自适应系统运行时的学习环境模型

Moeka Tanabe, K. Tei, Y. Fukazawa, S. Honiden
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引用次数: 11

摘要

自适应系统根据环境变化改变自身行为,以不断满足自身需求。自适应系统采用环境模型,该模型应在运行时更新,以保持与实际环境的一致性。尽管已经提出了一些在设计时基于执行轨迹来学习环境模型的技术,但这些技术非常耗时,因此不适合运行时学习。本文提出了一种利用随机梯度下降和运行期间获取的数据差异作为有效学习环境模型的技术。通过研究验证了该方法的计算时间和精度。
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Learning environment model at runtime for self-adaptive systems
Self-adaptive systems alter their behavior in response to environmental changes to continually satisfy their requirements. Self-adaptive systems employ an environment model, which should be updated during runtime to maintain consistency with the real environment. Although some techniques have been proposed to learn environment model based on execution traces at the design time, these techniques are time consuming and consequently inappropriate for runtime learning. Herein, a technique using a stochastic gradient descent and the difference in the data acquired during the runtime is proposed as an efficient learning environment model. The computational time and accuracy of our technique are verified through study.
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