Yeşilkanat Cafer Mert, Kobya Yaşar, Taşkın Halim, Çevik Uğur
Artvin Çoruh University, Science Teaching Department, 08100 Artvin, Turkey.
Artvin Çoruh University, Faculty of Engineering, Energy Systems Engineering, 08100 Artvin, Turkey.
J Environ Radioact. 2017 Sep;175-176:78-93. doi: 10.1016/j.jenvrad.2017.04.015. Epub 2017 May 4.
The aim of this study was to determine spatial risk dispersion of ambient gamma dose rate (AGDR) by using both artificial neural network (ANN) and fuzzy logic (FL) methods, compare the performances of methods, make dose estimations for intermediate stations with no previous measurements and create dose rate risk maps of the study area. In order to determine the dose distribution by using artificial neural networks, two main networks and five different network structures were used; feed forward ANN; Multi-layer perceptron (MLP), Radial basis functional neural network (RBFNN), Quantile regression neural network (QRNN) and recurrent ANN; Jordan networks (JN), Elman networks (EN). In the evaluation of estimation performance obtained for the test data, all models appear to give similar results. According to the cross-validation results obtained for explaining AGDR distribution, Pearson's r coefficients were calculated as 0.94, 0.91, 0.89, 0.91, 0.91 and 0.92 and RMSE values were calculated as 34.78, 43.28, 63.92, 44.86, 46.77 and 37.92 for MLP, RBFNN, QRNN, JN, EN and FL, respectively. In addition, spatial risk maps showing distributions of AGDR of the study area were created by all models and results were compared with geological, topological and soil structure.
本研究的目的是使用人工神经网络(ANN)和模糊逻辑(FL)方法确定环境伽马剂量率(AGDR)的空间风险分布,比较这些方法的性能,对以前没有测量数据的中间站点进行剂量估计,并创建研究区域的剂量率风险地图。为了使用人工神经网络确定剂量分布,使用了两个主要网络和五种不同的网络结构;前馈人工神经网络;多层感知器(MLP)、径向基函数神经网络(RBFNN)、分位数回归神经网络(QRNN)和递归人工神经网络;约旦网络(JN)、埃尔曼网络(EN)。在对测试数据获得的估计性能进行评估时,所有模型似乎都给出了相似的结果。根据为解释AGDR分布而获得的交叉验证结果,MLP、RBFNN、QRNN、JN、EN和FL的皮尔逊r系数分别计算为0.94、0.91、0.89、0.91、0.91和0.92,RMSE值分别计算为34.78、43.28、63.92、44.86、46.77和37.92。此外,所有模型都创建了显示研究区域AGDR分布的空间风险地图,并将结果与地质、地形和土壤结构进行了比较。