4.5 Article

A new genetic programming model for predicting settlement of shallow foundations

Journal

CANADIAN GEOTECHNICAL JOURNAL
Volume 44, Issue 12, Pages 1462-1473

Publisher

CANADIAN SCIENCE PUBLISHING
DOI: 10.1139/T07-063

Keywords

geotechnical models; foundation settlement; granular soils; evolutionary computation; genetic programming

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In this paper, a new genetic programming (GP) approach for predicting settlement of shallow foundations is presented. The GP model is developed and verified using a large database of standard penetration test (SPT) based case histories that involve measured settlements of shallow foundations. The results of the developed GP model are compared with those of a number of commonly used traditional methods and artificial neural network (ANN) based models. It is shown that the GP model is able to learn, with a very high accuracy, the complex relationship between foundation settlement and its contributing factors, and render this knowledge in the form of a function. The attained function can be used to generalize the learning and apply it to predict settlement of foundations for new cases not used in the development of the model. The advantages of the proposed GP model over the conventional and ANN based models are highlighted.

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