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Dynamic prediction of building subsidence deformation with data-based mechanistic self-memory model 被引量:5

Dynamic prediction of building subsidence deformation with data-based mechanistic self-memory model
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摘要 This paper describes a building subsidence deformation prediction model with the self-memorization principle.According to the non-linear specificity and monotonic growth characteristics of the time series of building subsidence deformation,a data-based mechanistic self-memory model considering randomness and dynamic features of building subsidence deformation is established based on the dynamic data retrieved method and the self-memorization equation.This model first deduces the differential equation of the building subsidence deformation system using the dynamic retrieved method,which treats the monitored time series data as particular solutions of the nonlinear dynamic system.Then,the differential equation is evolved into a difference-integral equation by the self-memory function to establish the self-memory model of dynamic system for predicting nonlinear building subsidence deformation.As the memory coefficients of the proposed model are calculated with historical data,which contain useful information for the prediction and overcome the shortcomings of the average prediction,the model can predict extreme values of a system and provide higher fitting precision and prediction accuracy than deterministic or random statistical prediction methods.The model was applied to subsidence deformation prediction of a building in Xi'an.It was shown that the model is valid and feasible in predicting building subsidence deformation with good accuracy. This paper describes a building subsidence deformation prediction model with the self-memorization principle. According to the non-linear specificity and monotonic growth characteristics of the time series of building subsidence deformation, a data-based mechanistic self-memory model considering randomness and dynamic features of building subsidence deformation is established based on the dynamic data retrieved method and the self-memorization equation. This model first deduces the differential equa- tion of the building subsidence deformation system using the dynamic retrieved method, which treats the monitored time series data as particular solutions of the nonlinear dynamic system. Then, the differential equation is evolved into a difference-integral equation by the self-memory function to establish the self-memory model of dynamic system for predicting nonlinear building subsidence deformation. As the memory coefficients of the proposed model are calculated with historical data, which contain useful information for the prediction and overcome the shortcomings of the average prediction, the model can predict extreme values of a system and provide higher fitting precision and prediction accuracy than deterministic or random statistical prediction methods. The model was applied to subsidence deformation prediction of a building in Xi'an. It was shown that the model is valid and feasible in predicting building subsidence deformation with good accuracy.
出处 《Chinese Science Bulletin》 SCIE CAS 2012年第26期3430-3435,共6页
基金 supported by the Twelfth Five National Key Technology R&D Program of China (2009BAJ28B04,2011BAK07B01,2011BAJ08B03,2011BAJ08B05) the National Natural Science Foundation of China(51108428) Beijing Postdoctoral Research Foundation (2012ZZ-17) China Postdoctoral Science Foundation (2011M500199)
关键词 建筑物沉降 记忆模型 沉降变形 动态预测 机械 基础 非线性动态系统 时间序列数据 data-based mechanistic self-memorization equation building subsidence deformation retrieved modeling dynamic prediction
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