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Application of artificial neural network in precise prediction of cement elements percentages based on the neutron activation analysis

机译:基于中子活化分析的人工神经网络在水泥元素含量精确预测中的应用

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Due to variation of neutron energy spectrum in the target sample during the activation process and to peak overlapping caused by the Compton effect with gamma radiations emitted from activated elements, which results in background changes and consequently complex gamma spectrum during the measurement process, quantitative analysis will ultimately be problematic. Since there is no simple analytical correlation between peaks' counts with elements' concentrations, an artificial neural network for analyzing spectra can be a helpful tool. This work describes a study on the application of a neural network to determine the percentages of cement elements (mainly Ca, Si, Al, and Fe) using the neutron capture delayed gamma-ray spectra of the substance emitted by the activated nuclei as patterns which were simulated via the Monte Carlo N-particle transport code, version 2.7. The Radial Basis Function (RBF) network is developed with four specific peaks related to Ca, Si, Al and Fe, which were extracted as inputs. The proposed RBF model is developed and trained with MATLAB 7.8 software. To obtain the optimal RBF model, several structures have been constructed and tested. The comparison between simulated and predicted values using the proposed RBF model shows that there is a good agreement between them.
机译:由于活化过程中目标样品中中子能谱的变化以及康普顿效应与活化元素发射的伽马射线引起的峰重叠,导致背景变化,从而在测量过程中产生复杂的伽马光谱,因此定量分析将最终会有问题。由于在峰数与元素浓度之间没有简单的分析相关性,因此用于分析光谱的人工神经网络可能是一个有用的工具。这项工作描述了一项关于使用神经网络确定水泥元素(主要是Ca,Si,Al和Fe)百分比的研究,其中使用了中子捕获活化核发射的物质的延迟伽马射线光谱作为模式,通过蒙特卡洛N粒子传输代码2.7版进行了模拟。建立了径向基函数(RBF)网络,其中包含四个与Ca,Si,Al和Fe有关的特定峰,这些峰被提取为输入。提出的RBF模型是使用MATLAB 7.8软件开发和训练的。为了获得最佳的RBF模型,已经构造并测试了几种结构。使用提出的RBF模型对模拟值和预测值进行比较,表明它们之间有很好的一致性。

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