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Underwater Data-Driven Positioning Estimation Using Local Spatiotemporal Nonlinear Correlation
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作者 chengming luo Luxue Wang +2 位作者 Xudong Yang Gaifang Xin Biao Wang 《IEEE/CAA Journal of Automatica Sinica》 SCIE EI CSCD 2023年第8期1775-1777,共3页
Dear Editor,A global and local canonical correlation analysis(GLCCA)based on data-driven is presented for underwater positioning.Underwater positioning technology can help the underwater targets move predetermined des... Dear Editor,A global and local canonical correlation analysis(GLCCA)based on data-driven is presented for underwater positioning.Underwater positioning technology can help the underwater targets move predetermined destinations for specific tasks[1].Since using different sensor,underwater positioning can be divided into three types:inertial navigation,hydroacoustic positioning and geophysical navigation. 展开更多
关键词 UNDERWATER Nonlinear CANONICAL
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Groundwater contaminant source identification considering unknown boundary condition based on an automated machine learning surrogate
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作者 Yaning Xu Wenxi Lu +3 位作者 Zidong Pan chengming luo Yukun Bai Shuwei Qiu 《Geoscience Frontiers》 SCIE CAS CSCD 2024年第1期402-416,共15页
Groundwater contamination source identification(GCSI)is a prerequisite for contamination risk evaluation and efficient groundwater contamination remediation programs.The boundary condition generally is set as known va... Groundwater contamination source identification(GCSI)is a prerequisite for contamination risk evaluation and efficient groundwater contamination remediation programs.The boundary condition generally is set as known variables in previous GCSI studies.However,in many practical cases,the boundary condition is complicated and cannot be estimated accurately in advance.Setting the boundary condition as known variables may seriously deviate from the actual situation and lead to distorted identification results.And the results of GCSI are affected by multiple factors,including contaminant source information,model parameters,boundary condition,etc.Therefore,if the boundary condition is not estimated accurately,other factors will also be estimated inaccurately.This study focuses on the unknown boundary condition and proposed to identify three types of unknown variables(contaminant source information,model parameters and boundary condition)innovatively.When simulation-optimization(S-O)method is applied to GCSI,the huge computational load is usually reduced by building surrogate models.However,when building surrogate models,the researchers need to select the models and optimize the hyperparameters to make the model powerful,which can be a lengthy process.The automated machine learning(AutoML)method was used to build surrogate model,which automates the model selection and hyperparameter optimization in machine learning engineering,largely reducing human operations and saving time.The accuracy of AutoML surrogate model is compared with the surrogate model used in eXtreme Gradient Boosting method(XGBoost),random forest method(RF),extra trees regressor method(ETR)and elasticnet method(EN)respectively,which are automatically selected in AutoML engineering.The results show that the surrogate model constructed by AutoML method has the best accuracy compared with the other four methods.This study provides reliable and strong support for GCSI. 展开更多
关键词 Groundwater contamination source Boundary condition Automated machine learning Surrogate model
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