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Concrete compressive strength machine learning.
Ml is a branch of ai and can be used for several objectives e g classification regression clustering etc.
Thus using machine learning to predict the strength could be useful in generating a combination of ingredients which result in high strength.
Thus using machine learning to predict the strength could be useful in generating a combination of ingredients which result in high strength.
The concrete compressive strength is the regression problem.
Loading the required libraries.
The compressive strength of concrete is a highly nonlinear function of ingredients used in making it and their characteristics.
This is generally determined by a standard crushing test on a concrete cylinder.
The order of this listing corresponds to the order of numerals along the rows of the database.
The sequential model will be trained using the concrete compressive strength data set to learn to predict the compressive strength of concrete samples based on the material used to make them.
Name data type measurement description cement component 1 quantitative kg in a m3 mixture input variable.
Please read this blog for more explanation.
This requires engineers to build small concrete cylinders with different combinations of raw materials and test these cylinders for strength variations with a change in each raw material.
Prediction of the concrete compressive strength fc and slump s is important in terms of the desirability of concrete and its sustainability.
The compressive strength of concrete determines the quality of concrete.
The compressive strength of high performance concrete hpc is a major civil engineering problem.
Machine learning methods have been successfully applied to many engineering disciplines.
On the other hand with the development of artificial intelligence ai in recent years it is a trend to use machine learning ml techniques to predict the concrete compressive strength.
In this work three models are designed implemented and tested to determine the compressive strength of concrete.
R is digging out a strong foothold in the statistical realm and is becoming an indispensable tool for researchers.
Machine learning ml techniques are increasingly used to simulate the behavior of concrete materials and have become an important research area.
Random forest svm and anns.
A comparative analysis for the prediction of compressive strength of concrete at the ages of 28 56 and 91 days has been carried out using machine learning techniques via r software environment.