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Deep learning to replace, improve, or aid CFD analysis in built environment applications: A review

Giovanni Calzolari, Wei Liu

2021Building and Environment275 citationsDOIOpen Access PDF

Abstract

Fast and accurate airflow simulations in the built environment are critical to provide acceptable thermal comfort and air quality to the occupants. Computational Fluid Dynamics (CFD) offers detailed analysis on airflow motion, heat transfer, and contaminant transport in indoor environment, as well as wind flow and pollution dispersion around buildings in urban environments. However, CFD still faces many challenges mainly in terms of computational expensiveness and accuracy. With the increasing availability of large amount of data, data driven models are starting to be investigated to either replace, improve, or aid CFD simulations. More specifically, the abilities of deep learning and Artificial Neural Networks (ANN) as universal non-linear approximator, handling of high dimensionality fields, and computational inexpensiveness are very appealing. In built environment research, deep learning applications to airflow simulations shows the ANN as surrogate, replacement for expensive CFD analysis. Surrogate modeling enables fast or even real-time predictions, but usually at a cost of a degraded accuracy. The objective of this work is to critically review deep learning interactions with fluid mechanics simulations in general, to propose and inform about different techniques other than surrogate modeling for built environment applications. The literature review shows that ANNs can enhance the turbulence model in various way for coupled CFD simulations of higher accuracy, improve the efficiency of Proper Orthogonal Decomposition (POD) methods, leverage crucial physical properties and information with physics informed deep learning modeling, and even unlock new advanced methods for flow analysis such as super-resolution techniques. These promising methods are largely yet to be explored in the built environment scene. Unavoidably, deep learning models also presents challenges such as the availability of consistent large flow databases, the extrapolation task problem, and over-fitting, etc.

Topics & Concepts

Computational fluid dynamicsComputer scienceAirflowLeverage (statistics)Artificial intelligenceDeep learningArtificial neural networkCurse of dimensionalityMachine learningSimulationMechanical engineeringEngineeringAerospace engineeringWind and Air Flow StudiesAerodynamics and Acoustics in Jet FlowsFluid Dynamics and Turbulent Flows
Deep learning to replace, improve, or aid CFD analysis in built environment applications: A review | Litcius