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云南省教育厅基础设施智能运维科技创新团队

Deep reinforcement learning-based sampling method for structuralreliability assessment

发表于 2023-12-01
Reward FunctionBenchmark ProblemAlphaGoNumerical ExamplesDRLStructural Reliability AssessmentDeep Reinforcement LearningSampling MethodLimit State SurfaceExperimental PointsSurrogate ModelSampling SpaceDNNDeep Neural NetworkOptimization

Abstract: Surrogate model methods are widely used in structural reliability assessment, but conventional sampling methods require a large number of experimental points to construct a surrogate model. Inspired by the learning process of the AlphaGo, which is essentially optimization of sampling, we proposed a deep reinforcement learning (DRL)-based sampling method for structural reliability assessment. First, the sampling space and the existing samples are transformed into an array that is treate

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期刊Reliability Engineering & System Safety

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云南省教育厅基础设施智能运维科技创新团队

Intelligent Infrastructure Operation and Maintenance Technology Innovation Team of the Yunnan Provincial Department of Education

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昆明理工大学 昆明理工大学建筑工程学院