Title of article :
Evaluation of Concrete Plants Readiness to Produce High Quality Concrete for Municipal Constructions Using Past Information
Author/Authors :
Mohammadian, M School of Civil Engineering - College of Engineering - University of Tehran, Tehran , Shekarchizadeh, M School of Civil Engineering - College of Engineering - University of Tehran, Tehran
Abstract :
The only way to test the ability of concrete plants to produce high quality
concrete is to test their final products. Also, the process of testing and controlling concrete
quality is time consuming and expensive. In this regard, having a quick, cheap and efficient
way to predict the readiness of concrete plants to produce high quality concrete is very
valuable. In this paper, a probabilistic multi-attribute algorithm has been developed to
address this problem. In this algorithm, the goal is to evaluate readiness of concrete plants to
produce high quality concrete based on the error rate of concrete compressive strength. Using
past information and data mining techniques, this algorithm predicts the readiness level of
concrete plants by similarity of their production factors to past information. Readiness
alternatives for plants are ranked using data mining techniques for order preference based on
their production factors (PF) and by evaluating the similarity/difference of each PF to past
information. A case study of 20 concrete plants is used to illustrate the capability of the new
algorithm; with results showing that the algorithm generated nondominated solutions can
assist plant managers to set efficient production plan, a task both difficult, cost and timeconsuming
using current methods. In the case study, lab test totally confirm the algorithm
outcomes thus it has been successfully verified.
Keywords :
Algorithm , Concrete Plant , Data Mining , Error Rate of Concrete Compressive Strength , INTRODUCTION
Journal title :
Astroparticle Physics