Evolutionary Scheduling

Sampul Depan
Keshav Dahal, Kay Chen Tan, Peter I. Cowling
Springer, 25 Apr 2007 - 628 halaman

Evolutionary scheduling is a vital research domain at the interface of two important sciences - artificial intelligence and operational research. Scheduling problems are generally complex, large scale, constrained, and multi-objective in nature, and classical operational research techniques are often inadequate at solving them effectively. With the advent of computation intelligence, there is renewed interest in solving scheduling problems using evolutionary computational techniques. These techniques, which include genetic algorithms, genetic programming, evolutionary strategies, memetic algorithms, particle swarm optimization, ant colony systems, etc, are derived from biologically inspired concepts and are well-suited to solve scheduling problems since they are highly scalable and flexible in terms of handling constraints and multiple objectives. This edited book gives an overview of many of the current developments in the large and growing field of evolutionary scheduling, and demonstrates the applicability of evolutionary computational techniques to solve scheduling problems, not only to small-scale test problems, but also fully-fledged real-world problems. The intended readers of this book are engineers, researchers, practitioners, senior undergraduates, and graduate students who are interested in the field of evolutionary scheduling.

 

Isi

Simultaneous Planning and Scheduling for MultiAutonomous
16
Landscapes Embedded Paths and Evolutionary Scheduling
39
Designing Dispatching Rules to Minimize Total Tardiness
115
Hybrid Particle Swarm Optimizers in the Single Machine
143
An Evolutionary Approach for Solving the MultiObjective
165
MultiObjective Evolutionary Algorithm for University Class
197
Energy Applications
273
A Hybrid Evolutionary Algorithm for Service Restoration
293
Networks
383
A MultiObjective Evolutionary Algorithm for Channel Routing
404
K Liu and A K Kulatunga
437
Scheduling Production and Distribution of Rapidly Perishable
465
A Scenariobased Evolutionary Scheduling Approach
485
Business
512
Using a Large Set of Low Level Heuristics
543
A GeneticAlgorithmBased Reconfigurable Scheduler
577

Unit
312
Evolutionary Generator Maintenance Scheduling in Power
349
Evolutionary Algorithm for an Inventory Location Problem
612
Hak Cipta

Edisi yang lain - Lihat semua

Istilah dan frasa umum

Informasi bibliografi