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首页> 外文期刊>IEEE Transactions on Nuclear Science >Pulse shape recognition for CdZnTe semiconductor detector by using multi-shaping amplifiers method with neural network algorithm
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Pulse shape recognition for CdZnTe semiconductor detector by using multi-shaping amplifiers method with neural network algorithm

机译:基于神经网络算法的多形状放大器方法对CdZnTe半导体探测器的脉冲形状识别

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摘要

A new pulse shape recognition method with multi-shaping amplifiers, combined with a neural network algorithm, has been developed, where four pulse heights are sampled from one signal pulse through four linear amplifiers with different shaping time constants. The four pulse heights are used as characteristic parameters to recognize the pulse shape with a neural network. This method has been applied to signal processing for a CdZnTe semiconductor detector to improve the deteriorated energy spectra caused by pulse height deficits due to the different mobilities of electrons and holes in the detector. The neural network recognizes the pulse shape patterns and provides the corrective magnification factors of the pulse heights. After the corrective procedure, the energy spectrum for /sup 137/Cs gamma-rays is improved from 9.3 keV to 7.4 keV in the energy resolution (FWHM) of the 662 keV gamma rays photopeak. The photopeak becomes a considerably symmetrical shape without a low-energy tail. It has been verified that this method is simple and useful for pulse shape analyses, which can be used for many other applications.
机译:已经开发了一种新的具有多整形放大器的脉冲形状识别方法,并结合了神经网络算法,其中通过四个具有不同整形时间常数的线性放大器从一个信号脉冲中采样四个脉冲高度。四个脉冲高度用作特征参数,以通过神经网络识别脉冲形状。此方法已应用于CdZnTe半导体探测器的信号处理,以改善由于探测器中电子和空穴迁移率不同而引起的脉冲高度不足而引起的能谱下降。神经网络识别脉冲形状模式并提供脉冲高度的校正放大系数。经过校正程序后,/ sup 137 / Cs伽马射线的能谱在662 keV伽马射线光峰的能量分辨率(FWHM)中从9.3 keV提高到7.4 keV。光电峰变成相当对称的形状,没有低能量的尾巴。已经证实,该方法对于脉冲形状分析非常简单且有用,可以用于许多其他应用。

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