Reduced Order Modeling of a Heat Exchanger with a Stacking Ensemble to reduce Computational Inefficiencies
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gp-bibliography.bib Revision:1.8129
- @InProceedings{Vijaya-Chandran:2022:ISSE,
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author = "Vinayak {Vijaya Chandran} and Roopa Adepu",
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booktitle = "2022 IEEE International Symposium on Systems
Engineering (ISSE)",
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title = "Reduced Order Modeling of a Heat Exchanger with a
Stacking Ensemble to reduce Computational
Inefficiencies",
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year = "2022",
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abstract = "Reduced Order Modeling is a technique for reducing the
computational complexity of a model while preserving
the expected fidelity within a controlled error. One of
the techniques used to create a Reduced Order Model
(ROM) is Artificial Neural Networks (ANN). A successful
approach to reducing the variance of ANN model
prediction is to train multiple models instead of a
single model and to combine the predictions from these
models, which is commonly called Ensemble learning.
When the predictions from the multiple models are
combined using another regression model, it is called
Stacking ensemble. This paper studies the effectiveness
of using Genetic programming algorithm in taking the
outputs of each model as input and attempting to learn
how to best combine the input predictions to make a
better output prediction.The above-mentioned approach
is used to create a ROM for a crossflow heat exchanger
steady-state component. There are 6 inputs parameters
namely Cold & Hot inlet temperature, Cold & Hot outlet
pressure and Cold & Hot inlet flow. There are four
outputs namely Hot & Cold outlet temperature and Hot &
Cold inlet pressure. A multi-input single output (MISO)
ROM is created for each of the outputs. There are 3
different configurations of ANNs used to cover a good
range of the Hyperparameter values. The output from
each of the ANNs is then combined using Genetic
Programming Algorithm. The Overall model has an R2
value of above 9percent for each of the outputs. The
ROM thus created can run simulations at a much faster
rate. The ROM of the HX component is a black box and
can be shared with third party without any concerns
over propriety information loss.",
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keywords = "genetic algorithms, genetic programming",
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DOI = "doi:10.1109/ISSE54508.2022.10005464",
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ISSN = "2687-8828",
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month = oct,
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notes = "Also known as \cite{10005464}",
- }
Genetic Programming entries for
Vinayak Vijaya Chandran
Roopa Adepu
Citations