2021
DOI: 10.3390/su131910541
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The Effects of Rock Index Tests on Prediction of Tensile Strength of Granitic Samples: A Neuro-Fuzzy Intelligent System

Abstract: Rock tensile strength (TS) is an essential parameter for designing structures in rock-based projects such as tunnels, dams, and foundations. During the preliminary phase of geotechnical projects, rock TS can be determined through laboratory works, i.e., Brazilian tensile strength (BTS) test. However, this approach is often restricted by laborious and costly procedures. Hence, this study attempts to estimate the BTS values of rock by employing three non-destructive rock index tests. BTS predictive models were d… Show more

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Cited by 30 publications
(2 citation statements)
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“…In the case of a perfect model with a zero-estimate error variance, the Nash-Sutclife efciency (NSE) equals one (NSE � 1) and vice versa. Te a-20 index is a recently introduced statistical engineering measure that can be used to evaluate AI models by displaying the number of samples that suit the estimation values with a 20% variance from experimental values [60][61][62]. R 2 , NS, and a-20 index values closer to 1 indicate the best correlation between the estimated and the experimental results.…”
Section: Standardization Of Datamentioning
confidence: 99%
“…In the case of a perfect model with a zero-estimate error variance, the Nash-Sutclife efciency (NSE) equals one (NSE � 1) and vice versa. Te a-20 index is a recently introduced statistical engineering measure that can be used to evaluate AI models by displaying the number of samples that suit the estimation values with a 20% variance from experimental values [60][61][62]. R 2 , NS, and a-20 index values closer to 1 indicate the best correlation between the estimated and the experimental results.…”
Section: Standardization Of Datamentioning
confidence: 99%
“…The a20-index is also a very useful metric to assess the accuracy of ML models. It measures the proportion of predictions that deviate ±20 % from the predicted values [ 91 ]. It has been recommended in literature that for a perfect ML model, the a20-index value should be 1 [ 92 ].…”
Section: Model Development and Performance Assessmentmentioning
confidence: 99%