Article ID: | iaor201110688 |
Volume: | 62 |
Issue: | 10 |
Start Page Number: | 3980 |
End Page Number: | 3986 |
Publication Date: | Nov 2011 |
Journal: | Computers and Mathematics with Applications |
Authors: | Xi Guang-yong, Yue Jian-ping, Zhou Bao-xing, Tang Pu |
Keywords: | statistics: regression, simulation |
Statistical analysis is a useful method for setting the whole string of dam displacement measures in mathematical expressions. A statistical model is usually obtained by the method of stepwise regression. The stepwise regressions based on the least square method have limitations such as the lack of stability of the set of selected variables and bias in the parameter estimates. However, the Artificial Immune Algorithm (AIA) provides good performance as an optimization algorithm. This paper proposes an immune statistical model, which merges the statistical model and the immune algorithm together, to resolve the data analysis problems of dam horizontal crest upstream–downstream displacement. The stepwise regression model and immune statistical model have been compared, showing that the immune statistical model provide a higher degree of accuracy in predicting the future behavior of the dam.