Department of Physics, Sapienza Università di Roma, P.le A. Moro 2, 00185, Rome, Italy.
Department of Earth Sciences, Sapienza Università di Roma, P.le A. Moro 2, 00185, Rome, Italy.
Environ Sci Pollut Res Int. 2018 Oct;25(29):28787-28797. doi: 10.1007/s11356-018-2021-3. Epub 2018 Apr 27.
For the first time, the cluster analysis (k-means) has been applied on long time series of temperature and relative humidity measurements to identify the thermo-hygrometric features in a museum. Based on ASHRAE (2011) classification, 84% of time all rooms in the Napoleonic Museum in Rome (case study) were found in the class of control B. This result was obtained by analyzing all recorded data in 10 rooms of the museum as well as using the cluster aggregation. The use of objective-oriented methodology allows to achieve an acceptable knowledge of the microclimate in case of multi-room buildings, reducing computations with large amounts of collected data and time-consuming in redundant elaborations. The cluster analysis enables to reduce the number of the sensors in microclimate monitoring programs within museums, provided that the representativeness of the instrument location is known, and professional conservators have assessed that the artifacts are well preserved.
首次应用聚类分析(k-means)对长时间序列的温度和相对湿度测量数据进行分析,以确定博物馆的热湿特征。基于 ASHRAE(2011)分类,84%的时间里,罗马拿破仑博物馆(案例研究)的所有房间都被归类为 B 类控制房间。这一结果是通过分析博物馆 10 个房间的所有记录数据以及使用聚类聚合获得的。客观导向方法的使用允许在多房间建筑的情况下获得对微气候的可接受的了解,从而减少了对大量收集数据的计算和冗余处理的时间。聚类分析使得在博物馆的微气候监测计划中可以减少传感器的数量,前提是已知仪器位置的代表性,并且专业文物保护者已经评估了文物的保存状况良好。