A neural network approach for indirectly estimating farm tractors engine performances

Fuel - Tập 143 - Trang 144-154 - 2015
Marco Bietresato1, Aldo Calcante2, Fabrizio Mazzetto1
1Free University of Bozen-Bolzano, Faculty of Science and Technology – Fa.S.T., piazza Università 5, I-39100 Bolzano, BZ, Italy
2Università degli Studi di Milano, Dipartimento di Scienze Agrarie e Ambientali – Di.S.A.A., via Celoria 2, I-20133 Milano, MI, Italy

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