Title :
Bioethanol industrial production optimization
Author :
Ruiz Castello, Pablo ; Montes Ponce de Leon, Julio ; Sanz Bobi, Miguel Angel
Author_Institution :
Inst. de Investig. Tecnol., Univ. Pontificia Comillas, Madrid, Spain
Abstract :
Bioethanol production faces control challenges due to its biological alive-process nature and due to the scaling up from the well characterized environment of laboratories to the less controlled industrial facilities. Although second generation technologies -aiming to process lignocellulosic feedstock- are already approaching the market phase, much progress has been done in the first generation technologies, based on starch sacarification. Nonetheless, still room for improvement is left to exploit first generation knowledge embedded in the data gathered during years of continuous operation. In this paper ongoing research for an extensive analysis of such operational data and the possibilities lying in its modeling using Artificial Intelligence (AI) techniques to better explain deviations in the performance of the process is shown. Preliminary results show great possibilities to enlighten the still-grey areas in starch fermentation, while paving the way to extensive application also on second generation technologies.
Keywords :
artificial intelligence; bioenergy conversion; biofuel; optimisation; power engineering computing; power generation control; artificial intelligence technique; bioethanol industrial production optimization; lignocellulosic feedstock; operational data; starch fermentation; starch sacarification; Data models; Ethanol; Real-time systems; Substrates; Sugar; Sugar industry; Bioetahnol; artificial intellingece; fault deteccion; fermentation; renewable energy;
Conference_Titel :
Renewable Energy Research and Applications (ICRERA), 2013 International Conference on
Conference_Location :
Madrid
DOI :
10.1109/ICRERA.2013.6749885