Title of article
Data mining techniques for thermophysical properties of refrigerants
Author/Authors
Küçüksille، نويسنده , , Ecir U?ur and Selba?، نويسنده , , Re?at and ?encan، نويسنده , , Arzu، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2009
Pages
14
From page
399
To page
412
Abstract
This study presents ten modeling techniques within data mining process for the prediction of thermophysical properties of refrigerants (R134a, R404a, R407c and R410a). These are linear regression (LR), multi layer perception (MLP), pace regression (PR), simple linear regression (SLR), sequential minimal optimization (SMO), KStar, additive regression (AR), M5 model tree, decision table (DT), M5’Rules models. Relations depending on temperature and pressure were carried out for the determination of thermophysical properties as the specific heat capacity, viscosity, heat conduction coefficient, density of the refrigerants. Obtained model results for every refrigerant were compared and the best model was investigated. Results indicate that use of derived formulations from these techniques will facilitate design and optimize of heat exchangers which is component of especially vapor compression refrigeration system.
Keywords
Additive regression , M5 model tree , Decision table , Refrigerant , DATA MINING , Pace regression , Linear regression , Thermophysical properties , M5’Rules , Multi layer perception , KSTAR , Sequential minimal optimization , Simple linear regression
Journal title
Energy Conversion and Management
Serial Year
2009
Journal title
Energy Conversion and Management
Record number
2334485
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