Determination of shape parameters of sands: a deep learning approach

The shape parameters of sand particles can be determined by either a Krumbein-Sloss chart or mathematical computation based on the particle image. However, these approaches are limited by user-dependent uncertainty and complicated algorithms with computational issues. This study explores the feasibi...

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Veröffentlicht in:Acta geotechnica 2022-04, Vol.17 (4), p.1521-1531
Hauptverfasser: Kim, Yejin, Ma, Jeehoon, Lim, Seok Yong, Song, Jun Young, Yun, Tae Sup
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Ma, Jeehoon
Lim, Seok Yong
Song, Jun Young
Yun, Tae Sup
description The shape parameters of sand particles can be determined by either a Krumbein-Sloss chart or mathematical computation based on the particle image. However, these approaches are limited by user-dependent uncertainty and complicated algorithms with computational issues. This study explores the feasibility of predicting the shape parameters of sand particles via a well-trained deep learning model. Over 7000 sand particle images from six different sand types were used, and the corresponding shape parameters such as sphericity, roundness, slenderness, and circularity were computed. Inception-ResNet-v2 whose performance has been widely validated, as one of convolutional neural network-based model, used the pair dataset (i.e., image and each computed shape parameter) and comprised a pre-trained network for feature extraction and a regression output layer. Strategic data augmentation helped in increasing the number of training data to reduce the test loss efficiently. Several hyperparameters were carefully tuned to accomplish model optimization, while the generalization ability of the model was evaluated during training by using a validation dataset. The prediction results showed that the trained model yielded a highly accurate and precise prediction of the shape parameters, regardless of the image types. The predicted roundness had relatively scattered values in comparison with other parameters, presumably because of its indeterminate definition of the ground-truth. Thus, the proposed trained model enables accurate prediction of the shape parameters of sand particles solely based on an image containing the complete shape of the particle, without mathematical computation.
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However, these approaches are limited by user-dependent uncertainty and complicated algorithms with computational issues. This study explores the feasibility of predicting the shape parameters of sand particles via a well-trained deep learning model. Over 7000 sand particle images from six different sand types were used, and the corresponding shape parameters such as sphericity, roundness, slenderness, and circularity were computed. Inception-ResNet-v2 whose performance has been widely validated, as one of convolutional neural network-based model, used the pair dataset (i.e., image and each computed shape parameter) and comprised a pre-trained network for feature extraction and a regression output layer. Strategic data augmentation helped in increasing the number of training data to reduce the test loss efficiently. 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subjects Algorithms
Artificial neural networks
Complex Fluids and Microfluidics
Computation
Computer applications
Computer networks
Datasets
Deep learning
Engineering
Feasibility studies
Feature extraction
Foundations
Geoengineering
Geotechnical Engineering & Applied Earth Sciences
Hydraulics
Machine learning
Mathematical models
Neural networks
Optimization
Parameters
Predictions
Research Paper
Roundness
Sand
Sand & gravel
Shape
Soft and Granular Matter
Soil Science & Conservation
Solid Mechanics
Training
title Determination of shape parameters of sands: a deep learning approach
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