基于深度学习的自适应系统大适应空间有效约简

IF 2.2 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Danny Weyns, Omid Gheibi, Federico Quin, Jeroen Van Der Donckt
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引用次数: 0

摘要

今天,许多软件系统面临着不确定的操作条件,例如资源可用性的突然变化或意外的用户行为。如果没有适当的缓解,这些不确定性可能危及系统目标。自我适应是应对此类不确定性的常用方法。当系统目标可能受到损害时,自适应系统必须通过分析可能的适应选项,即适应空间,选择最佳的适应选项进行重新配置。然而,使用严格的方法分析大型适应空间既耗费资源又耗时,甚至是不可行的。解决这个问题的一种方法是使用在线机器学习来减少适应空间。然而,现有的方法需要领域专业知识来执行特征工程来定义学习者,并支持仅针对特定目标的在线适应空间缩减。为了解决这些限制,我们提出了“适应空间缩减+深度学习”(简称dlaser +)。DLASeR+为在线适应空间缩减提供了一个可扩展的学习框架,不需要特征工程,同时支持三种常见的适应目标:阈值、优化和设定点目标。我们在两个物联网应用实例中对DLASeR+进行了评估,并对不同的适应目标组合增加了适应空间的大小。我们将DLASeR+与应用详尽分析的基线和依赖学习的两种最先进的适应空间缩小方法进行了比较。结果表明,与穷举分析方法相比,DLASeR+对实现适应目标的影响可以忽略不计,并且除了最先进的方法之外,还支持三种常见的适应目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Learning for Effective and Efficient Reduction of Large Adaptation Spaces in Self-adaptive Systems

Many software systems today face uncertain operating conditions, such as sudden changes in the availability of resources or unexpected user behavior. Without proper mitigation these uncertainties can jeopardize the system goals. Self-adaptation is a common approach to tackle such uncertainties. When the system goals may be compromised, the self-adaptive system has to select the best adaptation option to reconfigure by analyzing the possible adaptation options, i.e., the adaptation space. Yet, analyzing large adaptation spaces using rigorous methods can be resource- and time-consuming, or even be infeasible. One approach to tackle this problem is by using online machine learning to reduce adaptation spaces. However, existing approaches require domain expertise to perform feature engineering to define the learner and support online adaptation space reduction only for specific goals. To tackle these limitations, we present “Deep Learning for Adaptation Space Reduction Plus”—DLASeR+ for short. DLASeR+ offers an extendable learning framework for online adaptation space reduction that does not require feature engineering, while supporting three common types of adaptation goals: threshold, optimization, and set-point goals. We evaluate DLASeR+ on two instances of an Internet-of-Things application with increasing sizes of adaptation spaces for different combinations of adaptation goals. We compare DLASeR+ with a baseline that applies exhaustive analysis and two state-of-the-art approaches for adaptation space reduction that rely on learning. Results show that DLASeR+ is effective with a negligible effect on the realization of the adaptation goals compared to an exhaustive analysis approach and supports three common types of adaptation goals beyond the state-of-the-art approaches.

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来源期刊
ACM Transactions on Autonomous and Adaptive Systems
ACM Transactions on Autonomous and Adaptive Systems 工程技术-计算机:理论方法
CiteScore
4.80
自引率
7.40%
发文量
9
审稿时长
>12 weeks
期刊介绍: TAAS addresses research on autonomous and adaptive systems being undertaken by an increasingly interdisciplinary research community -- and provides a common platform under which this work can be published and disseminated. TAAS encourages contributions aimed at supporting the understanding, development, and control of such systems and of their behaviors. TAAS addresses research on autonomous and adaptive systems being undertaken by an increasingly interdisciplinary research community - and provides a common platform under which this work can be published and disseminated. TAAS encourages contributions aimed at supporting the understanding, development, and control of such systems and of their behaviors. Contributions are expected to be based on sound and innovative theoretical models, algorithms, engineering and programming techniques, infrastructures and systems, or technological and application experiences.
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