TitleModelling Tyre-Road Noise with Data Mining Techniques
Journal titleArchives of Acoustics
Divisions of PASNauki Techniczne
PublisherCommittee on Acoustics PAS, PAS Institute of Fundamental Technological Research, Polish Acoustical Society
Date2015[2015.01.01 AD - 2015.12.31 AD]
IdentifierISSN 0137-5075 ; eISSN 2300-262X
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