Reinforced Autoclaved Aerated Concrete (RAAC) crack program
This executable program identifies cracks in RAAC survey images.
Reinforced Autoclaved Aerated Concrete (RAAC) panels have been extensively used in the UK since the 1960s as structural roofs, floors and walls. The lack of a longitudinal, objective, consistent defect data capture process has led to inaccurate, invalid and incomplete RAAC data, which limits the ability to survey RAAC within buildings and monitor performance. Therefore, an accurate, complete and valid digital data capture process is needed to facilitate better RAAC performance and defect monitoring. This project focused on the development of an Artificial Intelligence (AI)-driven RAAC crack defect capture tool for improving the quality of RAAC survey data. RAAC crack defect image data was collected, curated and trained. A deep learning approach was employed to train RAAC surveyed defects (cracks) images from two hospitals. This approach mitigated unavoidable occlusions/obstructions and unintended ‘foreign’ objects and textures. An automatic RAAC crack identification tool has been developed to be integrated into RAAC survey processes via an executable code. The executable code categorises RAAC survey images into ‘crack’ or ‘non-crack’ and can provide longitudinal graphical evidence of changes in the RAAC over time.
Funding
ENT10181/CV
History
School
- Architecture, Building and Civil Engineering