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Application of Artificial Neural Networks in Predicting Subbase CBR Values Using Soil Indices Data

机译:人工神经网络在利用土壤指数数据预测子比例CBR值的应用

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Subbase strength characteristics is one of the main inputs of pavement design, and such strength characteristics are normally represented by indices such as resilient modulus, dynamic modulus, and California Bearing Ratio (CBR), with the latter being a widely used index among pavement and geotechnical engineers. This paper examines the capability of Artificial Neural Networks (ANN) to develop a correlation between subbase CBR and primary soil data, which could help with estimating CBR for prediction purposes and with identifying the significance of each index with regard to subbase strength. Data were sampled from different areas in Karbala, Iraq, and a total of 358 subbase samples were used for model training and validation. The results showed that the proposed ANN model could successfully predict the CBR value using soil index data. Additionally, a sensitivity analysis was conducted to determine the importance of each contributing factor, and within the boundaries of the local subbase characteristics, the test results indicated that soluble salts were the most effective factor among soil parameters with an importance percentage of 39.46%, while the Plasticity Index (PI) was the least important factor, with a percentage of 2.06%. Based on the validity and quality of subbase soil tests, using ANN to predict CBR value may offer a suitable replacement for lengthy and expensive laboratory testing based on validated data for materials supplied from Karbala quarries.
机译:子基本强度特性是路面设计的主要输入之一,这种强度特性通常由诸如弹性模量,动态模量和加利福尼亚轴承比(CBR)的指数表示,后者是路面和岩土的广泛使用指数工程师。本文探讨了人工神经网络(ANN)在亚比赛CBR和原代土壤数据之间形成相关性,这可以有助于估计CBR以估计预测目的,并识别每个指数关于亚基质强度的显着性。数据从卡尔巴拉,伊拉克的不同区域取样,总共358个亚基类样品用于模型训练和验证。结果表明,拟议的ANN模型可以使用土指数数据成功预测CBR值。另外,进行敏感性分析以确定每种贡献因素的重要性,以及在局部亚基类特征的界限内,测试结果表明,可溶性盐是土壤参数中最有效的因素,其重要率为39.46%可塑性指数(PI)是最不重要的因素,百分比为2.06%。基于亚基层土壤试验的有效性和质量,使用ANN预测CBR值可以基于从卡尔巴拉采石场提供的材料的验证数据提供了适当的冗长和昂贵的实验室测试的替代品。

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