Back to Search

Adaptive Neurofuzzy Identification and Control

AUTHOR Danial, Amin
PUBLISHER LAP Lambert Academic Publishing (12/29/2011)
PRODUCT TYPE Paperback (Paperback)

Description
A powerful algorithm is introduced to build an adaptive Takagi-Sugeno neurofuzzy model online from zero fuzzy rules for unknown nonlinear SISO systems. The proposed technique creates the fuzzy rules and adapts the membership functions in the IF statement as well as the linear model in the THEN statements. In addition, the algorithm searches for redundant rules to be eliminated to get as less number of rules as possible. The proposed technique has been applied to nonlinear plant models commonly encountered in chemical reactors to elaborate its efficiency. An adaptive controller based on the induced neurofuzzy model is developed and applied to SISO nonlinear systems showing the efficient behavior of the proposed controller. A stability study is also included. The proposed algorithm is then extended to build neurofuzzy models for nonlinear MIMO systems in an automated manner online, based on which a control scheme is built to drive nonlinear MIMO systems to follow linear reference models. The power of the proposed technique is demonstrated though its application on a MIMO nonlinear system thus elaborating its efficiency.
Show More
Product Format
Product Details
ISBN-13: 9783847320654
ISBN-10: 3847320653
Binding: Paperback or Softback (Trade Paperback (Us))
Content Language: English
More Product Details
Page Count: 144
Carton Quantity: 56
Product Dimensions: 6.00 x 0.34 x 9.00 inches
Weight: 0.49 pound(s)
Country of Origin: US
Subject Information
BISAC Categories
Technology & Engineering | General
Descriptions, Reviews, Etc.
publisher marketing
A powerful algorithm is introduced to build an adaptive Takagi-Sugeno neurofuzzy model online from zero fuzzy rules for unknown nonlinear SISO systems. The proposed technique creates the fuzzy rules and adapts the membership functions in the IF statement as well as the linear model in the THEN statements. In addition, the algorithm searches for redundant rules to be eliminated to get as less number of rules as possible. The proposed technique has been applied to nonlinear plant models commonly encountered in chemical reactors to elaborate its efficiency. An adaptive controller based on the induced neurofuzzy model is developed and applied to SISO nonlinear systems showing the efficient behavior of the proposed controller. A stability study is also included. The proposed algorithm is then extended to build neurofuzzy models for nonlinear MIMO systems in an automated manner online, based on which a control scheme is built to drive nonlinear MIMO systems to follow linear reference models. The power of the proposed technique is demonstrated though its application on a MIMO nonlinear system thus elaborating its efficiency.
Show More
Your Price  $75.67
Paperback