Litcius/Paper detail

Dam Settlement Prediction Based on Random Error Extraction and Multi-Input LSTM Network

Yaming Xu, Pai Pan, Cheng Xing

2022Journal of Surveying Engineering10 citationsDOI

Abstract

The prediction of dam settlement data plays an important role in analyzing whether the dam is in a safe operation state. But in the field of surveying engineering, the original data measured by instruments will inevitably have random and unpredictable random errors, and the settlement of dams usually has a strong correlation with environmental parameters. In this study, the influence of random error and environmental parameters on dam settlement prediction is discussed, and a prediction model based on multi-input long short-term memory (LSTM) network and random error extraction is proposed. Through the settlement data of a concrete face rockfill dam, the analysis shows that removing random errors can significantly improve the short-term prediction performance and considering environmental parameters can significantly improve the long-term prediction performance. In addition, through comparison and generalization experiments, this method not only has higher prediction accuracy, but also can be applied to other surveying and mapping engineering fields.

Topics & Concepts

Settlement (finance)Computer scienceGeneralizationTerm (time)Extraction (chemistry)Mean squared prediction errorRandom fieldField (mathematics)Long short term memoryPredictive modellingRandom forestData miningGeotechnical engineeringArtificial neural networkArtificial intelligenceMachine learningStatisticsEngineeringMathematicsRecurrent neural networkWorld Wide WebPaymentQuantum mechanicsPure mathematicsPhysicsChemistryMathematical analysisChromatographyDam Engineering and SafetyLandslides and related hazardsHydrology and Sediment Transport Processes