Affiliation:
1. ReLaCS2 Laboratory, University of Oum el Bouaghi, Algeria
Abstract
Artificial Intelligence is becoming more attractive to resolve nontrivial problems including the well known real time scheduling (RTS) problem for Embedded Systems (ES). The latter is considered as a hard multi-objective optimization problem because it must optimize at the same time three key conflictual objectives that are tasks deadlines guarantee, energy consumption reduction and reliability enhancement. In this paper, we firstly present the necessary background to well understand the problematic of RTS in the context of ES, then we present our enriched taxonomies for real time, energy and faults tolerance aware scheduling algorithms for ES. After that, we survey the most pertinent existing works of literature targeting the application of AI methods to resolve the RTS problem for ES notably Constraint Programming, Game theory, Machine learning, Fuzzy logic, Artificial Immune Systems, Cellular Automata, Evolutionary algorithms, Multi-agent Systems and Swarm Intelligence. We end this survey by a discussion putting the light on the main challenges and the future directions.
Subject
Artificial Intelligence,Human-Computer Interaction,Software
Reference85 articles.
1. Task graph pre-scheduling, using Nash equilibrium in game theory
2. Agrawal, P., & Rao, S. (2012). Energy-Aware Scheduling of Distributed Systems Using Cellular automata. 6th Annual IEEE International Systems Conference (IEEE SysCon 2012).
3. Using Game Theory for Scheduling Tasks on Multi-Core Processors for Simultaneous Optimization of Performance and Energy;I.Ahmad;IEEE International Symposium on Parallel and Distributed Processing,2008
4. Minimizing peak temperature in embedded real-time systems via thermal-aware periodic resources
5. Ant colony optimization algorithms. (n.d.). In Wikipedia. https://en.wikipedia.org/wiki/Ant_colony_optimization_algorithms