In this article, a novel training set optimization method in an artificial neural network (ANN) constructed for high bandwidth interconnects design is proposed based on rigorous probability analysis. In general, the accuracy of an ANN is enhanced by increasing training set size. However, generating large training sets is inevitably time-consuming and resource-demanding, and sometimes even impossible due to limited prototypes or measurement scenarios. Especially, when the number of channels in required design are huge such as graphics double data rate (GDDR) memory and high bandwidth memory (HBM). Therefore, optimizing the training set selection process is crucial to minimizing the training datasets for developing an efficient ANN. According...
In this study, we propose a new Artificial Neural Networks (ANN) training approach that closes the g...
This article presents a fast population-based multi-objective optimization of electromagnetic device...
In this paper, artificial neural networks are applied to the modeling of the frequency-dependent par...
This paper studies the optimized setup in the design-of-experiment (DoE) method to efficiently const...
In this paper we empirically investigate various sizes of training sets with the aim of determining ...
In this paper, we propose a training sample selection algorithm for artificial neural networks devic...
This letter proposes a fast and precise high-speed channel modeling and optimization technique based...
Crosstalk can cause serious electromagnetic interference problem and crosstalk prediction in the ear...
Deep neural networks (DNNs) are powerful machine learning models and have succeeded in various artif...
Artificial Neural Network (ANN) is one of the modern computational methods proposed to solve increas...
Abstract: To reduce random access memory (RAM) requirements and to increase speed of recognition alg...
parameters design for full-automation ability is an extremely important task, therefore it is challe...
Neural network applications in microwave engineering have been reported since the 1990s. Description...
Recently, circuit analysis and optimization featuring neural-network models have been proposed, redu...
Artificial neural networks (ANNs) have been used to model microwave and RF devices over the years. C...
In this study, we propose a new Artificial Neural Networks (ANN) training approach that closes the g...
This article presents a fast population-based multi-objective optimization of electromagnetic device...
In this paper, artificial neural networks are applied to the modeling of the frequency-dependent par...
This paper studies the optimized setup in the design-of-experiment (DoE) method to efficiently const...
In this paper we empirically investigate various sizes of training sets with the aim of determining ...
In this paper, we propose a training sample selection algorithm for artificial neural networks devic...
This letter proposes a fast and precise high-speed channel modeling and optimization technique based...
Crosstalk can cause serious electromagnetic interference problem and crosstalk prediction in the ear...
Deep neural networks (DNNs) are powerful machine learning models and have succeeded in various artif...
Artificial Neural Network (ANN) is one of the modern computational methods proposed to solve increas...
Abstract: To reduce random access memory (RAM) requirements and to increase speed of recognition alg...
parameters design for full-automation ability is an extremely important task, therefore it is challe...
Neural network applications in microwave engineering have been reported since the 1990s. Description...
Recently, circuit analysis and optimization featuring neural-network models have been proposed, redu...
Artificial neural networks (ANNs) have been used to model microwave and RF devices over the years. C...
In this study, we propose a new Artificial Neural Networks (ANN) training approach that closes the g...
This article presents a fast population-based multi-objective optimization of electromagnetic device...
In this paper, artificial neural networks are applied to the modeling of the frequency-dependent par...