Publication | Closed Access
System reliability analysis of slopes using multilayer perceptron and radial basis function networks
30
Citations
39
References
2017
Year
EngineeringFault ForecastingNetwork AnalysisSystem ReliabilityMultilayer PerceptronComputer ExperimentsDeterioration ModelingGeotechnical EngineeringReliability EngineeringUncertainty QuantificationDynamic ReliabilitySystems EngineeringModeling And SimulationReliability AnalysisReliabilitySoil SlopesSystem Reliability AnalysisComputer EngineeringStructural Health MonitoringReliability PredictionResponse SurfaceReliability ModellingSoil ModelingCivil Engineering
Summary This paper presents a system reliability analysis method for soil slopes on the basis of artificial neural networks with computer experiments. Two types of artificial neural networks, multilayer perceptrop (MLP) and radial basis function networks (RBFNs), are tested on the studied problems. Computer experiments are adopted to generate samples for constructing the response surfaces. On the basis of the samples, MLP and RBFN are used for establishing the response surface to approximate the limit state function, and Monte Carlo simulation is performed via the MLP and RBFN response surfaces to estimate the system failure probability of slopes. Experimental results on 3 examples show the effectiveness of the proposed methodology.
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