An Efficient Image Preprocessing Technique for Land Use Analysis by Using Remote Sensing Images
Journal: International Journal of Advanced Trends in Computer Science and Engineering (IJATCSE) (Vol.10, No. 1)Publication Date: 2021-02-15
Authors : Vasueva Hareesh B;
Page : 308-315
Keywords : Compressive Strength; Regression; Prediction; Concrete; SVM; Random Forest; Decision Trees;
Abstract
The advanced computing techniques and its applications on other engineering disciplines accelerated the different aspects and phases in engineering process. Nowadays there are so many computer aided methods widely used in civil engineering domain. The mathematical relationship between ratios of different concrete components and other influencing factors with its compression strength need to be analyzed for different engineering needs. This paper aims to develop a mathematical relationship after analyzing the above factors and to foresee the compressive strength of concrete by applying various regression techniques such as linear regression, support vector regression, decision tree regression and random forest regression on assumed data set., It was found that the accuracy of the random forest regression was considerable as per the result after applying the various regression techniques.
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Last modified: 2021-02-18 19:59:34