COMPACTION PARAMETERS PREDICTION AND ANALYSIS FROM ATTERBERG LIMIT BY ARTIFICIAL NEURAL NET OF SOILS ALONG MOROCHO-APOSTO ROAD
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Date
2020-07-30
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Hawassa Unversity
Abstract
Urbanization together with large scale industrialization and modernization has created
shortage of land for construction in most countries. To overcome this problem and fulfil
the need for infrastructure, land is developed using sound and cost effective engineering
techniques such mechanical compaction. This method identifies important compaction
parameters mainly optimum moisture content and maximum dry density and are acquired
from simple laboratory testing. But when there is a limited number of laboratory
equipment, budget and man power in case of larger projects which requires reasonable
sizable effort, labor, time and budget, implementing other methods such developing linear
relationship for determination compaction parameters of soil is a must and economical. In
these study attempts to predict optimum moisture content and maximum dry density from
Atterberg limit parameters by using artificial neural net analysis of soils in Morocho Aposto road has been made. When there is a need for rehabilitating and upgrading of the
road, conducting this study provides future information and used to validate findings. To
conduct the study 75 data bank that includes 20 samples as primary and 55 data as
secondary source were used to analyze and develop the predictive model. Samples were
collected randomly from 20 pits and subjected to both Atterberg limit and Modified
proctor test in accordance to AASHTO standard. The data were analyzed and computed
using Neural Net. Commands where written for prediction and linear regression modeling.
The data bank was trained and optimized using Levenberg-Marquardt, Bayesian
regularization and Scaled Conjugate Gradient algorithm based on each criterion.
Levenberg-Marquardt training algorithm is selected as the best algorithm by with the two
algorithms. The study found that, LM algorithm has mean estimate error of 1.527, training
time < 1 second and R value of 0.978 that predicted the models with better accuracy than
SCG and BR algorithms. Therefore, the study concludes that OMC and MDD can be
predicted from Atterberg limit by artificial neural net with error margin of ± 2 for soils in
the study area
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Keywords
Compaction parameters, Atterberge’s limit, Artificial Neural Net, Levenberg Marquardt, Bayesian regularization, Scaled Conjugate Gradient
