Skip to content

Latest commit

 

History

History
5 lines (3 loc) · 528 Bytes

README.md

File metadata and controls

5 lines (3 loc) · 528 Bytes

ML4EvapFlows

In the present repository, the dataset along with the optimized pipelines (including the selected features and machin learning algorithms), proposed in the following paper, will (after the review process is completed) be provided.

Keivan Ardam, Behzad Najafi, Andrea Lucchini, Fabio Rinaldi,Luigi Pietro Maria Colombo, Machine Learning based Pressure Drop Estimation of Evaporating R134a Flow in Micro-finTubes: Investigation of the Optimal Dimensionless Feature Set, under-review in Int. J. of Refrigeration