The Proceedings of the International Conference on Nuclear Engineering (ICONE)
Online ISSN : 2424-2934
2015.23
Session ID : ICONE23-1013
Conference information
ICONE23-1013 FORECASTING OF FLOWRATE UNDER ROLLING MOTION FLOW INSTABILITY CONDITION BASED ON ON-LINE SEQUENTIAL EXTREME LEARNING MACHINE
Hanying ChenPuzhen GaoSichao TanJiguo TangXiaofan HouHuiqiang XuXiangcheng Wu
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Abstract

The coupling of multiple thermal-hydraulic parameters can result in complex flow instability in natural circulation system under rolling motion. A real-time thermal-hydraulic condition prediction is helpful to the operation of systems in such condition. A single hidden layer feedforward neural networks algorithm named extreme learning machine (ELM) is considered as suitable method for this application because of its extremely fast training time, good accuracy and simplicity. However, traditional ELM assumes that all the training data are ready before the training process, while the training data is received sequentially in practical forecasting of flowrate. Therefore, this paper proposes a forecasting method for flowrate under rolling motion based on on-line sequential ELM (OS-ELM), which can learn the data one by one or chunk-by-chunk. The experiment results show that the OS-ELM method can achieve a better forecasting performance than basic ELM method and still keep the advantage of fast training and simplicity.

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© 2015 The Japan Society of Mechanical Engineers
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