التقييم المعياري للمواد المكونة الملموسة للخرسانة باستخدام تقنيات التعلم الالي
Nowadays, technology has advanced, particularly in machine
learning which is vital for minimizing the amount of human
work required. Using machine learning approaches to estimate
concrete properties has unquestionably triggered the interest of
many researchers across the globe. Currently, an assessment
method is widely adopted to calculate the impact of each input
parameter on the output of a machine learning model. This
paper evaluates the capability of various machine learning
methodologies in conducting parametric assessments to
understand the influence of each concrete constituent material
on its compressive strength. It is accomplished by conducting a
partial dependence analysis to quantify the effect of input
features on the prediction results. As a part of the study, the
effects of machine learning method selection for such analysis
are also investigated by employing a concrete compressive
strength algorithm developed using a decision tree, random
forest, adaptive boosting, stochastic gradient boosting, and
extreme gradient boosting. Additionally, the significance of the
input features to the accuracy of the constructed estimation
models is ranked through drop-out loss and MSE reduction.
This investigation shows that the machine learning techniques
could accurately predict the concrete's compressive strength
with very high performance. Further, most analyzed algorithms
yielded similar estimations regarding the strength of concrete
constituent materials. In general, the study's results have shown
that the drop-out loss and MSE reduction outputs were
misleading, whereas the partial dependence plots provide a clear
idea about the influence of the value of each feature on the
prediction outcomes