Prediction of soil degree of compaction based on machine learning: a case study of two fine-grained soils

IF 1.5 4区 工程技术 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Engineering Computations Pub Date : 2023-11-24 DOI:10.1108/ec-06-2023-0304
Yuling Ran, Wei Bai, Lingwei Kong, Henghui Fan, Xiujuan Yang, Xuemei Li
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Abstract

Purpose

The purpose of this paper is to develop an appropriate machine learning model for predicting soil compaction degree while also examining the contribution rates of three influential factors: moisture content, electrical conductivity and temperature, towards the prediction of soil compaction degree.

Design/methodology/approach

Taking fine-grained soil A and B as the research object, this paper utilized the laboratory test data, including compaction parameter (moisture content), electrical parameter (electrical conductivity) and temperature, to predict soil degree of compaction based on five types of commonly used machine learning models (19 models in total). According to the prediction results, these models were preliminarily compared and further evaluated.

Findings

The Gaussian process regression model has a good effect on the prediction of degree of compaction of the two kinds of soils: the error rates of the prediction of degree of compaction for fine-grained soil A and B are within 6 and 8%, respectively. As per the order, the contribution rates manifest as: moisture content > electrical conductivity >> temperature.

Originality/value

By using moisture content, electrical conductivity, temperature to predict the compaction degree directly, the predicted value of the compaction degree can be obtained with higher accuracy and the detection efficiency of the compaction degree can be improved.

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基于机器学习的土壤压实度预测:以两种细粒土为例
本文的目的是建立一个合适的机器学习模型来预测土壤压实度,同时考察三个影响因素:含水量、电导率和温度对土壤压实度预测的贡献率。设计/方法/方法本文以细粒土A和B为研究对象,利用室内测试数据,包括压实参数(含水率)、电学参数(电导率)和温度,基于五种常用的机器学习模型(共19种模型)预测土壤的压实程度。根据预测结果,对这些模型进行了初步比较和进一步评价。结果高斯过程回归模型对两种土壤的压实度预测效果较好,细粒土a和B的压实度预测错误率分别在6%和8%以内。根据订单,贡献率显示为:含水率>导电性>>温度。独创性/价值利用含水率、电导率、温度直接预测压实度,可以获得较高精度的压实度预测值,提高压实度的检测效率。
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来源期刊
Engineering Computations
Engineering Computations 工程技术-工程:综合
CiteScore
3.40
自引率
6.20%
发文量
61
审稿时长
5 months
期刊介绍: The journal presents its readers with broad coverage across all branches of engineering and science of the latest development and application of new solution algorithms, innovative numerical methods and/or solution techniques directed at the utilization of computational methods in engineering analysis, engineering design and practice. For more information visit: http://www.emeraldgrouppublishing.com/ec.htm
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