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Machine Learning in Aluminium Reduction
Details
Aluminium smelting the world over has had two major constraints: environmental protection and energy costs. Since the method and efficiency of alumina feed in the smelting process impacts environmental pollution and production efficiency greatly, much of the industry's investment money has been spent researching into better feed control systems - feed delivery and feed strategies. The subject matter of this thesis dwells on the latter, continuing the search for an efficient adaptive alumina feed strategy in the Hall-Héroult aluminium reduction cell. Neurocomputing is applied to the problem of on-line estimation of alumina mass balance in the electrolytic cell. Simulated and real electrolytic resistance/alumina concentration data was used as input vectors to train a single-layer feed forward loop-back NEURAL NETWORK constructed with six constraint equations and six degrees of freedom in search for a prediction algorithm. A contribution is proposed to alumina feed control strategies by developing a neural network-based adaptive feed control algorithm, robust against cell resistance variations, and implementable on retrofit state-of-the-art aluminium reduction cell microcomputers.
Autorentext
Now a lawyer and lecturer in University of Ghana School of Law, his first degree was in Computer Science. Interested in process control when working for VALCO, Ghana [Kaiser Aluminum, USA] he conducted this M.Ph. Electrical Engineering research. He retired early from IT/engineering, and specialized in IT Law in University of Edinburgh, Scotland.
Weitere Informationen
- Allgemeine Informationen
- GTIN 09786200300188
- Genre Mechanical Engineering
- Sprache Englisch
- Anzahl Seiten 228
- Herausgeber LAP LAMBERT Academic Publishing
- Größe H220mm x B150mm x T14mm
- Jahr 2022
- EAN 9786200300188
- Format Kartonierter Einband
- ISBN 6200300186
- Veröffentlichung 28.04.2022
- Titel Machine Learning in Aluminium Reduction
- Autor Kwaku Boadu
- Untertitel Adaptive Control of Alumina Concentration in the Hall-Hroult Cell Using Neural Network
- Gewicht 358g