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Machine Learning for Prediction of Heat Pipe Effectiveness

Anish Nair, P. Ramkumar, Sivasubramanian Mahadevan, Chander Prakash, Saurav Dixit, G. Murali, Nikolai Vatin, Kirill Epifantsev, Kaushal Kumar

2022Energies28 citationsDOIOpen Access PDF

Abstract

This paper details the selection of machine learning models for predicting the effectiveness of a heat pipe system in a concentric tube exchanger. Heat exchanger experiments with methanol as the working fluid were conducted. The value of the angle varied from 0° to 90°, values of temperature varied from 50 °C to 70 °C, and the flow rate varied from 40 to 120 litres per min. Multiple experiments were conducted at different combinations of the input parameters and the effectiveness was measured for each trial. Multiple machine learning algorithms were taken into consideration for prediction. Experimental data were divided into subsets and the performance of the machine learning model was analysed for each of the subsets. For the overall analysis, which included all the three parameters, the random forest algorithm returned the best results with a mean average error of 1.176 and root-mean-square-error of 1.542.

Topics & Concepts

Heat exchangerMathematicsConcentricMean squared errorVolumetric flow rateRandom forestRoot mean squareMachine learningComputer scienceSimulationArtificial intelligenceStatisticsEngineeringMechanical engineeringMechanicsGeometryPhysicsElectrical engineeringHeat Transfer and Boiling StudiesHeat Transfer and OptimizationBuilding Energy and Comfort Optimization
Machine Learning for Prediction of Heat Pipe Effectiveness | Litcius