Harilal Sankar V, Duffy Matilda I, Brayfindley Eva, Levitskaia Tatiana G, Moore Elisabeth, Lumetta Gregg J, Seiner Brienne N, Ahmed Towfiq
Pacific Northwest National Laboratory, Richland, Washington 99352, United States.
Paul G Allen School of Computer Science, University of Washington, Seattle, Washington 98105, United States.
ACS Omega. 2024 Dec 10;9(51):50357-50366. doi: 10.1021/acsomega.4c06886. eCollection 2024 Dec 24.
Plutonium uranium reduction extraction (PUREX) is a liquid-liquid extraction process used to recover plutonium (Pu) and uranium (U) from irradiated uranium fuel for various nuclear-related applications. Despite extensive efforts, quantitative prediction of liquid-liquid extraction parameters, i.e., distribution ratios and separation factors, of the process remains challenging. Existing thermodynamic models are difficult to develop and often have limited utility due to the complexity of the aqueous feed. Nitric acid is a critical component of the PUREX system, both as a driving force for dissolving irradiated fuels in preprocessing stages, as well as being efficiently extracted by tributyl phosphate (TBP). Models to understand nitric acid's distribution behavior is therefore a prerequisite to predict actinide extraction. In this work, we compiled a wealth of solvent extraction literature data and built machine learning (ML) models capable of predicting the organic phase nitric acid equilibrium concentration from initial acid and TBP concentrations across a variety of diluents. Our results demonstrate that ML is highly capable of predicting nitric acid extraction behavior in PUREX systems, and the resultant ML-aided response surfaces demonstrate promising progress as an aid for optimizing the design of experiments for future work with the PUREX process.
钚铀还原萃取(PUREX)是一种液-液萃取工艺,用于从辐照铀燃料中回收钚(Pu)和铀(U),以用于各种与核相关的应用。尽管付出了巨大努力,但对该工艺的液-液萃取参数(即分配比和分离因子)进行定量预测仍然具有挑战性。由于水相进料的复杂性,现有的热力学模型难以开发且实用性往往有限。硝酸是PUREX系统的关键成分,既是预处理阶段溶解辐照燃料的驱动力,又能被磷酸三丁酯(TBP)有效萃取。因此,了解硝酸分配行为的模型是预测锕系元素萃取的先决条件。在这项工作中,我们收集了大量溶剂萃取文献数据,并建立了机器学习(ML)模型,该模型能够根据各种稀释剂中的初始酸浓度和TBP浓度预测有机相硝酸平衡浓度。我们的结果表明,ML能够高度准确地预测PUREX系统中的硝酸萃取行为,由此产生的ML辅助响应面为优化未来PUREX工艺实验设计提供了有前景的进展。