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SSA optimized back propagation neural network model for dam displacement monitoring based on long-term temperature data.

Authors :
Yu, Xin
Li, Junjie
Kang, Fei
Source :
European Journal of Environmental & Civil Engineering. Mar2023, Vol. 27 Issue 4, p1617-1643. 27p.
Publication Year :
2023

Abstract

Featured with the harmonic sinusoidal function to reflect temperature effects, the hydrostatic-season-time (HST) model is often used to monitor the concrete gravity dam health, but it does not take account of the effects of environment temperatures in real-term and has flaws especially when applied in conditions of significant temperature variations. A model of Sparrow Search Algorithm optimized error Back Propagation neural network (SSA-BP) based on the hydrostatic-temperature-time (HTT) model is proposed in this paper for predicting the concrete gravity dam displacement using the long-term environment temperature variable sets to reflect temperature effects. Successive Projections Algorithm (SPA) is used for the first time for feature selection on long-term temperature variables to further optimize the model (as SPA-SSA-BP). Through a case study with the practical observed data from a reality high concrete gravity dam, the effectiveness of the new model is verified, suggesting that HTT-based SSA-BP models have better performance than HST with the best result obtained when using the 2-year long variable sets. The SSA-BP model has much lower error in predicting the concrete dam displacement than Multiple Linear Regression (MLR). The arithmetic speed and prediction accuracy of the SPA-SSA-BP model is optimized as it can minimize the collinearity among feature variables in the long-term HTT variable sets, bring down the input variable dimension close to the level of HST, and diminish the redundant data information. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
19648189
Volume :
27
Issue :
4
Database :
Academic Search Index
Journal :
European Journal of Environmental & Civil Engineering
Publication Type :
Academic Journal
Accession number :
162940185
Full Text :
https://doi.org/10.1080/19648189.2022.2090445