Dam state prediction method and system based on data assimilation

A technology of data assimilation and forecasting method, which is applied in the fields of electric digital data processing, special data processing application, climate change adaptation, etc., can solve the problems of matrix decomposition and solving calculation scale, long time-consuming, complicated parameter determination and calibration, etc., to achieve Effects of improving estimation accuracy, increasing computational efficiency, and improving predictive power

Active Publication Date: 2022-05-27
浙江远算科技有限公司 +1
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Problems solved by technology

[0004] Prediction methods based on statistical models, such as neural networks, regression models, and genetic algorithms, are all empirical models or empirical analysis methods, which ignore the dynamic structural mechanics evolution in the process of dam load and temperature rise and fall, and lack real physical model support and interpretation basis, it is impossible to accurately predict extreme weather and other historically unprecedented situations
[0005] The prediction method based on simulation analysis has sufficient basis for physical exp

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  • Dam state prediction method and system based on data assimilation
  • Dam state prediction method and system based on data assimilation
  • Dam state prediction method and system based on data assimilation

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[0105] A dam state prediction method based on data assimilation,

[0106] It includes the following steps:

[0107] The first step: obtain the stress and deformation displacement of the dam as the initial physical field of the dam;

[0108] The second step: According to the initial physical field in the first step, carry out the thermal-mechanical coupling calculation to obtain the virtual displacement field of the dam body at a certain time;

[0109] The third step: using the virtual displacement field of the dam body in the second step and the displacement of the actual measuring point of the dam at the same time, build a data assimilation model, which is used to perform displacement inverse analysis on the linear elastic constitutive parameters of the concrete material of the dam;

[0110] The data assimilation model is introduced into observation data to update the model, and the evolution direction of the data assimilation model is adjusted in real time to improve the es...

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Abstract

The invention discloses a dam state prediction method and system based on data assimilation, and belongs to the technical field of dam state prediction. According to an existing dam state prediction method, the calculation precision is extremely dependent on correct description of a concrete material constitutive model, generally, model parameters can only be obtained from prototype observation or twinborn experiments, and determination and calibration of the parameters are complex. According to the method, the nonlinear evolution characteristic of a concrete material along with time is fully considered, a data assimilation model is constructed by utilizing a dam body virtual displacement field and the displacement amount of an actual dam measurement point at the same moment, and displacement back analysis is performed on linear elastic constitutive parameters of the concrete material of the dam; observation data is introduced into the data assimilation model for model updating, the influence of data errors on the model is fully considered, and the evolution direction of the data assimilation model is adjusted in real time, so that the estimation precision of the data assimilation model is improved, the prediction capability of a prediction model is effectively improved, and important reference data can be provided for real-time early warning analysis of a dam.

Description

technical field [0001] The invention relates to a dam state prediction method and system based on data assimilation, and belongs to the technical field of dam state prediction. Background technique [0002] A dam is a special building including a reservoir and a hydropower station, which plays the role of water storage, flood control and power generation, and has significant social and economic benefits. However, domestic dam projects have the characteristics of many points, wide areas and large quantities. Once a serious accident such as a dam failure occurs, it will cause immeasurable damage to the downstream people and the environment. Therefore, it is necessary to ensure the construction quality of dam projects. Maintain operational safety. [0003] However, dam projects have the characteristics of large construction scale, complex design structure, long construction and service period, and diverse operating environment. The main material concrete also has dynamic physi...

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Application Information

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IPC IPC(8): G06F30/23G06F30/13G06F119/08G06F119/14
CPCG06F30/23G06F30/13G06F2119/08G06F2119/14Y02A10/40
Inventor 郑子豪林咸志闵皆昇许正吴健明赵权
Owner 浙江远算科技有限公司
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