Interval Granular Fuzzy Models: Concepts and Development

In this paper, we present a concept of interval granular fuzzy models and elaborate on their detailed development scheme and performance evaluation. The crux of the underlying design is that the information granules and information granularity which play a pivotal role in human cognitive and decisio...

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Main Authors: Dan Shan, Wei Lu, Jianhua Yang
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8643372/
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spelling doaj-18bdd568303743b4bbae44cd8aadb3bc2021-03-29T22:37:19ZengIEEEIEEE Access2169-35362019-01-017241402415310.1109/ACCESS.2019.28998308643372Interval Granular Fuzzy Models: Concepts and DevelopmentDan Shan0https://orcid.org/0000-0002-8751-0761Wei Lu1https://orcid.org/0000-0002-5775-1222Jianhua Yang2Department of Electronic Engineering, Dalian Neusoft University of Information, Dalian, ChinaSchool of Control Science and Engineering, Dalian University of Technology, Dalian, ChinaSchool of Control Science and Engineering, Dalian University of Technology, Dalian, ChinaIn this paper, we present a concept of interval granular fuzzy models and elaborate on their detailed development scheme and performance evaluation. The crux of the underlying design is that the information granules and information granularity which play a pivotal role in human cognitive and decision-making activities are incorporated into existing fuzzy modeling methods to realize system modeling at the level of information granules. The overall development process of interval granular fuzzy model includes two stages. At the first stage, we form input-error data by computing residual error resulting from the well-established numeric model and then establish granular structures positioned in the input space by clustering input-error data and invoking the principle of justifiable information granularity for weighted data. These granular structures discovered in the input space become condition parts of the rules of the developed interval granular fuzzy model. At the second stage, the interval information granules positioned in the error space are directly induced with the aid of granular structures discovered in the input space. These interval information granules describe the range of residual error produced by the numeric model and are exploited to form the conclusion part of the corresponding rules of the developed interval granular fuzzy model. So far, the interval granular fuzzy model is completely constructed, whose rules help compensate the discrepancies of the numeric model. The output of the developed model is an interval information granule showing a range of possible residual error produced by the numeric model. The several performance indices are presented to evaluate the developed interval granular fuzzy model. A series of numeric experiments completed for synthetic data and real-world data coming from the machine learning repository provide a useful insight into the effectiveness of the presented development scheme, reveal the impact of some parameters on the performance of the developed model and demonstrate its advantages.https://ieeexplore.ieee.org/document/8643372/Interval granular fuzzy modelinterval information granulesinformation granularityfuzzy modelinginterval analysis
collection DOAJ
language English
format Article
sources DOAJ
author Dan Shan
Wei Lu
Jianhua Yang
spellingShingle Dan Shan
Wei Lu
Jianhua Yang
Interval Granular Fuzzy Models: Concepts and Development
IEEE Access
Interval granular fuzzy model
interval information granules
information granularity
fuzzy modeling
interval analysis
author_facet Dan Shan
Wei Lu
Jianhua Yang
author_sort Dan Shan
title Interval Granular Fuzzy Models: Concepts and Development
title_short Interval Granular Fuzzy Models: Concepts and Development
title_full Interval Granular Fuzzy Models: Concepts and Development
title_fullStr Interval Granular Fuzzy Models: Concepts and Development
title_full_unstemmed Interval Granular Fuzzy Models: Concepts and Development
title_sort interval granular fuzzy models: concepts and development
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description In this paper, we present a concept of interval granular fuzzy models and elaborate on their detailed development scheme and performance evaluation. The crux of the underlying design is that the information granules and information granularity which play a pivotal role in human cognitive and decision-making activities are incorporated into existing fuzzy modeling methods to realize system modeling at the level of information granules. The overall development process of interval granular fuzzy model includes two stages. At the first stage, we form input-error data by computing residual error resulting from the well-established numeric model and then establish granular structures positioned in the input space by clustering input-error data and invoking the principle of justifiable information granularity for weighted data. These granular structures discovered in the input space become condition parts of the rules of the developed interval granular fuzzy model. At the second stage, the interval information granules positioned in the error space are directly induced with the aid of granular structures discovered in the input space. These interval information granules describe the range of residual error produced by the numeric model and are exploited to form the conclusion part of the corresponding rules of the developed interval granular fuzzy model. So far, the interval granular fuzzy model is completely constructed, whose rules help compensate the discrepancies of the numeric model. The output of the developed model is an interval information granule showing a range of possible residual error produced by the numeric model. The several performance indices are presented to evaluate the developed interval granular fuzzy model. A series of numeric experiments completed for synthetic data and real-world data coming from the machine learning repository provide a useful insight into the effectiveness of the presented development scheme, reveal the impact of some parameters on the performance of the developed model and demonstrate its advantages.
topic Interval granular fuzzy model
interval information granules
information granularity
fuzzy modeling
interval analysis
url https://ieeexplore.ieee.org/document/8643372/
work_keys_str_mv AT danshan intervalgranularfuzzymodelsconceptsanddevelopment
AT weilu intervalgranularfuzzymodelsconceptsanddevelopment
AT jianhuayang intervalgranularfuzzymodelsconceptsanddevelopment
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