We propose a deep neural network (DNN) to determine the matching circuit parameters for antenna impedance matching. The DNN determines the element values of the matching circuit without requiring a mathematical description of matching methods, and it approximates feasible solutions even for unimplementable inputs. For matching, the magnitude and phase of impedance should be known in general. In contrast, the element values of the matching circuit can be determined only using the impedance magnitude using the proposed DNN. A gamma-matching circuit consisting of a series capacitor and a parallel capacitor was applied to a conventional inverted-F antenna for impedance matching. For learning, the magnitude of input impedance S11 of the antenna ...
Rich experience and intuition play important roles in designing planar transformers (TFs) for contem...
A new method for calculating the resonant resistance of electrically thin and thick rectangular micr...
International audienceIn this chapter, we analyzed some applications of deep learning methods to ele...
Due to the exponential growth of data communications, linearity specification is deteriorating and, ...
Abstract – Impedance matching between transmission lines and antennas is an important and fundamenta...
An advanced method of modeling radio-frequency (RF) devices based on a deep learning technique is pr...
Modeling and simulating a power distribution network (PDN) for printed circuit boards with irregular...
This paper proposes a deep neural network (DNN) based method for the purpose of power-ground plane i...
A deep learning approach for the efficient electromagnetic analysis of an on-chip inductor with dumm...
WOS:000463308500006In this study, deep neural network (DNN) is implemented to soft computation of th...
In a communication system the impedance of the load is generally matched to that of the source in or...
A deep neural network (DNN) model is developed in this paper for fast prediction of time-domain refl...
A new equivalent dipole model hybrid with artificial neural network (ANN) is proposed in this paper ...
Deep learning technology is generally applied to analyze periodic data, such as the data of electrom...
In this paper, we present a method for obtaining the power density value, which is the standard for ...
Rich experience and intuition play important roles in designing planar transformers (TFs) for contem...
A new method for calculating the resonant resistance of electrically thin and thick rectangular micr...
International audienceIn this chapter, we analyzed some applications of deep learning methods to ele...
Due to the exponential growth of data communications, linearity specification is deteriorating and, ...
Abstract – Impedance matching between transmission lines and antennas is an important and fundamenta...
An advanced method of modeling radio-frequency (RF) devices based on a deep learning technique is pr...
Modeling and simulating a power distribution network (PDN) for printed circuit boards with irregular...
This paper proposes a deep neural network (DNN) based method for the purpose of power-ground plane i...
A deep learning approach for the efficient electromagnetic analysis of an on-chip inductor with dumm...
WOS:000463308500006In this study, deep neural network (DNN) is implemented to soft computation of th...
In a communication system the impedance of the load is generally matched to that of the source in or...
A deep neural network (DNN) model is developed in this paper for fast prediction of time-domain refl...
A new equivalent dipole model hybrid with artificial neural network (ANN) is proposed in this paper ...
Deep learning technology is generally applied to analyze periodic data, such as the data of electrom...
In this paper, we present a method for obtaining the power density value, which is the standard for ...
Rich experience and intuition play important roles in designing planar transformers (TFs) for contem...
A new method for calculating the resonant resistance of electrically thin and thick rectangular micr...
International audienceIn this chapter, we analyzed some applications of deep learning methods to ele...