Machine learning based surrogate models for microchannel heat sink
optimization
- URL: http://arxiv.org/abs/2208.09683v1
- Date: Sat, 20 Aug 2022 13:49:11 GMT
- Title: Machine learning based surrogate models for microchannel heat sink
optimization
- Authors: Ante Sikirica, Luka Grb\v{c}i\'c, Lado Kranj\v{c}evi\'c
- Abstract summary: In this paper, microchannel designs with secondary channels and with ribs are investigated using computational fluid dynamics.
A workflow that combines Latin hypercube sampling, machine learning-based surrogate modeling and multi-objective optimization is proposed.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this paper, microchannel designs with secondary channels and with ribs are
investigated using computational fluid dynamics and are coupled with a
multi-objective optimization algorithm to determine and propose optimal
solutions based on observed thermal resistance and pumping power. A workflow
that combines Latin hypercube sampling, machine learning-based surrogate
modeling and multi-objective optimization is proposed. Random forests, gradient
boosting algorithms and neural networks were considered during the search for
the best surrogate. We demonstrated that tuned neural networks can make
accurate predictions and be used to create an acceptable surrogate model.
Optimized solutions show a negligible difference in overall performance when
compared to the conventional optimization approach. Additionally, solutions are
calculated in one-fifth of the original time. Generated designs attain
temperatures that are lower by more than 10% under the same pressure limits as
a convectional microchannel design. When limited by temperature, pressure drops
are reduced by more than 25%. Finally, the influence of each design variable on
the thermal resistance and pumping power was investigated by employing the
SHapley Additive exPlanations technique. Overall, we have demonstrated that the
proposed framework has merit and can be used as a viable methodology in
microchannel heat sink design optimization.
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