A Multi-Input Multi-Output Considering Correlation and Hysteresis Prediction Method for Gravity Dam Displacement with Interpretative Functions
Abstract
1. Introduction
- A new factor set that considers the hysteresis effects of temperature on displacement is proposed by calculating the specific hysteresis times with the sliding match method and the cosine similarity calculation method. This factor set considers the hysteresis effects of temperature on displacements, emphasizing that the hysteresis effects of environmental factors on displacements are significant and providing a new factor set for prediction models to be investigated.
- The ReliefF is utilized to rank the importance of the features from each group of measurement points. This enables an analysis to be conducted of the impact of feature factors on the displacement of measurement points at varying locations. Thereafter, the features are entered into the prediction model by their importance, from the most significant to the least significant. The optimal factor set is obtained by comparing the prediction accuracy. It is demonstrated that feature selection can effectively identify important features in the input factor sets for different measurement points, reduce the complexity and multiple contributions of the model, improve prediction accuracy, and provide a better interpretation of the importance of the influencing factors on the displacements.
- Following consideration of the spatial correlation of measurement points, a unified set of factors suitable for displacement prediction with multiple outputs is determined. LSSVM is combined with multi-objective regression, and the PSO is used to select the hyperparameters of the model. The result is the proposal of a displacement prediction model, MIMO-PSO-LSSVM, which achieves synchronous displacement prediction at multiple measurement points. The superiority of the model performance in terms of both accuracy and efficiency is verified through an engineering case study.
2. Methodology
2.1. Factor Sets Construction Considering Hysteresis Effects
2.2. Feature Selection by the ReliefF Method
2.3. Application of Support Vector Machines for Dam Deformation Prediction
2.3.1. Single Output Least Squares Support Vector Machines
2.3.2. Multi-Output Least Squares Support Vector Machines
2.4. The Procedure of the Proposed Approach for Dam Health Monitoring
3. Case Study
3.1. Project Overview and Data Description
3.2. Comparative Analysis of Factor Sets
3.3. Screening the Main Factor Set with Feature Selection Method
3.4. Synchronous Prediction with Multiple Inputs and Multiple Outputs Model
4. Conclusions
- The specific times at which the temperature at different measurement points exhibits hysteresis effects on the displacement of gravity dams are determined through the utilization of the sliding match method and the cosine similarity calculation method. A factor set that considers the hysteresis effect of temperature on displacement is obtained, and the prediction accuracy of the PSO-LSSVM model is used as an index to compare with the other factor sets. This demonstrated the necessity to consider the hysteresis effect of the environmental factors on the displacement of gravity dams.
- Through the ReliefF feature selection method, the importance of each feature is found to be similar for the displacements at the measurement points in the same area, for instance, the influence of temperature on the dam displacement is greater in the non-overflow dam section, while the influence of hydraulic pressure on the dam displacement is greater in the overflow dam section. Furthermore, the implementation of a filtering process on the features of the factor set resulted in an enhancement of the model’s prediction accuracy, thereby highlighting the significance of feature selection in the context of predicting dam displacements.
- A MIMO synchronous prediction model, MIMO-PSO-LSSVM, that considers the potential spatial correlation between measurement points is proposed. Compared with the contrastive models, this MIMO-PSO-LSSVM model is able to take into account the potential spatial correlation between the displacement measured data, thereby improving the prediction accuracy. Furthermore, the model exhibits the advantage of being able to predict displacements at multiple measurement points simultaneously, resulting in a significant efficiency improvement over the single-output PSO-LSSVM model.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Abbreviations | The Full Designation | Abbreviations | The Full Designation |
---|---|---|---|
MLR | Multiple Linear Regression | HTT | Hydraulic-Temperature-Time |
SR | Stepwise Regression | HTAT | Hydraulic-Air temperature-Time |
RBFN | Radial Basis Function Network | HHST | Hydraulic-Hysteresis-Seasonal-Time |
RVM | Relevance Vector Machine | PCA | Principal Component Analysis |
SVM | Support Vector Machine | HTHT | Hydraulic-TemperatureHysteresis-Time |
ELM | Extreme Learning Machine | RF | Random Forest |
GRU | Gated Recurrent Unit Neural Network | MIMO | Multiple-Input Multiple-Output |
LSTM | Long and Short-Term Memory Neural Network | MCSST | Multiple Correlation-based Structural Stack Test |
LSSVM | Least Squares Support Vector Machine | BPNN | Back Propagation Neural Network |
GA | Genetic Algorithm | PSO-LSSVM | LSSVM optimized by PSO |
FOA | Fruit Fly Optimization Algorithm | MIMO-PSO-LSSVM | Multi-input Multi-output Least Squares Support Vector Machine with Particle Swarm Optimization |
WSO | White Shark Optimizer | RMSE | Root Mean Square Error |
GOA | Grasshopper Optimization Algorithm | MAE | Mean Absolute Error |
PSO | Particle Swarm Optimization Algorithm | R2 | The Coefficient of Determination |
HST | Hydraulic-Seasonal-Time |
Factor Sets | Factors |
---|---|
HST | |
HTAT | |
HTHT |
Measurement Points | Factor Sets |
---|---|
YZ15-1-YZ17-1 | |
YZ20-1-YZ22-1 | |
YZ46-1-YZ48-1 | |
DC23-1-DC23-2 | |
DC42-1-DC42-2 |
Measurement Point | Without Feature Selection | With Feature Selection | ||||
---|---|---|---|---|---|---|
R2 | MAE/(mm) | RMSE/(mm) | R2 | MAE/(mm) | RMSE/(mm) | |
YZ15-1 | 0.9816 | 0.1475 | 0.2183 | 0.9826 (0.11%) | 0.1447 (1.84%) | 0.2122 (2.78%) |
YZ16-1 | 0.9825 | 0.1723 | 0.2546 | 0.9852 (0.28%) | 0.1534 (11.01%) | 0.2348 (7.78%) |
YZ17-1 | 0.9905 | 0.1555 | 0.2423 | 0.9921 (0.17%) | 0.1421 (8.61%) | 0.2204 (9.05%) |
YZ20-1 | 0.9951 | 0.2082 | 0.3010 | 0.9961 (0.10%) | 0.1881 (9.66%) | 0.2700 (10.33%) |
YZ21-1 | 0.9953 | 0.2434 | 0.3522 | 0.9959 (0.06%) | 0.2301 (5.54%) | 0.3295 (6.44%) |
YZ22-1 | 0.9950 | 0.2544 | 0.3760 | 0.9956 (0.06%) | 0.2415 (5.10%) | 0.3519 (6.40%) |
YZ46-1 | 0.9930 | 0.2069 | 0.2687 | 0.9940 (0.10%) | 0.1861 (10.05%) | 0.2487 (7.46%) |
YZ47-1 | 0.9938 | 0.1803 | 0.2424 | 0.9950 (0.12%) | 0.1657 (8.09%) | 0.2194 (9.49%) |
YZ48-1 | 0.9936 | 0.1772 | 0.2293 | 0.9946 (0.10%) | 0.1562 (11.85%) | 0.2099 (8.45%) |
DC23-1 | 0.9901 | 0.1540 | 0.2092 | 0.9912 (0.12%) | 0.1457 (5.35%) | 0.1968 (5.95%) |
DC23-2 | 0.9597 | 0.1743 | 0.2267 | 0.9620 (0.24%) | 0.1653 (5.16%) | 0.2202 (2.87%) |
DC42-1 | 0.9982 | 0.0576 | 0.0794 | 0.9984 (0.03%) | 0.0525 (8.86%) | 0.0757 (4.65%) |
DC42-2 | 0.9823 | 0.0855 | 0.1417 | 0.9843 (0.20%) | 0.0789 (7.77%) | 0.1335 (5.79%) |
Average | 0.9885 | 0.1705 | 0.2417 | 0.99106923076923198 (0.13%) | 0.233784615384615577 (7.52%) | 0.29210769230769248 (6.97%) |
Measurement Point | Prediction Model | R2 | MAE/(mm) | RMSE/(mm) |
---|---|---|---|---|
YZ15-1 | SVM | 0.9351 (−5.39%) | 0.3027 (−56.29%) | 0.4102 (−52.71%) |
BPNN | 0.9450 (−4.29%) | 0.2889 (−54.21%) | 0.3777 (−48.64%) | |
PSO-LSSVM | 0.9826 (−0.29%) | 0.1447 (−8.59%) | 0.2122 (−8.57%) | |
MIMO-PSO-LSSVM | 0.9855 (0%) | 0.1323 (0%) | 0.1940 (0%) | |
YZ16-1 | SVM | 0.9492 (−4.15%) | 0.3120 (−57.98%) | 0.4356 (−52.50%) |
BPNN | 0.9593 (−3.05%) | 0.2833 (−53.72%) | 0.3901 (−46.96%) | |
PSO-LSSVM | 0.9852 (−0.34%) | 0.1534 (−14.51%) | 0.2348 (−11.89%) | |
MIMO-PSO-LSSVM | 0.9886 (0%) | 0.1311 (0%) | 0.2069 (0%) | |
YZ17-1 | SVM | 0.9630 (−3.15%) | 0.3481 (−64.23%) | 0.4779 (−57.27%) |
BPNN | 0.9732 (−2.07%) | 0.3136 (−60.30%) | 0.4068 (−49.80%) | |
PSO-LSSVM | 0.9921 (−0.12%) | 0.1421 (−12.41%) | 0.2204 (−7.34%) | |
MIMO-PSO-LSSVM | 0.9933 (0%) | 0.1245 (0%) | 0.2042 (0%) | |
YZ20-1 | SVM | 0.9760 (−2.11%) | 0.4597 (−62.80%) | 0.6691 (−62.64%) |
BPNN | 0.9818 (−1.51%) | 0.4320 (−60.42%) | 0.5814 (−57.00%) | |
PSO-LSSVM | 0.9961 (−0.05%) | 0.1881 (−9.08%) | 0.2700 (−7.39%) | |
MIMO-PSO-LSSVM | 0.9966 (0%) | 0.1710 (0%) | 0.2500 (0%) | |
YZ21-1 | SVM | 0.9734 (−2.38%) | 0.5535 (−62.73%) | 0.8382 (−64.30%) |
BPNN | 0.9857 (−1.11%) | 0.4730 (−56.38%) | 0.6149 (−54.17%) | |
PSO-LSSVM | 0.9959 (−0.07%) | 0.2301 (−10.35%) | 0.3295 (−9.21%) | |
MIMO-PSO-LSSVM | 0.9966 (0%) | 0.2063 (0%) | 0.2992 (0%) | |
YZ22-1 | SVM | 0.9731 (−2.39%) | 0.5630 (−63.21%) | 0.8681 (−63.32%) |
BPNN | 0.9848 (−1.18%) | 0.4784 (−56.71%) | 0.6528 (−51.23%) | |
PSO-LSSVM | 0.9956 (−0.08%) | 0.2415 (−14.23%) | 0.3519 (−9.52%) | |
MIMO-PSO-LSSVM | 0.9964 (0%) | 0.2071 (0%) | 0.3184 (0%) | |
DC23-1 | SVM | 0.9476 (−4.78%) | 0.3303 (−61.94%) | 0.4807 (−63.22%) |
BPNN | 0.9599 (−3.44%) | 0.3174 (−60.40%) | 0.4206 (−57.96%) | |
PSO-LSSVM | 0.9912 (−0.17%) | 0.1457 (−13.75%) | 0.1968 (−10.16%) | |
MIMO-PSO-LSSVM | 0.9929 (0%) | 0.1257 (0%) | 0.1768 (0%) | |
DC23-2 | SVM | 0.9326 (−4.26%) | 0.2231 (−40.21%) | 0.2933 (−35.87%) |
BPNN | 0.9365 (−3.82%) | 0.2201 (−39.39%) | 0.2847 (−33.93%) | |
PSO-LSSVM | 0.9620 (−1.07%) | 0.1653 (−19.30%) | 0.2202 (−14.59%) | |
MIMO-PSO-LSSVM | 0.9723 (0%) | 0.1334 (0%) | 0.1881 (0%) |
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Xu, B.; Yao, Y.; Wang, X.; Sun, L.; Ou, B.; Zhang, Y. A Multi-Input Multi-Output Considering Correlation and Hysteresis Prediction Method for Gravity Dam Displacement with Interpretative Functions. Appl. Sci. 2025, 15, 7096. https://doi.org/10.3390/app15137096
Xu B, Yao Y, Wang X, Sun L, Ou B, Zhang Y. A Multi-Input Multi-Output Considering Correlation and Hysteresis Prediction Method for Gravity Dam Displacement with Interpretative Functions. Applied Sciences. 2025; 15(13):7096. https://doi.org/10.3390/app15137096
Chicago/Turabian StyleXu, Bo, Yuan Yao, Xuan Wang, Linsong Sun, Bin Ou, and Yanming Zhang. 2025. "A Multi-Input Multi-Output Considering Correlation and Hysteresis Prediction Method for Gravity Dam Displacement with Interpretative Functions" Applied Sciences 15, no. 13: 7096. https://doi.org/10.3390/app15137096
APA StyleXu, B., Yao, Y., Wang, X., Sun, L., Ou, B., & Zhang, Y. (2025). A Multi-Input Multi-Output Considering Correlation and Hysteresis Prediction Method for Gravity Dam Displacement with Interpretative Functions. Applied Sciences, 15(13), 7096. https://doi.org/10.3390/app15137096