DataTime: a Framework to smoothly Integrate Past, Present and Future into Models

Gauthier Lyan, J. Jézéquel, D. Gross-Amblard, B. Combemale
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引用次数: 3

Abstract

Models at runtime have been initially investigated for adaptive systems. Models are used as a reflective layer of the current state of the system to support the implementation of a feedback loop. More recently, models at runtime have also been identified as key for supporting the development of full-fledged digital twins. However, this use of models at runtime raises new challenges, such as the ability to seamlessly interact with the past, present and future states of the system. In this paper, we propose a framework called DataTime to implement models at runtime which capture the state of the system according to the dimensions of both time and space, here modeled as a directed graph where both nodes and edges bear local states (ie. values of properties of interest). DataTime provides a unifying interface to query the past, present and future (predicted) states of the system. This unifying interface provides i) an optimized structure of the time series that capture the past states of the system, possibly evolving over time, ii) the ability to get the last available value provided by the system's sensors, and iii) a continuous micro-learning over graph edges of a predictive model to make it possible to query future states, either locally or more globally, thanks to a composition law. The framework has been developed and evaluated in the context of the Intelligent Public Transportation Systems of the city of Rennes (France). This experimentation has demonstrated how DataTime can deprecate the use of heterogeneous tools for managing data from the past, the present and the future, and facilitate the development of digital twins.
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DataTime:一个将过去、现在和未来顺利集成到模型中的框架
对自适应系统的运行时模型进行了初步研究。模型被用作系统当前状态的反射层,以支持反馈回路的实现。最近,运行时模型也被认为是支持开发成熟的数字孪生的关键。然而,在运行时使用模型会带来新的挑战,例如与系统的过去、现在和未来状态无缝交互的能力。在本文中,我们提出了一个名为DataTime的框架,用于在运行时实现模型,该模型根据时间和空间的维度捕获系统的状态,这里建模为一个有向图,其中节点和边缘都具有局部状态(即。感兴趣的属性值)。DataTime提供了一个统一的接口来查询系统的过去、现在和未来(预测)状态。这个统一的界面提供了i)时间序列的优化结构,可以捕获系统过去的状态,可能随着时间的推移而演变,ii)获得系统传感器提供的最后可用值的能力,以及iii)在预测模型的图边缘上进行连续的微学习,从而可以查询未来的状态,无论是局部的还是更全局的,这要归功于组合定律。该框架是在雷恩市(法国)智能公共交通系统的背景下开发和评估的。这个实验展示了DataTime如何不赞成使用异构工具来管理来自过去、现在和未来的数据,并促进数字孪生的开发。
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