Digital Construction

AI tool detects RAAC issues

Image of RAAC for RAAC AI story
Image: LABC

Construction researchers at Loughborough University have created a digital, machine-learning tool that can analyse thousands of pictures of building interiors to detect the presence of distressed RAAC structural elements and predict how they’ll behave.

The work, led by Prof Chris Gorse MCIOB and Dr Karen Blay MCIOB, is explored in depth in the latest episode of the CIOB’s 21CC podcast.

RAAC – reinforced autoclaved aerated concrete – is a lightweight form of concrete with no coarse aggregate.

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