Multiobjective Scheduling by Genetic Algorithms describes methods for
developing multiobjective solutions to common production scheduling
equations modeling in the literature as flowshops, job shops and open
shops. The methodology is metaheuristic, one inspired by how nature has
evolved a multitude of coexisting species of living beings on earth.
Multiobjective flowshops, job shops and open shops are each highly
relevant models in manufacturing, classroom scheduling or automotive
assembly, yet for want of sound methods they have remained almost
untouched to date. This text shows how methods such as Elitist
Nondominated Sorting Genetic Algorithm (ENGA) can find a bevy of
Pareto optimal solutions for them. Also it accents the value of
hybridizing Gas with both solution-generating and solution-improvement
methods. It envisions fundamental research into such methods, greatly
strengthening the growing reach of metaheuristic methods.
This book is therefore intended for students of industrial engineering,
operations research, operations management and computer science, as well
as practitioners. It may also assist in the development of efficient
shop management software tools for schedulers and production planners
who face multiple planning and operating objectives as a matter of
course.