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   enhancing water pump failure prediction using machine learning: a focus on less-explored variables  
   
نویسنده rasinojehdehi reza ,cirovic goran
منبع computational algorithms and numerical dimensions - 2023 - دوره : 2 - شماره : 3 - صفحه:124 -135
چکیده    In recent years, there has been a surge in research exploring the potential of machine learning (ml) for predicting water pump failures. while some studies have focused on supervised approaches, others have delved into unsupervised methods. however, the challenge lies in identifying the key variables crucial for accurate failure predictions. this study bridges this gap by consulting domain experts to discern essential variables, including water catchment area level, water quality index, lubrication frequency, water reservoir temperature, operating time, and power interruptions count. employing supervised ml methods, specifically multiple regression and decision tree cart, the research aims to enhance the precision of failure predictions, shedding light on less-explored variables that play a significant role in pump failure.
کلیدواژه machine learning ,water pump failure prediction ,multi-variable regression ,decision tree cart
آدرس islamic azad university, science and research branch, department of industrial engineering, iran, university of novi sad, faculty of technical sciences, serbia
پست الکترونیکی goran.cirovic@uns.ac.rs
 
     
   
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