Machine-Learning Analysis of Moisture Carryover in Boiling Water Reactors

被引:3
作者
Wang, Haoyu [1 ]
Longman, Andrew [2 ,3 ]
Gruenwald, J. Thomas [2 ,3 ]
Tusar, James [4 ]
Vilim, Richard [1 ]
机构
[1] Argonne Natl Lab, Nucl Sci & Engn Div, 9700 S Cass Ave, Lemont, IL 60439 USA
[2] Purdue Univ, Dept Phys & Astron, 525 Northwestern Ave, W Lafayette, IN 47907 USA
[3] Blue Wave AI Labs, 233 Goldenrain Dr,Suite 304, Celebration, FL 34747 USA
[4] Exelon Generat, Nucl Fuels, 200 Exelon Way, Kennett Sq, PA 19348 USA
关键词
Boiling water reactor; moisture carryover; data analytics; machine learning; neural network;
D O I
10.1080/00295450.2019.1583957
中图分类号
TL [原子能技术]; O571 [原子核物理学];
学科分类号
0827 ; 082701 ;
摘要
Moisture carryover (MCO) is modeled in the General Electric Type-4 boiling water reactor (BWR) using machine-learning methods and data from operating plants. Understanding MCO and the conditions that give rise to an elevated value is important since excessive MCO can damage critical turbine components, can result in elevated dose levels to on-site personnel, and can interfere with late-cycle power management. The analysis of MCO takes into account simplifying reactor symmetries and important geometric dependencies. The plant data are taken from several reactors and were collected over multiple years and multiple fuel cycles. A brief description of the origin of MCO in U.S. BWR plants is given. A machine-learning model is constructed from the data using applicable algorithms and data-reduction techniques. Matching model complexity with available data is one of the more challenging machine-learning tasks. Too many features and too little data will lead to overfitting. The data for each fuel cycle included over 6876 original features, 9 for each fuel bundle. Two approaches are used to reduce the data set into a manageable number of features. The first was an engineering analysis that resulted in the selection of steam quality Q and steam liquid phase velocity V-L as the main features driving MCO. Using a Q and a V-L for each fuel bundle gives 1528 Q and a V-L feature describing the reactor behavior. An analysis of different functional forms of these two variables led to the actual inputs to the neural network model. The second approach involved the use of statistical techniques such as Pearson's correlation and k-means analysis. The identified groupings of bundles behaved similarly. Treating each grouping as a single feature further reduced the input variable set to a manageable number A model selection criterion is proposed, and results are presented along with a discussion of related issues.
引用
收藏
页码:1003 / 1020
页数:18
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