1. bookVolumen 13 (2019): Heft 4 (December 2019)
Zeitschriftendaten
Format
Zeitschrift
eISSN
2300-5319
Erstveröffentlichung
22 Jan 2014
Erscheinungsweise
4 Hefte pro Jahr
Sprachen
Englisch
Uneingeschränkter Zugang

Predictive Control of the Iron Ore Beneficiation Process Based on the Hammerstein Hybrid Model

Online veröffentlicht: 30 Jan 2020
Volumen & Heft: Volumen 13 (2019) - Heft 4 (December 2019)
Seitenbereich: 262 - 270
Eingereicht: 02 Aug 2019
Akzeptiert: 15 Jan 2020
Zeitschriftendaten
Format
Zeitschrift
eISSN
2300-5319
Erstveröffentlichung
22 Jan 2014
Erscheinungsweise
4 Hefte pro Jahr
Sprachen
Englisch

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