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SACRE: Supporting contextual requirements' adaptation in modern self-adaptive systems in the presence of uncertainty at runtime

机译:SACRE:在运行时存在不确定性的情况下,支持在现代自适应系统中适应上下文需求

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摘要

Runtime uncertainty such as unpredictable resource unavailability, changing environmental conditions and user needs, as well as system intrusions or faults represents one of the main current challenges of self-adaptive systems. Moreover, today's systems are increasingly more complex, distributed, decentralized, etc. and therefore have to reason about and cope with more and more unpredictable events. Approaches to deal with such changing requirements in complex today's systems are still missing. This work presents SACRE (Smart Adaptation through Contextual REquirements), our approach leveraging an adaptation feedback loop to detect self-adaptive systems' contextual requirements affected by uncertainty and to integrate machine learning techniques to determine the best operationalization of context based on sensed data at runtime. SACRE is a step forward of our former approach ACon which focus had been on adapting the context in contextual requirements, as well as their basic implementation. SACRE primarily focuses on architectural decisions, addressing self-adaptive systems' engineering challenges. Furthering the work on ACon, in this paper, we perform an evaluation of the entire approach in different uncertainty scenarios in real-time in the extremely demanding domain of smart vehicles. The real-time evaluation is conducted in a simulated environment in which the smart vehicle is implemented through software components. The evaluation results provide empirical evidence about the applicability of SACRE in real and complex software system domains. (C) 2018 Elsevier Ltd. All rights reserved.
机译:运行时不确定性(例如不可预测的资源不可用,不断变化的环境条件和用户需求以及系统入侵或故障)是自适应系统当前面临的主要挑战之一。而且,当今的系统越来越复杂,分散,分散,等等,因此必须推理并应对越来越多的不可预测的事件。在当今复杂的系统中,用于解决这种不断变化的需求的方法仍然缺失。这项工作介绍了SACRE(通过上下文需求进行智能适应),我们的方法利用适应性反馈回路来检测受不确定性影响的自适应系统的上下文需求,并集成机器学习技术,以便在运行时根据感测到的数据确定上下文的最佳操作性。 SACRE是我们以前的方法ACon的一大进步,该方法一直致力于根据上下文需求及其基本实现来适应上下文。 SACRE主要关注体系结构决策,以解决自适应系统的工程挑战。在本文的进一步研究中,我们在智能汽车极为苛刻的领域中,实时评估了在不同不确定性场景下的整个方法。实时评估是在模拟环境中进行的,在该环境中,通过软件组件实现了智能车辆。评估结果提供了有关SACRE在真实和复杂软件系统领域中的适用性的经验证据。 (C)2018 Elsevier Ltd.保留所有权利。

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