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Predicting house damage class using artificial intelligence method

conference contribution
posted on 2013-01-01, 00:00 authored by Norhaslinda (Linda) Osman-Schlegel
The unsatisfactory performance of light structures founded on expansive soils subject to seasonal movements is frequently reported since the early 1950's in Australia. Excessive movements have caused damage to numerous structures that have not been adequately designed to accommodate soil volume changes. However, the sole presence of expansive soil is not necessarily the main cause of damage. Other factors such as vegetation, climate factors, types of construction materials and geology type may also contribute. This paper presents a model which predicts the damage class by analyzing combinations of the contributing factors using artificial intelligence methods. This model can help to identify if any serious and urgent repairs are necessary and immediate actions could be initiated without delay.

History

Event

Engineering and Applied Science. Hong Kong International Conference (2nd : 2013 : Hong Kong, China)

Pagination

486 - 491

Publisher

[Conference]

Location

Hong Kong, China

Place of publication

[Hong Kong, China]

Start date

2013-12-19

End date

2013-12-21

ISBN-13

9789868741744

Language

eng

Publication classification

E1 Full written paper - refereed

Copyright notice

2013, The Authors

Title of proceedings

HKICEAS 2013 : Proceedings of the 2013 Engineering and Applied Science Hong Kong International Conference

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