智能建筑领域物联网数据集表征方法研究

Louis Closson, C. Cérin, D. Donsez, D. Trystram
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引用次数: 0

摘要

本文的长期目标是为技术智能建筑管理人员提供决策辅助支持,以潜在地减少建筑物内传感器产生的数据的排放,更一般地说,获取有关设施中产生的数据的知识。作为第一步,本文提出表征智能建筑生态系统的物联网(IoT)数据集。数据集学习模型的描述和构建在工程研究中至关重要,可以推进批判性分析,并服务于不同的研究人员群体,如架构师或数据科学家。我们检查部署在法国格勒诺布尔地区一个地点的两个数据集。我们假设这个建筑是一个自主计算系统。因此,我们处理的底层模型是IBM引入的著名的MAPE-K方法。本文主要研究了MAPE-K模型的分析组件和相邻连接器组件。这一层的内容及其组织构成了我们提出的方法论要点。因此,我们自动提供一套完整的实践和方法来传递给MAPE-K模型的计划组件。我们还提出了一种半自动的减少传感器测量次数的方法。在我们研究的背景下,我们的目标是用比现在更清醒的方法来降低制定措施的运营成本。我们还深入讨论了我们工作的主要发现。最后,我们根据我们的经验为未来的结果提供见解和开放性问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards a Methodology for the Characterization of IoT Data Sets of the Smart Building Sector
The long-term objective of the paper aims to provide decision aid support to a technical smart buildings manager to potentially reduce the emission of data produced by sensors inside a building and, more generally, to acquire knowledge on the data produced in the facility. As the first step, the paper proposes to characterize the smart-building ecosystem's Internet-of-things (IoT) data sets. The description and the construction of learning models over data sets are crucial in engineering studies to advance critical analysis and serve diverse researchers' communities, such as architects or data scientists. We examine two data sets deployed in one location in the Grenoble area in France. We assume that the building is an autonomic computing system. Thus, the underlying model we deal with is the well-known MAPE-K methodology introduced by IBM. The paper mainly addresses the analysis component and the adjacent connector component of the MAPE-K model. The content of this layer, and its organization, constitutes the methodological point we put forward. Consequently, we automatically provide a complete set of practices and methods to pass to the planning component of the MAPE-K model. We also sketch a semi-automatic way of reducing the number of measures done by sensors. In the background of our study, we aim to reduce the operational cost of making measures with a much more sober approach than the current one. We also discuss in profound the main findings of our work. Finally, we provide insights and open questions for future outcomes based on our experience.
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