一种基于机器学习的无线和移动系统智能维护方法

A. Chohra, F. Giandomenico, S. Porcarelli, A. Bondavalli
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引用次数: 0

摘要

为了增强无线和移动系统的可靠性,审计操作是必要的,以便定期检查数据库一致性并在数据损坏时进行恢复。因此,在整个系统生命周期中,如何调优数据库审计参数以及应用哪些操作顺序和频率成为优化性能和满足一定程度的服务质量的重要方面。这项工作的目的是提出一个基于强化Q-Learning方法的智能维护系统,该系统由给定的审计操作集和审计管理器构建,以最大限度地提高性能(可执行性和不可靠性)。为此,首先提出了一种基于确定性和随机Petri网的方法,对不同计划审计策略的可靠性属性进行建模和分析。然后,开发了一种智能(强化Q-Learning)软件代理方法,用于规划和学习,以自适应地处理高度动态变化的环境条件,得出最优维护策略。利用智能行为特征(学习性、适应性、泛化和鲁棒性)在不同的系统状态下推导出最优行为,从而实现智能维护系统,在有监督梯度反向传播学习下的前馈人工神经网络实现这种智能方法,以保证在大状态空间下也能成功。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An intelligent maintenance based on machine learning approach for wireless and mobile systems
To enhance wireless and mobile system dependability, audit operations are necessary, to periodically check the database consistency and recover in case of data corruption. Consequently, how to tune the database audit parameters and which operation order and frequency to apply becomes important aspects, to optimize performance and satisfy a certain degree of Quality of Service, over system life-cycle. The aim of this work is then to suggest an intelligent maintenance system based on reinforcement Q-Learning approach, built of a given audit operation set and an audit manager, in order to maximize the performance (performability and unreliability). For this purpose, a methodology, based on deterministic and stochastic Petri nets, to model and analyze the dependability attributes of different scheduled audit strategies is first developed. Afterwards, an intelligent (reinforcement Q-Learning) software agent approach is developed for planning and learning to derive optimal maintenance policies adaptively dealing with the highly dynamic evolution of the environmental conditions. This intelligent approach, is then implemented with feedforward artificial neural networks under the supervised gradient back-propagation learning to guarantee the success even with large state spaces, exploits intelligent behaviors traits (learning, adaptation, generalization, and robustness) to derive optimal actions in different system states in order to achieve an intelligent maintenance system.
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