Details

Title

Development of a Committee of Artificial Neural Networks for the Performance Testing of Compressors for Thermal Machines in Very Reduced Times

Journal title

Metrology and Measurement Systems

Yearbook

2015

Volume

vol. 22

Issue

No 1

Authors

Keywords

refrigeration compressor ; artificial neural networks ; performance test

Divisions of PAS

Nauki Techniczne

Coverage

79-88

Publisher

Polish Academy of Sciences Committee on Metrology and Scientific Instrumentation

Date

2015[2015.01.01 AD - 2015.12.31 AD]

Type

Artykuły / Articles

Identifier

DOI: 10.1515/mms-2015-0003 ; ISSN 2080-9050, e-ISSN 2300-1941

Source

Metrology and Measurement Systems; 2015; vol. 22; No 1; 79-88

References

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