning technique is pr...
This paper studies the optimized setup in the design-of-experiment (DoE) method to efficiently const...
A deep neural network (DNN) model is developed in this paper for fast prediction of time-domain refl...
Abstract — Artificial neural networks (ANN) have gained attention as fast and flexible vehicles to m...
Channel estimation is a critical component in wireless communication systems, including orthogonal f...
Large-scale fading models play an important role in estimating radio coverage, optimizing base stati...
Crosstalk can cause serious electromagnetic interference problem and crosstalk prediction in the ear...
This letter presents an impressive optimization method for determining the optimal model hyperparame...
WOS:000463308500006In this study, deep neural network (DNN) is implemented to soft computation of th...
Design and analysis of high-speed SerDes channels primarily deal with ensuring signal integrity (SI)...
Design space exploration and sensitivity analysis for electrical performance of high-speed serial li...
The paper describes the exploitation of feed-forward neural networks and recurrent neural networks f...
Comprehensive and accurate channel modeling is paramount to the systematic analysis of wireless netw...
This letter proposes a fast and precise high-speed channel modeling and optimization technique based...
In this paper, artificial neural networks are applied to the modeling of the frequency-dependent par...
An advanced method of modeling radio-frequency (RF) devices based on a deep learning technique is pr...
This paper studies the optimized setup in the design-of-experiment (DoE) method to efficiently const...
A deep neural network (DNN) model is developed in this paper for fast prediction of time-domain refl...
Abstract — Artificial neural networks (ANN) have gained attention as fast and flexible vehicles to m...
Channel estimation is a critical component in wireless communication systems, including orthogonal f...
Large-scale fading models play an important role in estimating radio coverage, optimizing base stati...
Crosstalk can cause serious electromagnetic interference problem and crosstalk prediction in the ear...
This letter presents an impressive optimization method for determining the optimal model hyperparame...
WOS:000463308500006In this study, deep neural network (DNN) is implemented to soft computation of th...
Design and analysis of high-speed SerDes channels primarily deal with ensuring signal integrity (SI)...
Design space exploration and sensitivity analysis for electrical performance of high-speed serial li...
The paper describes the exploitation of feed-forward neural networks and recurrent neural networks f...
Comprehensive and accurate channel modeling is paramount to the systematic analysis of wireless netw...