このエントリーをはてなブックマークに追加

Output this information

Link on this page

Natural Computing for Simulation-Based Optimization and Beyond / by Silja Meyer-Nieberg, Nadiia Leopold, Tobias Uhlig
(SpringerBriefs in Operations Research. ISSN:21950504)

Publisher (Cham : Springer International Publishing : Imprint: Springer)
Year 2020
Edition 1st ed. 2020.
Authors *Meyer-Nieberg, Silja author
Leopold, Nadiia author
Uhlig, Tobias author
SpringerLink (Online service)

Hide book details.

Links to the text Library Off-campus access

OB00161737 Springer Business and Management eBooks (電子ブック) 9783030262150

Hide details.

Material Type E-Book
Media type 機械可読データファイル
Size VII, 60 p. 9 illus., 2 illus. in color : online resource
Notes Chapter 1. Introduction to Simulation-Based Optimization -- Chapter 2. Natural Computing and Optimization -- Chapter 3. Simulation-based Optimization -- Chapter 4 Conclusions
This SpringerBrief bridges the gap between the areas of simulation studies on the one hand, and optimization with natural computing on the other. Since natural computing methods have been applied with great success in several application areas, a review concerning potential benefits and pitfalls for simulation studies is merited. The brief presents such an overview and combines it with an introduction to natural computing and selected major approaches, as well as with a concise treatment of general simulation-based optimization. As such, it is the first review which covers both the methodological background and recent application cases. The brief is intended to serve two purposes: First, it can be used to gain more information concerning natural computing, its major dialects, and their usage for simulation studies. It also covers the areas of multi-objective optimization and neuroevolution. While the latter is only seldom mentioned in connection with simulation studies, it is a powerful potential technique. Second, the reader is provided with an overview of several areas of simulation-based optimization which range from logistic problems to engineering tasks. Additionally, the brief focuses on the usage of surrogate and meta-models. The brief presents recent application examples
HTTP:URL=https://doi.org/10.1007/978-3-030-26215-0
Subjects LCSH:Operations research
LCSH:Mathematical optimization
FREE:Operations Research and Decision Theory
FREE:Optimization
Classification LCC:T57.6-.97
DC23:658.403
ID 8000065980
ISBN 9783030262150

 Similar Items