糖心视频

April 22, 2025

Intelligent neural network model enhances space reactor shielding design

Neural network model diagram. Credit: Chen Qisheng
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Neural network model diagram. Credit: Chen Qisheng

Researchers from the Hefei Institutes of 糖心视频ical Science of the Chinese Academy of Sciences have developed a neural network model based on self-attention mechanisms to rapidly predict radiation shielding designs for space reactors.

The breakthrough, aimed at optimizing shielding configurations more efficiently, is published in .

Micro and small reactors are emerging as compact, safe, and low-carbon energy solutions, particularly for . However, designing effective radiation shielding for these reactors poses significant challenges due to tight spatial constraints, strict weight limits, and complex material interactions.

While traditional Monte Carlo simulations offer high accuracy, they are computationally intensive and time-consuming鈥攎aking them less ideal for quick design iterations.

To address this bottleneck, the researchers focused on space reactors and developed an intelligent model to help design radiation shielding more quickly and efficiently. This model is based on "self-attention neural network," which can learn patterns and make accurate predictions.

The model was trained using generated by SuperMC, a sophisticated simulation tool developed by the institute that calculates radiation interactions with shielding materials.

Once trained, the model can rapidly evaluate input parameters such as shielding weight and radiation dose levels to propose optimized shielding configurations. Tests showed that the model's predictions deviated less than 3% from those of conventional Monte Carlo methods, but required significantly less computation time.

This study provides an innovative approach to shielding design optimization for micro and small .

More information: Qisheng Chen et al, Prediction of radiation shielding design schemes based on adaptive neural networks, Nuclear Engineering and Design (2025).

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A self-attention neural network model enables rapid and accurate prediction of radiation shielding designs for space reactors, achieving less than 3% deviation from traditional Monte Carlo simulations while greatly reducing computation time. This approach facilitates efficient optimization of shielding configurations for micro and small reactors under strict spatial and weight constraints.

This summary was automatically generated using LLM.