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Volume 36 Issue 2
Feb.  2025
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Dai Jianyong, Meng Lingcong, Zou Shuliang. Study on Collaborative Optimization Control of Ventilation and Radon Reduction System Based on Multi-Agent Technology[J]. Nuclear Power Engineering, 2015, 36(2): 113-115. doi: 10.13832/j.jnpe.2015.02.0113
Citation: Dai Jianyong, Meng Lingcong, Zou Shuliang. Study on Collaborative Optimization Control of Ventilation and Radon Reduction System Based on Multi-Agent Technology[J]. Nuclear Power Engineering, 2015, 36(2): 113-115. doi: 10.13832/j.jnpe.2015.02.0113

Study on Collaborative Optimization Control of Ventilation and Radon Reduction System Based on Multi-Agent Technology

doi: 10.13832/j.jnpe.2015.02.0113
  • Received Date: 2015-01-15
  • Rev Recd Date: 2015-03-10
  • Available Online: 2025-02-15
  • According to the radioactive safety features such as radon and its progeny, combined with the theory of ventilation system, structure of multi-agent system for ventilation and radon reduction system is constructed with the application of multi agent technology. The function attribute of the key agent and the connection between the nodes in the multi-agent system are analyzed to establish the distributed autonomous logic structure and negotiation mechanism of multi agent system of ventilation and radon reduction system, and thus to implement the coordination optimization control of the multi-agent system. The example analysis shows that the system structure of the multi-agent system of ventilation and reducing radon system and its collaborative mechanism can improve and optimize the radioactive pollutants control, which provides a theoretical basis and important application prospect.

     

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