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RE-STORM: Mapping the Decision-Making Problem and Non-functional Requirements Trade-Off to Partially Observable Markov Decision Processes

机译:RE-STORM:将决策问题和非功能需求折衷映射到部分可观察的马尔可夫决策过程

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Different model-based techniques have been used to model and underpin requirements management and decision-making strategies under uncertainty for self-adaptive Systems (SASs). The models specify how the partial or total fulfillment of non-functional requirements (NFRs) drive the decision-making process at runtime. There has been considerable progress in this research area. How-ever, precarious progress has been made by the use of models at runtime using machine learning to deal with uncertainty and support decision-making based on new evidence learned during execution. New techniques are needed to systematically revise the current model and the satisficement of its NFRs when empirical evidence becomes available from the monitoring infrastructure. In this paper, we frame the decision-making problem and trade-off specifications of NFRs in terms of Partially Observable Markov Decision Processes (POMDPs) models. The mathematical probabilistic framework based on the concept of POMDPs serves as a runtime model that can be updated with new learned evidence to support reasoning about partial satisficement of NFRs and their trade-o under the new changes in the environment. In doing so, we demonstrate how our novel approach RE-STORM underpins reasoning over uncertainty and dynamic changes during the system's execution.
机译:自适应系统(SAS)在不确定性下已经使用了不同的基于模型的技术来建模和支持需求管理和决策策略。这些模型指定了非功能性需求(NFR)的部分或全部实现如何在运行时驱动决策过程。在这个研究领域已经有了长足的进步。但是,通过在运行时使用模型进行机器学习来处理不确定性并支持基于执行期间学习到的新证据的决策,已经取得了不稳定的进展。当可以从监控基础结构获得经验证据时,需要新技术来系统地修改当前模型及其NFR的满足性。在本文中,我们根据部分可观察的马尔可夫决策过程(POMDPs)模型来框架化NFR的决策问题和权衡规范。基于POMDP概念的数学概率框架用作运行时模型,可以使用新获得的证据对其进行更新,以支持有关NFR及其在新环境变化下的折衷方案的部分满足的推理。通过这样做,我们证明了我们的新颖方法RE-STORM如何在系统执行期间为不确定性和动态变化的推理奠定基础。

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