Litcius/Paper detail

A novel framework for prediction of dam deformation based on extreme learning machine and Lévy flight bat algorithm

Youliang Chen, Xiangjun Zhang, Hamed Karimian, Gang Xiao, Jinsong Huang

2021Journal of Hydroinformatics26 citationsDOIOpen Access PDF

Abstract

Abstract Dam deformation monitoring and prediction are crucial for evaluating the safety of reservoirs. There are several elements that influence dam deformation. However, the mixed effects of these elements are not always linear. Oppose to a single-kernel extreme learning machine, which suffers from poor generalization performance and instability, in this study, we proposed an improved bat algorithm for dam deformation prediction based on a hybrid-kernel extreme learning machine. To improve the learning ability of the global kernel and the generalization ability of the local kernel, we combined the global kernel function (polynomial kernel function) and local kernel function (Gaussian kernel function). Moreover, a Lévy flight bat optimization algorithm (LBA) was proposed to overcome the shortages of bat algorithms. The results showed that our model outperformed other models. This proves that our proposed algorithm and methods can be used in dam deformation monitoring and prediction in different projects and regions.

Topics & Concepts

Extreme learning machineGeneralizationKernel (algebra)Gaussian functionAlgorithmDeformation (meteorology)Deformation monitoringPolynomial kernelComputer scienceArtificial intelligenceFunction (biology)Machine learningRadial basis function kernelKernel methodSupport vector machineGaussianMathematicsArtificial neural networkGeographyMathematical analysisMeteorologyEvolutionary biologyCombinatoricsPhysicsQuantum mechanicsBiologyMachine Learning and ELMDam Engineering and SafetyExtracellular vesicles in disease