The role of fuzzy logic in modeling, identification and control

In the nearly four decades which have passed since the launching of the Sputnik, great progress has been achieved in our understanding of how to model, identify and control complex systems. However, to be able to design systems having high MIQ (Machine Intelligence Quotient), a profound change in th...

Full description

Bibliographic Details
Main Author: Lotfi A. Zadeh
Format: Article
Language:English
Published: Norwegian Society of Automatic Control 1994-07-01
Series:Modeling, Identification and Control
Subjects:
Online Access:http://www.mic-journal.no/PDF/1994/MIC-1994-3-9.pdf
id doaj-940299b22cce418784423baa920d34fe
record_format Article
spelling doaj-940299b22cce418784423baa920d34fe2020-11-25T02:30:53ZengNorwegian Society of Automatic ControlModeling, Identification and Control0332-73531890-13281994-07-0115319120310.4173/mic.1994.3.9The role of fuzzy logic in modeling, identification and controlLotfi A. ZadehIn the nearly four decades which have passed since the launching of the Sputnik, great progress has been achieved in our understanding of how to model, identify and control complex systems. However, to be able to design systems having high MIQ (Machine Intelligence Quotient), a profound change in the orientation of control theory may be required. More specifically, what may be needed is the employment of soft computing - rather than hard computing - in systems analysis and design. Soft computing - unlike hard computing - is tolerant of imprecision, uncertainty and partial truth. http://www.mic-journal.no/PDF/1994/MIC-1994-3-9.pdfFuzzy logicfuzzy contol
collection DOAJ
language English
format Article
sources DOAJ
author Lotfi A. Zadeh
spellingShingle Lotfi A. Zadeh
The role of fuzzy logic in modeling, identification and control
Modeling, Identification and Control
Fuzzy logic
fuzzy contol
author_facet Lotfi A. Zadeh
author_sort Lotfi A. Zadeh
title The role of fuzzy logic in modeling, identification and control
title_short The role of fuzzy logic in modeling, identification and control
title_full The role of fuzzy logic in modeling, identification and control
title_fullStr The role of fuzzy logic in modeling, identification and control
title_full_unstemmed The role of fuzzy logic in modeling, identification and control
title_sort role of fuzzy logic in modeling, identification and control
publisher Norwegian Society of Automatic Control
series Modeling, Identification and Control
issn 0332-7353
1890-1328
publishDate 1994-07-01
description In the nearly four decades which have passed since the launching of the Sputnik, great progress has been achieved in our understanding of how to model, identify and control complex systems. However, to be able to design systems having high MIQ (Machine Intelligence Quotient), a profound change in the orientation of control theory may be required. More specifically, what may be needed is the employment of soft computing - rather than hard computing - in systems analysis and design. Soft computing - unlike hard computing - is tolerant of imprecision, uncertainty and partial truth.
topic Fuzzy logic
fuzzy contol
url http://www.mic-journal.no/PDF/1994/MIC-1994-3-9.pdf
work_keys_str_mv AT lotfiazadeh theroleoffuzzylogicinmodelingidentificationandcontrol
AT lotfiazadeh roleoffuzzylogicinmodelingidentificationandcontrol
_version_ 1724827069635887104