Robust nuclear signal reconstruction by a novel ensemble model aggregation procedure

P. Baraldi, E. Zio, G. Gola, D. Roverso, M. Hoffmann
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引用次数: 10

Abstract

Monitoring of sensor operation is important for detecting anomalies and reconstructing the correct values of the signals measured. This can be done, for example, with the aid of auto-associative regression models. However, in practical applications, difficulties arise because of the need for handling large numbers of signals. To overcome these difficulties, ensembles of reconstruction models can be used. Each model in the ensemble handles a small group of signals and the outcomes of all models are eventually combined to provide the final outcome. In this work, three different methods for aggregating the model outcomes are investigated and a novel procedure is proposed for obtaining robust ensemble-aggregated outputs. Two applications are considered concerning the reconstruction of 920 simulated signals of the Swedish Forsmark-3 Boiling Water Reactor (BWR) and 215 signals measured at the Finnish Pressurised Water Reactor (PWR) situated in Loviisa.
基于新型集成模型聚合过程的核信号鲁棒重建
监测传感器的工作对检测异常和重建正确的测量信号值非常重要。例如,这可以借助自关联回归模型来实现。然而,在实际应用中,由于需要处理大量信号而出现困难。为了克服这些困难,可以使用重建模型的集合。集成中的每个模型处理一小组信号,所有模型的结果最终组合在一起以提供最终结果。在这项工作中,研究了三种不同的模型结果聚合方法,并提出了一种新的方法来获得鲁棒的集成聚合输出。瑞典formark -3沸水反应堆(BWR)的920个模拟信号和位于Loviisa的芬兰压水反应堆(PWR)测量的215个信号的重建,考虑了两种应用。
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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