| Literature DB >> 26121186 |
Mingyu Wang1, Lijuan Han1, Shasha Liu1, Xuebing Zhao2, Jinghua Yang3,4, Soh Kheang Loh5, Xiaomin Sun6, Chenxi Zhang7, Xu Fang8.
Abstract
Renewable energy from lignocellulosic biomass has been deemed an alternative to depleting fossil fuels. In order to improve this technology, we aim to develop robust mathematical models for the enzymatic lignocellulose degradation process. By analyzing 96 groups of previously published and newly obtained lignocellulose saccharification results and fitting them to Weibull distribution, we discovered Weibull statistics can accurately predict lignocellulose saccharification data, regardless of the type of substrates, enzymes and saccharification conditions. A mathematical model for enzymatic lignocellulose degradation was subsequently constructed based on Weibull statistics. Further analysis of the mathematical structure of the model and experimental saccharification data showed the significance of the two parameters in this model. In particular, the λ value, defined the characteristic time, represents the overall performance of the saccharification system. This suggestion was further supported by statistical analysis of experimental saccharification data and analysis of the glucose production levels when λ and n values change. In conclusion, the constructed Weibull statistics-based model can accurately predict lignocellulose hydrolysis behavior and we can use the λ parameter to assess the overall performance of enzymatic lignocellulose degradation. Advantages and potential applications of the model and the λ value in saccharification performance assessment were discussed.Entities:
Keywords: Cellulase; Delignined corncob residue; Empty fruit bunch; Lignocelluloses saccharification model; Weibull statistics
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Year: 2015 PMID: 26121186 DOI: 10.1002/biot.201400723
Source DB: PubMed Journal: Biotechnol J ISSN: 1860-6768 Impact factor: 4.677