03189nam a22004815i 4500
978-1-4419-9560-5
DE-He213
20141014113445.0
cr nn 008mamaa
120319s2012 xxu| s |||| 0|eng d
9781441995605
978-1-4419-9560-5
10.1007/978-1-4419-9560-5
doi
eng
Q342
UYQ
bicssc
COM004000
bisacsh
006.3
23
Wang, Shuming.
author.
Fuzzy Stochastic Optimization
[electronic resource] :
Theory, Models and Applications /
by Shuming Wang, Junzo Watada.
Boston, MA :
Springer US,
2012.
Boston, MA :
Springer US,
2012.
XVI, 248 p.
online resource.
text
txt
rdacontent
computer
c
rdamedia
online resource
cr
rdacarrier
text file
PDF
rda
Part I: Theory -- Fuzzy Random Variable -- Fuzzy Stochastic Renewal Processes -- Part II: Models -- System Reliability Optimization Models with Fuzzy Random Lifetimes -- Recourse-Based Fuzzy Random Facility Location Model with Fixed Capacity -- Two-Stage Fuzzy Stochastic Programming with Value-at-Risk: A Generic Model -- VaR-Based Fuzzy Random Facility Location Model with Variable Capacity -- Part III: Real-Life Applications.
Covering in detail both theoretical and practical perspectives, this book is a self-contained and systematic depiction of current fuzzy stochastic optimization that deploys the fuzzy random variable as a core mathematical tool to model the integrated fuzzy random uncertainty. It proceeds in an orderly fashion from the requisite theoretical aspects of the fuzzy random variable to fuzzy stochastic optimization models and their real-life case studies. The volume reflects the fact that randomness and fuzziness (or vagueness) are two major sources of uncertainty in the real world, with significant implications in a number of settings. In industrial engineering, management and economics, the chances are high that decision makers will be confronted with information that is simultaneously probabilistically uncertain and fuzzily imprecise, and optimization in the form of a decision must be made in an environment that is doubly uncertain, characterized by a co-occurrence of randomness and fuzziness. This book begins by outlining the history and development of the fuzzy random variable before detailing numerous optimization models and applications that include the design of system controls for a dam.
Engineering.
Mathematical optimization.
Engineering.
Computational Intelligence.
Optimization.
Statistics for Engineering, Physics, Computer Science, Chemistry and Earth Sciences.
Watada, Junzo.
author.
SpringerLink (Online service)
Springer eBooks
Printed edition:
9781441995599
http://dx.doi.org/10.1007/978-1-4419-9560-5
ZDB-2-ENG
EB
1620
1620