Atnaujinkite slapukų nuostatas

El. knyga: Natural Computing for Simulation-Based Optimization and Beyond

DRM apribojimai

  • Kopijuoti:

    neleidžiama

  • Spausdinti:

    neleidžiama

  • El. knygos naudojimas:

    Skaitmeninių teisių valdymas (DRM)
    Leidykla pateikė šią knygą šifruota forma, o tai reiškia, kad norint ją atrakinti ir perskaityti reikia įdiegti nemokamą programinę įrangą. Norint skaityti šią el. knygą, turite susikurti Adobe ID . Daugiau informacijos  čia. El. knygą galima atsisiųsti į 6 įrenginius (vienas vartotojas su tuo pačiu Adobe ID).

    Reikalinga programinė įranga
    Norint skaityti šią el. knygą mobiliajame įrenginyje (telefone ar planšetiniame kompiuteryje), turite įdiegti šią nemokamą programėlę: PocketBook Reader (iOS / Android)

    Norint skaityti šią el. knygą asmeniniame arba „Mac“ kompiuteryje, Jums reikalinga  Adobe Digital Editions “ (tai nemokama programa, specialiai sukurta el. knygoms. Tai nėra tas pats, kas „Adobe Reader“, kurią tikriausiai jau turite savo kompiuteryje.)

    Negalite skaityti šios el. knygos naudodami „Amazon Kindle“.

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.
Chapter
1. Introduction to Simulation-Based Optimization.- Chapter
2.
Natural Computing and Optimization.- Chapter
3. Simulation-based
Optimization.
Chapter 4 Conclusions.
Silja Meyer-Nieberg is a postdoctoral researcher at the ITIS GmbH. She holds a Ph.D. degree in Computer Science from the Technical University of Dortmund and obtained her venia legendi in Computer Science at the Bundeswehr University Munich. Her research interests include modeling, simulation-based optimization, metaheuristics, and computational intelligence. She is a member of the IEEE and GI societies and serves currently in the Editorial Board of Applied Soft Computing.

Nadiia Leopold is a doctoral student at the Department of Computer Science of the Universität der Bundeswehr München, Germany and a researcher at the ITIS GmbH. She received her degree in computer science from the National Aviation University, Kyiv Ukraine. Her research interests include modeling and simulation, optimization, and data analysis.

Tobias Uhlig is a postdoctoral researcher at the Universitat der Bundeswehr Munchen, Germany. He holds an M.Sc. degree in Computer Science from Dresden University of Technology and a Ph.D. degree in Computer Science from the Universitat der Bundeswehr Munchen. His research interests include operational modeling, natural computing and heuristic optimization. He is a member of the ASIM and the IEEE RAS Technical Committee on Semiconductor Manufacturing Automation. He is one of the founding members of the ASIM SPL work group BeESPL. He is the author of Self-Replicating Individuals.