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Power density spectrum for the identification of residence time distribution signals

机译:用于识别停留时间分布信号的功率密度谱

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摘要

One of the most important applications of radioisotopes in industry is the residence time distribution (RTD) measurement. RTD can be used for optimizing the design of industrial systems and determining their malfunctions. The RTD signal may be subject to different sorts of noise. This leads to errors in the RTD calculations, and hence leads to wrong analysis in the determination of system malfunctions. This paper presents a proposed approach for RTD signal identification based on power density spectrum (PDS). The cepstral features are extracted from the signal or/and its PDS. The PDS is estimated using nonparametric, parametric, and eigen-analysis methods. The identification results are analyzed and compared for different estimation methods in order to select the best PDS estimation method for RTD signal identification. Neural networks are used for training and testing in the proposed approach. The proposed approach is tested using RTD signals obtained from the measurements carried out with radiotracer technique. The experimental results show that the proposed approach with features extracted from the PDS of the RTD signals calculated using eigen-analysis methods is the most robust and reliable in RTD signal identification.
机译:在工业中放射性同位素最重要的应用之一是停留时间分布(RTD)测量。 RTD可用于优化工业系统的设计并确定其故障。 RTD信号可能受到不同类型的噪声。这导致RTD计算中的错误,因此导致系统故障确定错误分析。本文介绍了一种基于功率密度谱(PDS)的RTD信号识别方法。从信号或/及其PD中提取临时临床特征。使用非参数,参数和特征分析方法估计PD。分析识别结果并比较不同的估计方法,以便选择用于RTD信号识别的最佳PDS估计方法。神经网络用于拟议方法的培训和测试。使用从用rountiotarcer技术进行的测量结果获得的RTD信号来测试所提出的方法。实验结果表明,采用使用特征分析方法计算的RTD信号的PDS提取的特征的方法是在RTD信号识别中最稳健且可靠。

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