Start-up and recovery of a biogas-reactor using a hierarchical neural network-based control tool

被引:30
作者
Holubar, P [1 ]
Zani, L [1 ]
Hager, M [1 ]
Fröchl, W [1 ]
Radak, Z [1 ]
Braun, R [1 ]
机构
[1] Boku Univ Nat Resources Agr Sci, Inst Appl Microbiol, A-1190 Vienna, Austria
关键词
neural networks; modeling; decision support system; anaerobic digestion; fermentation;
D O I
10.1002/jctb.854
中图分类号
Q81 [生物工程学(生物技术)]; Q93 [微生物学];
学科分类号
071005 ; 0836 ; 090102 ; 100705 ;
摘要
Due to its intricate internal biological structure the process of anaerobic digestion is difficult to control. The aim of any applied process control is to maximize methane production and minimize the chemical oxygen demand of the effluent and surplus sludge production. Of special interest is the start-up and adaptation phase of the bioreactor and the recovery of the biocoenose after a toxic event. It is shown that the anaerobic digestion of surplus sludge can be effectively modeled by means of a hierarchical system of neural networks and a prediction of biogas production and composition can be made several time-steps in advance. Thus it was possible to optimally control the loading rate during the start-up of a non-adapted system and to recover an anaerobic reactor after a period of heavy organic overload. During the controlled period an optimal feeding profile that allowed a minimum loading rate of 6kg COD m(-3) d(-1) to be maintained was found. Maximum loading rates higher than 12 kg COD m(-3) d(-1) were often reached without destabilizing the system. The control strategy resulted simultaneously in a high level of gas production of about 3m(biogas)(3)biogas m(reactor)(-3) and a methane content in the biogas of about 70%. To rea visualize the effects of the control strategy on the reactor's operational space the data were processed using a data-mining program based on Kohonen Self-Organizing Maps. (C) 2003 Society of Chemical Industry.
引用
收藏
页码:847 / 854
页数:10
相关论文
共 19 条
[11]   Neural networks as 'software sensors' in enzyme production [J].
Linko, S ;
Luopa, J ;
Zhu, YH .
JOURNAL OF BIOTECHNOLOGY, 1997, 52 (03) :257-266
[12]  
*MATHW INC, 2001, NEUR NETW TOOLB US M
[13]   Fuzzy control of disturbances in a wastewater treatment process [J].
Muller, A ;
Marsili-Libelli, S ;
Aivasidis, A ;
Lloyd, T ;
Kroner, S ;
Wandrey, C .
WATER RESEARCH, 1997, 31 (12) :3157-3167
[14]   Influence of C:N ratio on the start-up of upflow anaerobic filter reactors [J].
Puñal, A ;
Trevisan, M ;
Rozzi, A ;
Lema, JM .
WATER RESEARCH, 2000, 34 (09) :2614-2619
[15]  
RENARD P, 1990, THESIS U CATHOLIQUE
[16]   BIOPROCESS OPTIMIZATION AND CONTROL - APPLICATION OF HYBRID MODELING [J].
SCHUBERT, J ;
SIMUTIS, R ;
DORS, M ;
HAVLIK, I ;
LUBBERT, A .
JOURNAL OF BIOTECHNOLOGY, 1994, 35 (01) :51-68
[17]   Dynamic modeling of mesophilic anaerobic digestion of animal waste [J].
Simeonov, I ;
Momchev, V ;
Grancharov, D .
WATER RESEARCH, 1996, 30 (05) :1087-1094
[18]  
Speece R.E., 1996, Anaerobic Biotechnology and Odor/Corrosion Control for Municipalities and Industries
[19]  
Zupan J., 1993, NEURAL NETWORKS CHEM