A Real-Time Scheduler Using Neural Networks for Scheduling Independent and Nonpreemptable Tasks with Deadlines and Resource Requirements
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概要
- 論文の詳細を見る
This paper describes a neural network scheduler for scheduling independent and nonpreemptable tasks with deadlines and resource requirements in critical real-time applications, in which a schedule is to be obtained within a short time span. The proposed neural network scheduler is an integrate model of two Hopfield-Tank neural network models. To cope with deadlines, a heuristic policy which is modified from the earliest deadline policy is embodied into the proposed model. Computer simulations show that the proposed neural network scheduler has a promising performance, with regard to the probability of generating a feasible schedule, compared with a scheduler that executes a conventional algorithm performing the earliest deadline policy.
- 社団法人電子情報通信学会の論文
- 1993-08-25
著者
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Shiratori Norio
Faculty Of Engineering Tohoku University
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Noguchi Shoichi
Research Center For Applied Information Science Tohoku University
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Thawonmas Ruck
Research Center For Applied Information Science Tohoku University
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