Results of implementation of Feed Forward Neural Networks for modeling of heat transfer coefficient during flow condensation for low and high values of saturation temperature
Description
This database present results of implementation of Feed Forward Neural Networks for modeling of heat transfer coefficient during flow condensation for low and high values of saturation temperature. Databse contain one table and 7 figures.
Dataset file
Database feed forward neural network.pdf
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File details
- License:
-
open in new tabCC BYAttribution
- File embargo:
- 2025-01-10
Details
- Year of publication:
- 2024
- Verification date:
- 2024-03-20
- Creation date:
- 2023
- Dataset language:
- English
- Fields of science:
-
- mechanical engineering (Engineering and Technology)
- environmental engineering, mining and energy (Engineering and Technology)
- DOI:
- DOI ID 10.52202/069564-0036 open in new tab
- Funding:
- Verified by:
- Gdańsk University of Technology
Keywords
- heat transfer coefficient
- high value of reduced pressure
- increased saturation pressure
- artificial neural network
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