Metaheuristics for Hard Optimization Metaheuristics for Hard Optimization

Metaheuristics for Hard Optimization

Methods and Case Studies

Johann Dréo и другие
    • 109,99 $
    • 109,99 $

От издателя

Metaheuristics for Hard Optimization comprises of three parts. The first part is devoted to the detailed presentation of the four most widely known metaheuristics:

• the simulated annealing method,

• tabu search,

• the evolutionary algorithms,

• ant colony algorithms.

Each one of these metaheuristics is actually a family of methods, of which the essential elements are discussed. In the second part, the book presents some other less widespread metaheuristics, then, extensions of metaheuristics and some ways of research are described . The problem of the choice of a metaheuristic is posed and solution methods are discussed. The last part concentrates on three case studies from telecommunications, air traffic control, and vehicle routing.

ЖАНР
Наука и природа
РЕЛИЗ
2006
16 января
ЯЗЫК
EN
английский
ОБЪЕМ
384
стр.
ИЗДАТЕЛЬ
Springer Berlin Heidelberg
ПРОДАВЕЦ
Springer Nature B.V.
РАЗМЕР
5,8
МБ
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