In the design of conventional microwave devices, the parameters need to be continuously optimized to meet the desired targets, and the whole process is time-consuming and laborious. As a surrogate model, machine learning is an effective optimization method. However, in the modeling process, the high-dimensional data processing and the complex nonlinear relationship between parameters is a problem to be solved. This paper proposes a deep learning model for designing UWB antennas, which determines the model structure of deep belief network (DBN) by particle swarm algorithm (PSO), and then combines DBN and extreme learning machine (ELM). The proposed model can obtain higher feature learning capability and nonlinear function approximation capab...
In recent years, various methods from the evolutionary computation (EC) field have been applied to e...
In recent years, various methods from the evolutionary computation (EC) field have been applied to e...
An advanced method of modeling radio-frequency (RF) devices based on a deep learning technique is pr...
With data mining techniques for the preprocessing of training patterns, an artificial neural network...
When using Gaussian process (GP) machine learning as a surrogate model combined with the global opti...
The time-consuming process of developing analytical models can be accelerated with the help of machi...
5G technology is promising to be the future technology due to its higher data output, lower latency,...
The microwave devices are usually optimized by combining the precise model with global optimization ...
The nonlinear representation of active devices plays an important role in microwave circuit design. ...
In this paper, we propose using new Machine Learning (ML)-based optimization methods, as an alternat...
The relations between the antennas' geometrical parameters and design specifications usually consist...
With the advent of millimeter wave (mmWave) communications, the combination of a detailed 5G network...
Artificial Neural Network (ANN) has been extensively applied to microwave device modeling, design an...
Artificial Neural Network (ANN) has been extensively applied to microwave device modeling, design an...
A novel compact circular microstrip patch antenna (CCMPA) with DGS for UWB application is proposed f...
In recent years, various methods from the evolutionary computation (EC) field have been applied to e...
In recent years, various methods from the evolutionary computation (EC) field have been applied to e...
An advanced method of modeling radio-frequency (RF) devices based on a deep learning technique is pr...
With data mining techniques for the preprocessing of training patterns, an artificial neural network...
When using Gaussian process (GP) machine learning as a surrogate model combined with the global opti...
The time-consuming process of developing analytical models can be accelerated with the help of machi...
5G technology is promising to be the future technology due to its higher data output, lower latency,...
The microwave devices are usually optimized by combining the precise model with global optimization ...
The nonlinear representation of active devices plays an important role in microwave circuit design. ...
In this paper, we propose using new Machine Learning (ML)-based optimization methods, as an alternat...
The relations between the antennas' geometrical parameters and design specifications usually consist...
With the advent of millimeter wave (mmWave) communications, the combination of a detailed 5G network...
Artificial Neural Network (ANN) has been extensively applied to microwave device modeling, design an...
Artificial Neural Network (ANN) has been extensively applied to microwave device modeling, design an...
A novel compact circular microstrip patch antenna (CCMPA) with DGS for UWB application is proposed f...
In recent years, various methods from the evolutionary computation (EC) field have been applied to e...
In recent years, various methods from the evolutionary computation (EC) field have been applied to e...
An advanced method of modeling radio-frequency (RF) devices based on a deep learning technique is pr...