In order to overcome the problems of slow rate of convergence and falling easily into local minimum in BP algorithm, this paper introduces the adaptive particle swarm optimization algorithm and combining model. The paper applies it to steam turbine-generators fault diagnosis. The experiment data shows that the algorithm converges quickly and recognizes faults efficiently; it has a reference value for faults diagnosis
BP neural network (Back-Propagation Neural Network, BP-NN) is one of the most widely neural network ...
The fault rate in equipment increases significantly along with the service life of the equipment, es...
A transformer is an important part of the power system. Existing transformer fault diagnosis methods...
Aiming at improving the convergence performance of conventional BP neural network, this paper presen...
The basic thought of particle swarm optimization is introduced firstly, then particle swarm optimiza...
A new fault diagnosis method based on improved Adaptive fuzzy spiking neural P systems (in short, AF...
A novel approach for data mining of steam turbine based on neural network and genetic algorithm is b...
The current paper proposes intelligent Fault Detection and Diagnosis (FDD) approaches, aimed to ensu...
Since failure of steam turbines occurs frequently and can causes huge losses for thermal plants, it ...
A transformer is an important part of power transmission and transformation equipment. Once a fault ...
With the rapid development of high-power tractor, the fault diagnosis of high-power tractor has beco...
On basis of fault categories detection, the diagnosis of rotor fault causes is proposed, which has g...
AbstractThis paper presents particle swarm optimization (PSO)-based support vector classifier (SVC) ...
Abstract: The basic Particle Swarm Optimization (PSO) algorithm and its principle have been introduc...
The real-time fault diagnosis system is very important for steam turbine generator set due serious f...
BP neural network (Back-Propagation Neural Network, BP-NN) is one of the most widely neural network ...
The fault rate in equipment increases significantly along with the service life of the equipment, es...
A transformer is an important part of the power system. Existing transformer fault diagnosis methods...
Aiming at improving the convergence performance of conventional BP neural network, this paper presen...
The basic thought of particle swarm optimization is introduced firstly, then particle swarm optimiza...
A new fault diagnosis method based on improved Adaptive fuzzy spiking neural P systems (in short, AF...
A novel approach for data mining of steam turbine based on neural network and genetic algorithm is b...
The current paper proposes intelligent Fault Detection and Diagnosis (FDD) approaches, aimed to ensu...
Since failure of steam turbines occurs frequently and can causes huge losses for thermal plants, it ...
A transformer is an important part of power transmission and transformation equipment. Once a fault ...
With the rapid development of high-power tractor, the fault diagnosis of high-power tractor has beco...
On basis of fault categories detection, the diagnosis of rotor fault causes is proposed, which has g...
AbstractThis paper presents particle swarm optimization (PSO)-based support vector classifier (SVC) ...
Abstract: The basic Particle Swarm Optimization (PSO) algorithm and its principle have been introduc...
The real-time fault diagnosis system is very important for steam turbine generator set due serious f...
BP neural network (Back-Propagation Neural Network, BP-NN) is one of the most widely neural network ...
The fault rate in equipment increases significantly along with the service life of the equipment, es...
A transformer is an important part of the power system. Existing transformer fault diagnosis methods...