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Identification of rail-sleeper-ballast system through time-domain Markov chain Monte Carlo-based Bayesian approach

机译:基于时域马尔可夫链基于蒙特卡洛的贝叶斯方法识别轨枕系统

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This paper reports the step-by-step procedures for identification of the rail-sleeper-ballast system with the use of the measured vibration data of an in situ sleeper on an existing ballasted track. The rail-sleeper-ballast modeling method, which has been used for modal-based model updating, was used to fit the measured time-domain vibration from the field test. However, the match between the measured and model-predicted responses was not good at some measured locations. Based on the observed discrepancy, the rail-sleeper-ballast modeling method was modified in this paper for suitable use in time-domain model updating. Based on the field test data and the modified modeling method, this study puts forward the time-domain Markov chain Monte Carlo (MCMC)-based Bayesian model updating and model class selection method for identification of the rail-sleeper-ballast system. MCMC was used to ensure that the proposed method can be applied even when the problem is unidentifiable. The proposed method identified the distribution of railway ballast stiffness under low-amplitude vibration and the "equivalent" rail stiffness and mass using impact hammer test data. The model updating results confirmed that the ballast stiffness under the sleeper was uniform, which implies that there was no ballast damage under the tested sleeper. Based on the proposed method, a comprehensive study was carried out to quantify the posterior uncertainties of the identified ballast stiffness when different amounts of measured information were used for model updating. The results showed that the uncertainty of the identified ballast stiffness was at an acceptable level even when using the measured data from only one sensor. (C) 2017 Elsevier Ltd. All rights reserved.
机译:本文报告了使用现有an道上原位轨枕测得的振动数据来识别铁路轨枕-道ast系统的分步过程。轨道-轨道-镇流器建模方法已用于基于模态的模型更新,用于拟合现场测试中测得的时域振动。但是,在某些测量位置,测量的响应与模型预测的响应之间的匹配不好。基于观察到的差异,本文修改了轨枕的道ball建模方法,以适用于时域模型更新。基于现场测试数据和改进的建模方法,提出了基于时域马尔可夫链蒙特卡洛(MCMC)的贝叶斯模型更新和模型类别选择方法来识别轨枕系统。 MCMC用于确保即使无法确定问题也可以应用所提出的方法。所提出的方法使用冲击锤测试数据确定了在低振幅振动下的铁路道ast刚度的分布以及“等效”的铁路刚度和质量。模型更新结果证实,枕木下的压载物刚度是均匀的,这表明在测试枕木下没有压载物损坏。基于所提出的方法,进行了一项综合研究,以量化当使用不同量的测量信息进行模型更新时所识别出的压载刚度的后验不确定性。结果表明,即使仅使用来自一个传感器的测量数据,所识别出的压载刚度的不确定度也处于可接受的水平。 (C)2017 Elsevier Ltd.保留所有权利。

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