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首页> 外文期刊>Neural Network World >THE USE OF SELF-ORGANIZING FEATURE MAP NETWORKS FOR THE PREDICTION OF THE CRITICAL FACTOR OF SAFETY OF AN ARTIFICIAL SLOPE
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THE USE OF SELF-ORGANIZING FEATURE MAP NETWORKS FOR THE PREDICTION OF THE CRITICAL FACTOR OF SAFETY OF AN ARTIFICIAL SLOPE

机译:使用自组织特征映射网络预测人工边坡安全的关键因素

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In this study, the performance of three different self organization feature map (SOFM) network models denoted as SOFM1, SOFM2, and SOFM3 having neighborhood shapes, namely, SquareKohonenful, LineKohonenful, and Diamond-Kohenenful, respectively, to predict the critical factor of safety (F-s) of a widely-used artificial slope subjected to earthquake forces was investigated and compared. For this purpose, the reported data sets by Erzin and Cetin (2012) [7], including the minimum (critical) F-s values of the artificial slope calculated by using the simplified Bishop method, were utilized in the development of the SOFM models. The results obtained from the SOFM models were compared with those obtained from the calculations. It is found that the SOFM1 model exhibits more reliable predictions than SOFM2 and SOFM3 models. Moreover, the performance indices such as the determination coefficient, variance account for, mean absolute error, root mean square error, and the scaled percent error were computed to evaluate the prediction capacity of the SOFM models developed. The study demonstrates that the SOFM1 model is able to predict the F-s value of the artificial slope, quite efficiently, and is superior to the SOFM2 and SOFM3
机译:在这项研究中,表示为具有邻域形状(分别为SquareKohonenful,LineKohonenful和Diamond-Kohenenful)的三个不同的自组织特征图(SOFM)网络模型的性能分别表示为SOFM1,SOFM2和SOFM3,以预测安全的关键因素研究并比较了受到地震力作用的广泛使用的人工边坡的(Fs)。为此,Erzin和Cetin(2012)[7]所报告的数据集,包括使用简化的Bishop方法计算出的人工边坡的最小(临界)F-s值,被用于SOFM模型的开发。从SOFM模型获得的结果与从计算获得的结果进行了比较。发现SOFM1模型比SOFM2和SOFM3模型表现出更可靠的预测。此外,计算了诸如确定系数,方差占,平均绝对误差,均方根误差和比例误差百分比等性能指标,以评估所开发的SOFM模型的预测能力。研究表明,SOFM1模型能够非常有效地预测人工坡度的F-s值,并且优于SOFM2和SOFM3

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