Search engine for discovering works of Art, research articles, and books related to Art and Culture
ShareThis
Javascript must be enabled to continue!

Modeling of maximum dry density and optimum moisture content of stabilized soil using artificial neural networks

View through CrossRef
AbstractThis study considers the use of artificial neural networks (ANNs) to predict the maximum dry density (MDD) and optimum moisture content (OMC) of soil‐stabilizer mix. Multilayer perceptron (MLP), one of the most widely used ANN architectures in the literature, is utilized to construct comprehensive and accurate models relating the MDD and OMC of stabilized soil to the properties of natural soil such as particle‐size distribution, plasticity, linear shrinkage, and the type and quantity of stabilizing additives. Five ANN models are constructed using different combinations of the input parameters. Two separate sets of ANN prediction models, one for MDD and the other for OMC, and also a combined ANN model for multiple outputs are developed using the potentially influential input parameters. Relative‐importance values of various inputs of the models are calculated to determine the significance of each of the predictor variables to MDD and OMC. Inferring the most relevant input parameters based on Garson's algorithm, modified ANN models are separately developed for MDD and OMC. The modified ANN models are utilized to introduce explicit formulations of MDD and OMC. A parametric study is also conducted to evaluate the sensitivity of MDD and OMC due to the variation of the most influencing input parameters. A comprehensive set of data including a wide range of soil types obtained from the previously published stabilization test results is used for training and testing the prediction models. The performance of ANN‐based models is subsequently analyzed and compared in detail. The results demonstrate that the accuracy of the proposed models is satisfactory as compared to the experimental results.
Title: Modeling of maximum dry density and optimum moisture content of stabilized soil using artificial neural networks
Description:
AbstractThis study considers the use of artificial neural networks (ANNs) to predict the maximum dry density (MDD) and optimum moisture content (OMC) of soil‐stabilizer mix.
Multilayer perceptron (MLP), one of the most widely used ANN architectures in the literature, is utilized to construct comprehensive and accurate models relating the MDD and OMC of stabilized soil to the properties of natural soil such as particle‐size distribution, plasticity, linear shrinkage, and the type and quantity of stabilizing additives.
Five ANN models are constructed using different combinations of the input parameters.
Two separate sets of ANN prediction models, one for MDD and the other for OMC, and also a combined ANN model for multiple outputs are developed using the potentially influential input parameters.
Relative‐importance values of various inputs of the models are calculated to determine the significance of each of the predictor variables to MDD and OMC.
Inferring the most relevant input parameters based on Garson's algorithm, modified ANN models are separately developed for MDD and OMC.
The modified ANN models are utilized to introduce explicit formulations of MDD and OMC.
A parametric study is also conducted to evaluate the sensitivity of MDD and OMC due to the variation of the most influencing input parameters.
A comprehensive set of data including a wide range of soil types obtained from the previously published stabilization test results is used for training and testing the prediction models.
The performance of ANN‐based models is subsequently analyzed and compared in detail.
The results demonstrate that the accuracy of the proposed models is satisfactory as compared to the experimental results.

Related Results

Large-scale Soil Moisture Monitoring: A New Approach
Large-scale Soil Moisture Monitoring: A New Approach
Soil moisture is a critical factor for understanding the interactions and feedback between the atmosphere and Earth's surface, particularly through energy and water cycles. It also...
Soil Moisture Retrieval Over Agricultural Fields Using Synthetic Aperture Radar (SAR) Data
Soil Moisture Retrieval Over Agricultural Fields Using Synthetic Aperture Radar (SAR) Data
Soil moisture is vital for agricultural fields as it determines water availability for crops, directly affecting plant growth and productivity. It regulates nutrient uptake, root d...
Estimating top-soil moisture at high spatiotemporal resolution in a highly complex landscape
Estimating top-soil moisture at high spatiotemporal resolution in a highly complex landscape
Soil moisture is a critical variable in precision agriculture, hydrological modeling, and environmental monitoring, influencing crop productivity, irrigation planning, hydrological...
Parameterization of soil evaporation and coupled transport of moisture and heat for arid and semiarid regions
Parameterization of soil evaporation and coupled transport of moisture and heat for arid and semiarid regions
Soil moisture is an important parameter in numerical weather forecasting and climate projection studies, and it is extremely important for arid and semiarid areas. Different from t...
Effect of Coarse Content on Compaction Test
Effect of Coarse Content on Compaction Test
The compaction is a mechanism to densify the loose soils. The maximum soil densification can be achieved by optimization of the desirable optimum moisture content (OMC) and maximum...
Using multiple hydrological data sources to reduce uncertainty in soil drainage modeling
Using multiple hydrological data sources to reduce uncertainty in soil drainage modeling
<p>Soil drainage flux is crucial for determining agrochemical loading and groundwater recharge. Because soil drainage is difficult to measure, it is typically predict...
Project SoMMet - Metrology for multi-scale monitoring of soil moisture
Project SoMMet - Metrology for multi-scale monitoring of soil moisture
Soil moisture is one of the Essential Climate Variables as defined by the WMO Global Climate Observing System. Several soil moisture observation systems exist on multiple scales, h...
Fuzzy Chaotic Neural Networks
Fuzzy Chaotic Neural Networks
An understanding of the human brain’s local function has improved in recent years. But the cognition of human brain’s working process as a whole is still obscure. Both fuzzy logic ...

Back to Top