Environmental Modeling for Radiation Safety

Krajewsk Paweł, Krajewska Grażyna
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Abstract

The newly launched IAEA project MEREIA (MEthods for Radiological and Environmental Impact Assessment; 2021- 2025), MEREIA continues some activities of previous IAEA exercises in the field of radioecological modelling and focuses on areas where the probabilistic approach determines the predictive capability of environmental models. The program offered the opportunity to set up well-designed and verified scenarios to collect and compare exposures predicted by particular models based on this scenario and then perform a validation study of contributing models. It consists of the comparison of model prediction with observed data or in the case where there is a lack of measurement data to perform a comparison within model prognoses. The previous international works have brought significant improvement in environmental modeling in terms of better understanding and mathematical description of complex physical and chemical phenomena that occur in various environmental media and also have promoted new areas for experimental investigations. The new experimental results yielded updated handbooks of a large number of environmental parameters for less-known elements. Moreover, the principal objective of the activities in environmental modelling was an integrated risk assessment of the reference group of population and biota associated with radionuclides releases from various kinds of nuclear facilities as from different types and power nuclear reactors, radioactive waste disposal and more complex nuclear research facility. This reflects recent international recommendations to extend protection against radiation hazards of humans to wildlife flora and fauna. However, the statistics supported knowledge on some essential environmental parameters still remain small. Therefore, one could be aware of some limitations of the probabilistic approach that required advanced methods of probabilistic prognosis Monte Carlo.
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辐射安全的环境建模
原子能机构新启动的项目MEREIA(辐射和环境影响评估方法;2021-2025年),继续了原子能机构以前在辐射生态建模领域的一些活动,并重点关注概率方法决定环境模型预测能力的领域。该计划提供了建立精心设计和验证的情景的机会,以收集和比较基于该情景的特定模型预测的暴露,然后对有贡献的模型进行验证研究。它包括将模型预测与观测数据进行比较,或者在缺乏测量数据的情况下在模型预测中进行比较。先前的国际工作在更好地理解和数学描述各种环境介质中发生的复杂物理和化学现象方面,为环境建模带来了重大改进,也促进了实验研究的新领域。新的实验结果为鲜为人知的元素提供了大量环境参数的更新手册。此外,环境建模活动的主要目标是对与不同类型和动力核反应堆、放射性废物处理和更复杂的核研究设施的各种核设施释放的放射性核素有关的人口和生物群参考群体进行综合风险评估。这反映了最近的国际建议,即将对人类辐射危害的保护范围扩大到野生动植物群。然而,统计数字支持的关于一些基本环境参数的知识仍然很少。因此,人们可以意识到概率方法的一些局限性,这需要先进的概率预测方法蒙特卡罗。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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