Extremal Fuzzy Dynamic Systems

Extremal Fuzzy Dynamic Systems PDF Author: Gia Sirbiladze
Publisher: Springer Science & Business Media
ISBN: 1461442508
Category : Science
Languages : en
Pages : 416

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Book Description
In this book the author presents a new approach to the study of weakly structurable dynamic systems. It differs from other approaches by considering time as a source of fuzzy uncertainty in dynamic systems. It begins with a thorough introduction, where the general research domain, the problems, and ways of their solutions are discussed. The book then progresses systematically by first covering the theoretical aspects before tackling the applications. In the application section, a software library is described, which contains discrete EFDS identification methods elaborated during fundamental research of the book. Extremal Fuzzy Dynamic Systems will be of interest to theoreticians interested in modeling fuzzy processes, to researchers who use fuzzy statistics, as well as practitioners from different disciplines whose research interests include abnormal, extreme and monotone processes in nature and society. Graduate students could also find this book useful.

A First Course in Fuzzy Logic, Fuzzy Dynamical Systems, and Biomathematics

A First Course in Fuzzy Logic, Fuzzy Dynamical Systems, and Biomathematics PDF Author: Laécio Carvalho de Barros
Publisher: Springer Nature
ISBN: 3031504925
Category :
Languages : en
Pages : 324

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Book Description


Fuzzy Dynamic Systems

Fuzzy Dynamic Systems PDF Author: Jeffery R. Layne
Publisher:
ISBN:
Category :
Languages : en
Pages : 372

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Book Description


A First Course in Fuzzy Logic, Fuzzy Dynamical Systems, and Biomathematics

A First Course in Fuzzy Logic, Fuzzy Dynamical Systems, and Biomathematics PDF Author: Laécio Carvalho de Barros
Publisher: Springer
ISBN: 3662533243
Category : Technology & Engineering
Languages : en
Pages : 304

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Book Description
This book provides an essential introduction to the field of dynamical models. Starting from classical theories such as set theory and probability, it allows readers to draw near to the fuzzy case. On one hand, the book equips readers with a fundamental understanding of the theoretical underpinnings of fuzzy sets and fuzzy dynamical systems. On the other, it demonstrates how these theories are used to solve modeling problems in biomathematics, and presents existing derivatives and integrals applied to the context of fuzzy functions. Each of the major topics is accompanied by examples, worked-out exercises, and exercises to be completed. Moreover, many applications to real problems are presented. The book has been developed on the basis of the authors’ lectures to university students and is accordingly primarily intended as a textbook for both upper-level undergraduates and graduates in applied mathematics, statistics, and engineering. It also offers a valuable resource for practitioners such as mathematical consultants and modelers, and for researchers alike, as it may provide both groups with new ideas and inspirations for projects in the fields of fuzzy logic and biomathematics.

Fuzzy Dynamic Equations, Dynamic Inclusions, and Optimal Control Problems on Time Scales

Fuzzy Dynamic Equations, Dynamic Inclusions, and Optimal Control Problems on Time Scales PDF Author: Svetlin G. Georgiev
Publisher: Springer Nature
ISBN: 3030761320
Category : Mathematics
Languages : en
Pages : 882

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Book Description
The theory of dynamic equations has many interesting applications in control theory, mathematical economics, mathematical biology, engineering and technology. In some cases, there exists uncertainty, ambiguity, or vague factors in such problems, and fuzzy theory and interval analysis are powerful tools for modeling these equations on time scales. The aim of this book is to present a systematic account of recent developments; describe the current state of the useful theory; show the essential unity achieved in the theory fuzzy dynamic equations, dynamic inclusions and optimal control problems on time scales; and initiate several new extensions to other types of fuzzy dynamic systems and dynamic inclusions. The material is presented in a highly readable, mathematically solid format. Many practical problems are illustrated, displaying a wide variety of solution techniques. The book is primarily intended for senior undergraduate students and beginning graduate students of engineering and science courses. Students in mathematical and physical sciences will find many sections of direct relevance.

Dynamic Equations and Almost Periodic Fuzzy Functions on Time Scales

Dynamic Equations and Almost Periodic Fuzzy Functions on Time Scales PDF Author: Chao Wang
Publisher: Springer Nature
ISBN: 3031112369
Category : Mathematics
Languages : en
Pages : 195

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Book Description
This book systematically establishes the almost periodic theory of dynamic equations and presents applications on time scales in fuzzy mathematics and uncertainty theory. The authors introduce a new division of fuzzy vectors depending on a determinant algorithm and develop a theory of almost periodic fuzzy multidimensional dynamic systems on time scales. Several applications are studied; in particular, a new type of fuzzy dynamic systems called fuzzy q-dynamic systems (i.e. fuzzy quantum dynamic systems) is presented. The results are not only effective on classical fuzzy dynamic systems, including their continuous and discrete situations, but are also valid for other fuzzy multidimensional dynamic systems on various hybrid domains. In an effort to achieve more accurate analysis in real world applications, the authors propose a number of uncertain factors in the theory. As such, fuzzy dynamical models, interval-valued functions, differential equations, fuzzy-valued differential equations, and their applications to dynamic equations on time scales are considered.

Fuzzy Logic in Action: Applications in Epidemiology and Beyond

Fuzzy Logic in Action: Applications in Epidemiology and Beyond PDF Author: Eduardo Massad
Publisher: Springer Science & Business Media
ISBN: 3540690921
Category : Medical
Languages : en
Pages : 353

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Book Description
Fuzzy Logic in Action: Applications in Epidemiology and Beyond, co-authored by Eduardo Massad, Neli Ortega, Laécio Barros, and Cláudio Struchiner is a remarkable achievement. The book brings a major paradigm shift to medical sciences exploring the use of fuzzy sets in epidemiology and medical diagnosis arena. The volume addresses the most significant topics in the broad areas of epidemiology, mathematical modeling and uncertainty, embodying them within the framework of fuzzy set and dynamic systems theory. Written by leading contributors to the area of epidemiology, medical informatics and mathematics, the book combines a very lucid and authoritative exposition of the fundamentals of fuzzy sets with an insightful use of the fundamentals in the area of epidemiology and diagnosis. The content is clearly illustrated by numerous illustrative examples and several real world applications. Based on their profound knowledge of epidemiology and mathematical modeling, and on their keen understanding of the role played by uncertainty and fuzzy sets, the authors provide insights into the connections between biological phenomena and dynamic systems as a mean to predict, diagnose, and prescribe actions. An example is the use of Bellman-Zadeh fuzzy decision making approach to develop a vaccination strategy to manage measles epidemics in São Paulo. The book offers a comprehensive, systematic, fully updated and self- contained treatise of fuzzy sets in epidemiology and diagnosis. Its content covers material of vital interest to students, researchers and practitioners and is suitable both as a textbook and as a reference. The authors present new results of their own in most of the chapters. In doing so, they reflect the trend to view fuzzy sets, probability theory and statistics as an association of complementary and synergetic modeling methodologies.

System Identification of Stochastic Nonlinear Dynamic Systems using Takagi-Sugeno Fuzzy Models

System Identification of Stochastic Nonlinear Dynamic Systems using Takagi-Sugeno Fuzzy Models PDF Author: Salman Zaidi
Publisher: kassel university press GmbH
ISBN: 3737606501
Category : Fuzzy systems
Languages : en
Pages : 155

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Book Description
Some novel approaches to estimate Nonlinear Output Error (NOE) models using TS fuzzy models for a class of nonlinear dynamic systems having variability in their outputs is presented in this dissertation. Instead of using unrealistic assumptions about uncertainty, the most common of which is normality, the proposed methodology tends to capture effects caused by the real uncertainty observed in the data. The methodology requires that the identification method must be repeated offline a number of times under similar conditions. This leads to multiple inputoutput time series from the underlying system. These time series are preprocessed using the techniques of statistics and probability theory to generate the envelopes of response at each time instant. By incorporating interval data in fuzzy modelling and using the theory of symbolic interval-valued data, a TS fuzzy model with interval antecedent and consequent parameters is obtained. The proposed identification algorithm provides for a model for predicting the center-valued response as well as envelopes as the measure of uncertainty in system output.

Diagnosis of Continous Dynamic Systems Based on Fuzzy Information Processing

Diagnosis of Continous Dynamic Systems Based on Fuzzy Information Processing PDF Author: Mihaela Ulieru
Publisher:
ISBN:
Category :
Languages : en
Pages : 9

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Book Description


Simulating Continuous Fuzzy Systems

Simulating Continuous Fuzzy Systems PDF Author: James J. Buckley
Publisher: Springer
ISBN: 3540312277
Category : Technology & Engineering
Languages : en
Pages : 197

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Book Description
1. 1 Introduction This book is written in two major parts. The ?rst part includes the int- ductory chapters consisting of Chapters 1 through 6. In part two, Chapters 7-26, we present the applications. This book continues our research into simulating fuzzy systems. We started with investigating simulating discrete event fuzzy systems ([7],[13],[14]). These systems can usually be described as queuing networks. Items (transactions) arrive at various points in the s- tem and go into a queue waiting for service. The service stations, preceded by a queue, are connected forming a network of queues and service, until the transaction ?nally exits the system. Examples considered included - chine shops, emergency rooms, project networks, bus routes, etc. Analysis of all of these systems depends on parameters like arrival rates and service rates. These parameters are usually estimated from historical data. These estimators are generally point estimators. The point estimators are put into the model to compute system descriptors like mean time an item spends in the system, or the expected number of transactions leaving the system per unit time. We argued that these point estimators contain uncertainty not shown in the calculations. Our estimators of these parameters become fuzzy numbers, constructed by placing a set of con?dence intervals one on top of another. Using fuzzy number parameters in the model makes it into a fuzzy system. The system descriptors we want (time in system, number leaving per unit time) will be fuzzy numbers.