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Monte Carlo Methods in Fuzzy Optimization (Hardcover, 2008 ed.): James J Buckley, Leonard J. Jowers Monte Carlo Methods in Fuzzy Optimization (Hardcover, 2008 ed.)
James J Buckley, Leonard J. Jowers
R3,087 Discovery Miles 30 870 Ships in 10 - 15 working days

Monte Carlo Methods in Fuzzy Optimization is a clear and didactic book about Monte Carlo methods using random fuzzy numbers to obtain approximate solutions to fuzzy optimization problems. The book includes various solved problems such as fuzzy linear programming, fuzzy regression, fuzzy inventory control, fuzzy game theory, and fuzzy queuing theory. The book will appeal to engineers, researchers, and students in Fuzziness and applied mathematics.

Simulating Continuous Fuzzy Systems (Hardcover, 2006 ed.): James J Buckley, Leonard J. Jowers Simulating Continuous Fuzzy Systems (Hardcover, 2006 ed.)
James J Buckley, Leonard J. Jowers
R4,820 R4,512 Discovery Miles 45 120 Save R308 (6%) Ships in 12 - 17 working days

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.

Monte Carlo Methods in Fuzzy Optimization (Paperback, Softcover reprint of hardcover 1st ed. 2008): James J Buckley, Leonard J.... Monte Carlo Methods in Fuzzy Optimization (Paperback, Softcover reprint of hardcover 1st ed. 2008)
James J Buckley, Leonard J. Jowers
R2,927 Discovery Miles 29 270 Ships in 10 - 15 working days

Monte Carlo Methods in Fuzzy Optimization is a clear and didactic book about Monte Carlo methods using random fuzzy numbers to obtain approximate solutions to fuzzy optimization problems. The book includes various solved problems such as fuzzy linear programming, fuzzy regression, fuzzy inventory control, fuzzy game theory, and fuzzy queuing theory. The book will appeal to engineers, researchers, and students in Fuzziness and applied mathematics.

Simulating Continuous Fuzzy Systems (Paperback, Softcover reprint of hardcover 1st ed. 2006): James J Buckley, Leonard J. Jowers Simulating Continuous Fuzzy Systems (Paperback, Softcover reprint of hardcover 1st ed. 2006)
James J Buckley, Leonard J. Jowers
R4,441 Discovery Miles 44 410 Ships in 10 - 15 working days

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.

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