Paper Title:
Pattern Recognition of Group Control Object Based on Fuzzy Neural Network
  Abstract

This paper has proposed a concept of Group Control Object, taking an example according to experimental data of elevator group control object of a building; we apply fuzzy logic and neural network to recognize the pattern of the group control object. With the aid of the fuzzy neural network, this task designs to identify the different passenger flow, and classify it into the six models such as the up-peak service model, down-peak service, two way traffic model, four way traffic model, the balanced bi-story traffic model and free duty traffic model. Then it constructs five-level fuzzy neural networks to apply the classification to the elevator group control, and perform the best group control strategy for each model.

  Info
Periodical
Edited by
Honghua Tan
Pages
2726-2732
DOI
10.4028/www.scientific.net/AMM.29-32.2726
Citation
H. Y. Li, J. J. Li, J. Y. Li, "Pattern Recognition of Group Control Object Based on Fuzzy Neural Network", Applied Mechanics and Materials, Vols. 29-32, pp. 2726-2732, 2010
Online since
August 2010
Export
Price
$32.00
Share

In order to see related information, you need to Login.

In order to see related information, you need to Login.

Authors: Wang Lan Tian
Abstract:Fuzzy neural network, which can deal with complex data and prediction process that other algorithms can not accomplish, has become a focus in...
930
Authors: Zhao Hui Shi, Cheng Zhi Wang
Abstract:In this paper, we take characteristics of wastewater treatment and process technology, drawing on the effectiveness of thetraditional PID...
339
Authors: Jiang Hua Sui, Qiang Ma
Chapter 8: Biomedical Manufacturing
Abstract:The novel multilayer feed-forward AND-OR fuzzy neural network (AND-OR FNN) is proposed in this paper. The main feature is shown not only in...
846
Authors: Xue Zhong Yin, Jie Gui Wang
Chapter 2: Reliability of Instrument and Fault Diagnosis
Abstract:In order to improve the efficiency and reliability of fault diagnosis for the special electronic equipment, an intelligent fault diagnostic...
401
Authors: Chuan Zhi, Zhi Jian Li, Yi Shi
I. Color Science and Technology
Abstract:The nature of device color characteristic methods is the mutual conversion of device-dependent color space and device-independent color...
65