Proceedings Article10.1109/NOMS.1998.654894
Using genetic algorithms for complex, real-time scheduling applications
D. Montana,G. Bidwell,S. Moore +2 more
- 15 Feb 1998
- Vol. 1, pp 245-248
7
TL;DR: The genetic algorithm technology provides a domain-independent infrastructure upon which BBN has rapidly developed customized software solutions for various customers and is expecting that its scheduling technology will soon be deployed to solve hard scheduling problems in network operations management.
read more
Abstract: Applications that require real-time scheduling of large-scale problems in complex domains present a number of difficulties for search and optimization techniques. These difficulties include: (i) a search space whose size grows exponentially with the size of the problem, (ii) a problem that is constantly changing due to a changing environment and user interaction, and (iii) the need to trade off between a variety of different criteria measuring the relative fitness of a particular schedule. BBN has used genetic algorithms to solve a variety of real-world scheduling problems, including applications in areas such as field service scheduling, job shop scheduling, transportation scheduling, and laboratory experiment scheduling. With the recent acquisition of BBN by GTE, we expect that our scheduling technology will soon be deployed to solve hard scheduling problems in network operations management. Our genetic algorithm technology addresses the issues above and provides a domain-independent infrastructure upon which we have rapidly developed customized software solutions for various customers. Because the infrastructure is domain independent, adding network operations management to the list of domains in which our scheduling technology has been successfully applied should be straightforward.
read more
Chat with Paper
AI Agents for this Paper
Find similar papers on Google Scholar, PubMed and Arxiv
Write a critical review of this paper
Analyze citations of this paper to find unaddressed research gaps
Citations
•Dissertation
Addressing real-time control problems in complex environments using dynamic multi-objective evolutionary approaches
Jevgenijs Butans
- 01 Oct 2011
TL;DR: A framework for on-line optimisation of dynamic problems that is capable of representing problems in a quantitative way, identifying optimal solutions using multi-objective evolutionary algorithms, and automatically selecting an optimal solution among alternatives is developed.
9
•Journal Article
On Static Scheduling of Tasks in Real Time Multiprocessor Systems: An Improved GA-Based Approach
TL;DR: The PGA is introduced and experimentally evaluated against already proposed algorithms in literature and it is found that the proposed algorithm has a better average total system utilization, total system tasks visibility compared with Genetic (G) and EDF algorithms.
5
An Evolutionary Approach for the Hierarchical Scheduling of Safety- and Security-Critical Multicore Architectures
TL;DR: This research creates a hierarchical scheduling framework as a model for real-time multicore systems to integrate the scheduling for safe and secure systems and provides an efficient, automated method to use a genetic algorithm to create a feasible two-level hierarchical schedule.
4
Patent
Method and device for creating a time schedule for transmitting messages on a bus system
Thomas Fuehrer,Bernd Mueller +1 more
- 14 Mar 2002
TL;DR: A method for creating a time schedule for transmitting messages on a bus system (bus schedule), the time schedule being created by using a genetic algorithm is described in this paper, where the authors describe a method for constructing a bus schedule using a set of genetic algorithms.
4
References
•Book
Genetic algorithms in search, optimization, and machine learning
David E. Goldberg
- 01 Sep 1988
TL;DR: In this article, the authors present the computer techniques, mathematical tools, and research results that will enable both students and practitioners to apply genetic algorithms to problems in many fields, including computer programming and mathematics.
•Book
Adaptation in natural and artificial systems
John H. Holland
- 01 Jan 1975
TL;DR: Names of founding work in the area of Adaptation and modiication, which aims to mimic biological optimization, and some (Non-GA) branches of AI.
Optimization, and Machine Learning
David E. Goldberg
- 01 Jan 1989
TL;DR: This chapter considers the following quadratic function: f(x) = 1 2 xQx− bx, where Q is symmetric and positive definite and f is the gradient of f.
622