Prediction of the indoor climate in cultural heritage buildings through machine learning: first results from two field tests

Christian Boesgaard, Birgit Vinther Hansen, Ulla Bøgvad Kejser, Søren Mollerup, Morten Ryhl-Svendsen, Noah Torp-Smith

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningpeer review

Abstract

Control of temperature and relative humidity in storage areas and exhibitions is crucial for long-term preservation of cultural heritage objects. This paper explores the possibilities for developing a proactive system, based on a machine-learning model (XGBoost), for predicting the occurrence of unwanted indoor environmental conditions: either a too high or a too low relative humidity, within the forthcoming 24 h. The features used in the model were hourly indoor and outdoor climate recordings, and it was applied to two indoor heritage environments; a storage facility and a church building. The test accuracy (f1-score) of the model was good (0.93 for high RH; 0.93 for low RH) when applied to the storage building, but only 0.78; 0.62 (high RH; low RH) for the church building test. Challenges encountered include difficulties in obtaining good historical climate data sets for training and testing the model, and the dependency of external IT systems, which, if they fail, inactivates the model without a warning. Several issues call for more research: A desirable improvement of the model would be predictions for periods longer than 24 h ahead, still maintaining a high test accuracy. Further perspectives of using machine learning for indoor environmental forecasting could be for indoor air pollution, or energy consumption due to climate control.
OriginalsprogEngelsk
Artikelnummer176
TidsskriftHeritage Science
Vol/bind10
Antal sider12
ISSN2050-7445
DOI
StatusUdgivet - 2022

Emneord

  • Relative humidity
  • Indoor environment
  • Prediction
  • Climate forecast
  • Environmental control
  • Storage
  • Church building
  • Time-series analysis

Kunstnerisk udviklingsvirksomhed (KUV)

  • Nej

Citationsformater