A taxonomy of uncertainty for dynamically adaptive systems

A. J. Ramírez, Adam C. Jensen, B. Cheng
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引用次数: 164

Abstract

Self-reconfiguration enables a dynamically adaptive system (DAS) to satisfy requirements even as detrimental system and environmental conditions arise. A DAS, especially one intertwined with physical elements, must increasingly reason about and cope with unpredictable events in its execution environment. Unfortunately, it is often infeasible for a human to exhaustively explore, anticipate, or resolve all possible system and environmental conditions that a DAS will encounter as it executes. While uncertainty can be difficult to define, its effects can hinder the adaptation capabilities of a DAS. The concept of uncertainty has been extensively explored by other scientific disciplines, such as economics, physics, and psychology. As such, the software engineering DAS community can benefit from leveraging, reusing, and refining such knowledge for developing a DAS. By synthesizing uncertainty concepts from other disciplines, this paper revisits the concept of uncertainty from the perspective of a DAS, proposes a taxonomy of potential sources of uncertainty at the requirements, design, and execution phases, and identifies existing techniques for mitigating specific types of uncertainty. This paper also introduces a template for describing different types of uncertainty, including fields such as source, occurrence, impact, and mitigating strategies. We use this template to describe each type of uncertainty and illustrate the uncertainty source in terms of an example DAS application from the intelligent vehicle systems (IVS) domain.
动态自适应系统的不确定性分类
自重构使动态自适应系统(DAS)即使在不利的系统和环境条件出现时也能满足需求。DAS,特别是与物理元素交织在一起的DAS,必须越来越多地对其执行环境中的不可预测事件进行推理和处理。不幸的是,对于一个人来说,详尽地探索、预测或解决DAS在执行过程中可能遇到的所有系统和环境条件通常是不可行的。虽然不确定性难以定义,但其影响可能会阻碍DAS的适应能力。其他科学学科,如经济学、物理学和心理学,对不确定性的概念进行了广泛的探讨。因此,软件工程DAS社区可以利用、重用和细化这些知识来开发DAS。通过综合其他学科的不确定性概念,本文从DAS的角度重新审视了不确定性的概念,提出了需求、设计和执行阶段的潜在不确定性来源的分类,并确定了减轻特定类型不确定性的现有技术。本文还介绍了一个用于描述不同类型不确定性的模板,包括来源、发生、影响和缓解策略等领域。我们使用此模板来描述每种类型的不确定性,并根据智能车辆系统(IVS)领域的示例DAS应用说明不确定性来源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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