Abstract
Advances of the analytical, numerical, experimental and field-measurement approaches in wind engineering offers unprecedented volume of data that, together with rapidly evolving learning algorithms and high-performance computational hardware, provide an opportunity for the community to embrace and harness full potential of machine learning (ML). This contribution examines the state of research and practice of ML for its applications to wind engineering. In addition to ML applications to wind climate, terrain/topography, aerodynamics/aeroelasticity and structural dynamics (following traditional Alan G. Davenport Wind Loading Chain), the review also extends to cover wind damage assessment and wind-related hazard mitigation and response (considering emerging performance-based and resilience-based wind design methodologies). This state-of-the-art review suggests to what extend ML has been utilized in each of these topic areas within wind engineering and provides a comprehensive summary to improve understanding how learning algorithms work and when these schemes succeed or fail. Moreover, critical challenges and prospects of ML applications in wind engineering are identified to facilitate future research efforts.
| Original language | English |
|---|---|
| Article number | 811460 |
| Journal | Frontiers in Built Environment |
| Volume | 8 |
| DOIs | |
| State | Published - Mar 16 2022 |
Keywords
- aerodynamics and aeroelasticity
- hazard mitigation and response
- machine learning
- structural dynamics
- terrain and topography
- wind climate
- wind damage assessment
- wind engineering
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