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首页> 外文期刊>Journal of Radioanalytical and Nuclear Chemistry: An International Journal Dealing with All Aspects and Applications of Nuclear Chemistry >Spectrum analysis of radiotracer residence time distribution for industrial and environmental applications
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Spectrum analysis of radiotracer residence time distribution for industrial and environmental applications

机译:工业和环境应用中放射性示踪剂停留时间分布的频谱分析

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Radiotracer signal analysis and recognition still represents challenges in industrial and environmental applications specially in residence time distribution (RTD) measurement. This paper presents a development for the RTD signal recognition method that is based on power density spectrum (PDS). In this development, the features are extracted from the signals and/or from their higherorders statistics (HOS) (Bispectrum and Trispectrum) instead of PDS. The HOS are estimated using direct, indirect and parametric estimations. The recognition results are analyzed and compared for different HOS estimation in order to select the best HOS estimation method for the purpose of RTD signal recognition. The artificial neural networks are used for training and testing of the proposed method. The proposed method is tested using RTD signals obtained from the measurements carried out using radiotracer technique. The simulation results show that the parametric estimation of the Trispectrum gives the higher recognition rate and is the most reliable for the RTD signal recognition.
机译:放射性示踪剂信号的分析和识别仍然代表着工业和环境应用中的挑战,特别是在停留时间分布(RTD)测量中。本文提出了一种基于功率密度谱(PDS)的RTD信号识别方法的发展。在此开发中,特征是从信号和/或它们的高阶统计量(HOS)(双谱和三谱)中提取的,而不是从PDS中提取的。使用直接,间接和参数估计来估计居屋。分析识别结果并针对不同的HOS估计进行比较,以选择最佳的HOS估计方法以用于RTD信号识别。人工神经网络用于训练和测试该方法。使用通过使用放射性示踪技术进行的测量获得的RTD信号对提出的方法进行测试。仿真结果表明,Trispectrum的参数估计具有较高的识别率,对于RTD信号的识别最为可靠。

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