An improved hybrid particle swarm optimization (PSO)-based wavelet neural network (WNN) for Modeling the development of Fluid Dispensing for Electronic Packaging (MFD-EP) is presented in this paper. In modeling the fluid dispensing process, it is important to understand the process behavior as well as determine the optimum operating conditions of the process for a high-yield, low-cost, and robust operation. Modeling the fluid dispensing process is a complex nonlinear problem. This kind of problem is suitable to be solved by applying a neural network. Among the different kinds of neural networks, the WNN is a good choice to solve the problem. In the proposed WNN, the translation parameters are variables depending on the network inputs. Due t...
This paper proposes a new learning method for process neural networks (PNNs) based on the Gaussian m...
In this paper, a novel real time non-linear model predictive controller (NMPC) for a multi-variable ...
Abstract. This paper proposes a new learning method for process neural net-works (PNNs) based on the...
Author name used in this publication: H. H. C. IuAuthor name used in this publication: F. H. F. Leun...
Author name used in this publication: H. H. C. IuAuthor name used in this publication: F. H. F Leung...
A new hybrid particle swarm optimization (PSO) that incorporates a wavelet-theory-based mutation ope...
Wavelet neural network is an alternative to artificial neural network in empirical modeling of indus...
Fluid dispensing is a popular process in the semiconductor manufacturing industry, commonly being us...
Determination of process conditions for a fluid dispensing process of microchip encapsulation is a h...
A model of wavelet neural network (WNN) using a new evolutionary learning algorithm is proposed in t...
Neural networks have been effective in several engineering applications because of their learning ab...
In a polyhydroxyalkanoates (PHA) production, optimized fermentation process helps in reducing overal...
In this paper, an intelligent swarm based-wavelet neural network for affective mobile designed is pr...
The synthetic ammonia decarbonization is a typical complex industrial process, which has the charact...
This article presents the design, simulation and real-time implementation of a constrained non-linea...
This paper proposes a new learning method for process neural networks (PNNs) based on the Gaussian m...
In this paper, a novel real time non-linear model predictive controller (NMPC) for a multi-variable ...
Abstract. This paper proposes a new learning method for process neural net-works (PNNs) based on the...
Author name used in this publication: H. H. C. IuAuthor name used in this publication: F. H. F. Leun...
Author name used in this publication: H. H. C. IuAuthor name used in this publication: F. H. F Leung...
A new hybrid particle swarm optimization (PSO) that incorporates a wavelet-theory-based mutation ope...
Wavelet neural network is an alternative to artificial neural network in empirical modeling of indus...
Fluid dispensing is a popular process in the semiconductor manufacturing industry, commonly being us...
Determination of process conditions for a fluid dispensing process of microchip encapsulation is a h...
A model of wavelet neural network (WNN) using a new evolutionary learning algorithm is proposed in t...
Neural networks have been effective in several engineering applications because of their learning ab...
In a polyhydroxyalkanoates (PHA) production, optimized fermentation process helps in reducing overal...
In this paper, an intelligent swarm based-wavelet neural network for affective mobile designed is pr...
The synthetic ammonia decarbonization is a typical complex industrial process, which has the charact...
This article presents the design, simulation and real-time implementation of a constrained non-linea...
This paper proposes a new learning method for process neural networks (PNNs) based on the Gaussian m...
In this paper, a novel real time non-linear model predictive controller (NMPC) for a multi-variable ...
Abstract. This paper proposes a new learning method for process neural net-works (PNNs) based on the...