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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >A PLS-Based Weighted Artificial Neural Network Approach for Alpha Radioactivity Prediction inside Contaminated Pipes
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A PLS-Based Weighted Artificial Neural Network Approach for Alpha Radioactivity Prediction inside Contaminated Pipes

机译:基于PLS的加权人工神经网络方法预测污染管道内的α放射性

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摘要

Long-range alpha detection (LRAD) has been used to measure alpha particles emitting contamination inside decommissioned steel pipes. There exists a complex nonlinear relationship between input parameters and measuring results. The input parameters, for example, pipe diameter, pipe length, distance to radioactive source, radioactive source strength, wind speed, and flux, exhibit different contributions to the measuring results. To reflect these characteristics and estimate alpha radioactivity as exactly as possible, a hybrid partial least square back propagation (PLSBP) neural network approach is presented in this paper. In this model, each node in the input layer is weighted, which indicates that different input nodes have different contributions on the system and this finding has been little reported. The weights are determined by the PLS. After this modification, a variety of normal three-layered BP networks are developed. The comparison of computational results of the proposed approach with traditional BP model and experiments confirms its clear advantage for dealing with this complex nonlinear estimation. Thus, an integrated picture of alpha particle activity inside contaminated pipes can be obtained.
机译:远程阿尔法检测(LRAD)已用于测量退役钢管内部散发污染物的阿尔法颗粒。输入参数和测量结果之间存在复杂的非线性关系。输入参数(例如,管道直径,管道长度,到放射源的距离,放射源强度,风速和通量)对测量结果有不同的贡献。为了反映这些特征并尽可能准确地估计alpha放射性,本文提出了一种混合的偏最小二乘反向传播(PLSBP)神经网络方法。在此模型中,对输入层中的每个节点进行加权,这表明不同的输入节点对系统有不同的贡献,并且几乎没有报道这一发现。权重由PLS确定。进行此修改后,开发了各种常规的三层BP网络。与传统的BP模型和实验相比,该方法的计算结果证实了其在处理这种复杂的非线性估计中的明显优势。因此,可以获得污染管道内部的α粒子活性的综合图像。

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