Cormier Pierre-Antoine, Laporte-Chabasse Quentin, Guiraud Maël, Berton Julien, Barth Dominique, Penot Jean-Daniel
CESI LINEACT, Campus CESI Orléans, 1 allée du Titane, 45100 Orléans, France.
CESI LINEACT, Campus CESI Nanterre, 93 boulevard de la Seine, BP602, 92006 Nanterre Cedex, France.
Data Brief. 2024 Sep 2;57:110889. doi: 10.1016/j.dib.2024.110889. eCollection 2024 Dec.
Improving energy efficiency in the building sector is a subject of significant interest, considering the environmental impact of buildings. Energy efficiency involves many aspects, such as occupant comfort, system monitoring and maintenance, data treatment, instrumentation… Physical modeling and calibration, or artificial intelligence, are often employed to explore these different subjects and, thus, to limit energy consumption in buildings. Even though these techniques are well-suited, they have one thing in common, i.e., the need for user cases. This is why we propose to share a part of the large volume of data collected on our modular education building. The building is located on Nanterre's CESI Engineering school campus and welcomes approximately 80 students daily. A network of more than 150 sensors and actuators allows monitoring of the physical behavior of the entire building, preserving optimal comfort and energy consumption. The dataset includes the indoor physical parameters and the operating conditions of each system to describe the physical behavior of the building during a year.
考虑到建筑物对环境的影响,提高建筑部门的能源效率是一个备受关注的课题。能源效率涉及多个方面,如居住者舒适度、系统监测与维护、数据处理、仪器仪表……物理建模与校准或人工智能常常被用于探索这些不同的课题,从而限制建筑物的能源消耗。尽管这些技术很适用,但它们有一个共同点,即需要用户案例。这就是为什么我们提议分享在我们的模块化教育建筑上收集的大量数据的一部分。该建筑位于楠泰尔的CESI工程学校校园内,每天接待约80名学生。一个由150多个传感器和执行器组成的网络可以监测整座建筑的物理行为,保持最佳舒适度和能源消耗。该数据集包括室内物理参数和每个系统的运行条件,以描述该建筑在一年中的物理行为。