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Nuclear accident source item inversion method of neural network adaptive Kalman filter

An adaptive Kalman and neural network technology, applied in the field of nuclear accident source term inversion of neural network adaptive Kalman filtering, can solve problems such as mode uncertainty, achieve faster calculation speed, improve flexibility, increase The effect of flexibility

Inactive Publication Date: 2017-12-15
NANJING UNIV OF AERONAUTICS & ASTRONAUTICS
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AI Technical Summary

Benefits of technology

This patented technology uses an artificial intelligence (AI) system called Neural Networks that has been trained by experts over time through experience or experiments with different scenarios where radioactive materials were released during reactor shutdown events. These systems use this knowledge to predict how likely it will be dangerous at some future times when they should take measures against them. They also have their own way of learning about these situations without actually measuring things like air pollution levels. By doing this, researchers aimed towards developing more efficient ways to prevent radiation exposure hazards caused by uncontrolled releases of radium compounds into our environment.

Problems solved by technology

This patented technical problem addressed during this patents text relates to accurately determining when certain events occur (such as terrorist attacks), without relying solely upon external factors such as weather patterns or physical measurements like temperature). Current approaches involve estimating uncertain event terms through various techniques including advanced analyte measurement technology and machine learning models. However these current solutions lack sufficient precision due to unknown variables affecting their effectiveness over different scenarios.

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  • Nuclear accident source item inversion method of neural network adaptive Kalman filter
  • Nuclear accident source item inversion method of neural network adaptive Kalman filter
  • Nuclear accident source item inversion method of neural network adaptive Kalman filter

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Embodiment Construction

[0026] The present invention will be further described below in conjunction with the accompanying drawings and specific embodiments.

[0027] The structural diagram of the neural network model of the present invention is as figure 2 As shown, the design flow chart is as follows figure 1 As shown, it includes the following steps, and the specific implementation is as follows:

[0028] 1) According to the unsteady Lagrangian puff model system and the Gaussian multi-puff atmospheric diffusion model, determine the number, location, distribution and other information of monitoring points during the nuclear accident, and determine the key parameters that affect the inversion of the source term of the nuclear accident; The release rate of the source item is used as the target signal of the adaptive Kalman filter module, which is the output signal of the module; the release rate of the nuclear accident source item and the observation matrix of the adaptive Kalman filter module are u...

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Abstract

The present invention provides a nuclear accident source item inversion method of neural network adaptive Kalman filter. The method comprises the following steps: establishing a nuclear accident source item inversion model based on neural network adaptive Kalman filter, and determining the input parameters and output parameters of a neural network structure; establishing an atmospheric pollutant diffusion model; and determining observation variables, system variables, an observation matrix, a state transfer matrix and a calculation flow of an adaptive Kalman filter module, and finally obtaining a neural network adaptive Kalman filter nuclear accident source item inversion model. The method selects optimal parameters of the neural network when the neural network combines the adaptive Kalman filter to rapidly screen accidents to replace a simple approximation model with self learning of an atmospheric diffusion process in different weather conditions through the neural network, an adaptive algorithm is selected to overcome the defects of larger filtering errors and filtering diffusion of a conventional Kalman filter algorithm in the nonlinear variation condition, perform real-time online inversion and provide basis for the nuclear accident consequence evaluation and emergency decision.

Description

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Claims

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Application Information

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Owner NANJING UNIV OF AERONAUTICS & ASTRONAUTICS
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