The Application of a New Compromise Thresholding Method in the Safety-Monitoring of Dam Displacement

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Abstract:

How to identify and remove the noise of the dam monitoring data is an important work of dam safety-monitoring. The article makes use of a new compromise thresholding method to denoise the the dam horizontal displacement. Based on the de-noising data, the article uses the PSO-SVM to overfit and predict the dam horizontal displacement and compare the results with multiple regression.The result shows that the combination of the new compromise thresholding method and PSO-SVM has a better prediction accuracy.

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2113-2116

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July 2014

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© 2014 Trans Tech Publications Ltd. All Rights Reserved

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