Predicting the weather: New meteorology estimation method aids building efficiency
by Osaka Metropolitan UniversityThis article has been reviewed according to Science X's editorial process and policies. Editors have highlighted the following attributes while ensuring the content's credibility:
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Due to the growing reality of global warming and climate change, there is increasing uncertainty around meteorological conditions used in energy assessments of buildings. Existing methods for generating meteorological data do not adequately handle the interdependence of meteorological elements, such as solar radiation, air temperature, and absolute humidity, which are important for calculating energy usage and efficiency.
To address this challenge, a research team at Osaka Metropolitan University's Graduate School of Human Life and Ecology—comprising Associate Professor Jihui Yuan, Professor Emeritus Kazuo Emura, Dr. Zhichao Jiao, and Associate Professor Craig Farnham—developed an innovative evaluation method. The findings were published in Scientific Reports.
The method utilizes a statistical model to represent the interdependence of multiple factors, facilitating the generation of probabilistic meteorological data.
The researchers modeled the temperature, solar radiation, and humidity at noon each day, and then gradually expanded this to 24 hours and 365 days to generate a year's worth of meteorological data. The most notable aspect of this method is that it takes into account the interdependence of meteorological variables and improves the accuracy of building energy simulations.
Their generated data was almost identical to the original data set, proving the method's accuracy.
"We hope this method will lead to the promotion of energy-efficient building design that can respond to various weather conditions," stated Professor Yuan.
More information: Zhichao Jiao et al, Multivariate stochastic generation of meteorological data for building simulation through interdependent meteorological processes, Scientific Reports (2024). DOI: 10.1038/s41598-024-75498-8
Journal information: Scientific Reports
Provided by Osaka Metropolitan University