Abstract Although Technology Computer-Aided Design (TCAD) simulation has paved a successful and efficient way to significantly reduce the cost of experiments under the device design, it still encounters many challenges as the semiconductor industry goes through rapid development in recent years, i.e. Complex 3D device structures, power devices. Recently, although machine learning has been proposed to enable the simulation acceleration and inverse‑design of devices, which can quickly and accurately predict device performance, up to now physical quantities (such as electric field, potential energy, quantum-mechanically confined carrier distributions, and so on) being essential for understanding device physics can still only be obtained by tra...
CPUs and dedicated accelerators (namely GPUs and FPGAs) continue to grow increasingly large and comp...
© 2019 IEEE.We present a novel approach of using deep convolutional neural networks (CNN) to predict...
This paper presents modeling nanometer MOSFETs by a neural network approach. The principle of this a...
The simulation and design of electronic devices such as transistors is vital for the semiconductor i...
The discrepancies between reality and simulation impede the optimisation and scalability of solid-st...
Due to the aggressive scaling down of logic semiconductors, the difficulty of semiconductor componen...
This work investigates the possibility to replace numerical TCAD device simulations with a multi-lay...
Abstract Semiconductor device optimization using computer-based prototyping techniques like simulati...
This work describes a novel simulation approach that combines machine learning and device modeling s...
In this paper, we present an artificial neural network (ANN)-based compact model to evaluate the cha...
There is a growing consensus that the physics-based model needs to be coupled with machine learning ...
This work investigates the possibility to replace numerical TCAD device simulations with a multi-lay...
CPUs and dedicated accelerators (namely GPUs and FPGAs) continue to grow increasingly large and comp...
This paper presents a neural network method to model nanometer MOSFET transistor characteristics, it...
In this letter, we present a novel approach based on using convolutional neural networks (CNNs) to v...
CPUs and dedicated accelerators (namely GPUs and FPGAs) continue to grow increasingly large and comp...
© 2019 IEEE.We present a novel approach of using deep convolutional neural networks (CNN) to predict...
This paper presents modeling nanometer MOSFETs by a neural network approach. The principle of this a...
The simulation and design of electronic devices such as transistors is vital for the semiconductor i...
The discrepancies between reality and simulation impede the optimisation and scalability of solid-st...
Due to the aggressive scaling down of logic semiconductors, the difficulty of semiconductor componen...
This work investigates the possibility to replace numerical TCAD device simulations with a multi-lay...
Abstract Semiconductor device optimization using computer-based prototyping techniques like simulati...
This work describes a novel simulation approach that combines machine learning and device modeling s...
In this paper, we present an artificial neural network (ANN)-based compact model to evaluate the cha...
There is a growing consensus that the physics-based model needs to be coupled with machine learning ...
This work investigates the possibility to replace numerical TCAD device simulations with a multi-lay...
CPUs and dedicated accelerators (namely GPUs and FPGAs) continue to grow increasingly large and comp...
This paper presents a neural network method to model nanometer MOSFET transistor characteristics, it...
In this letter, we present a novel approach based on using convolutional neural networks (CNNs) to v...
CPUs and dedicated accelerators (namely GPUs and FPGAs) continue to grow increasingly large and comp...
© 2019 IEEE.We present a novel approach of using deep convolutional neural networks (CNN) to predict...
This paper presents modeling nanometer MOSFETs by a neural network approach. The principle of this a...