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首页> 外文期刊>Biochemical Engineering Journal >Digital image analysis and fractal-based kinetic modelling for fungal biomass determination in solid-state fermentation
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Digital image analysis and fractal-based kinetic modelling for fungal biomass determination in solid-state fermentation

机译:用于固态发酵中真菌生物量测定的数字图像分析和基于分形的动力学模型

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摘要

This work deals with a non-destructive method involving image analysis and kinetic modelling to determine fungal biomass in solid-state fermentation (SSF). Fractal dimension, quantifying the morphological changes of mycelia-matrix from culture images, showed correlations with Penicillium decumbens biomass on lignocelluloses substrates. Kinetic models were constructed to describe the variation of fractal dimension of mycelia-matrix along with fungal growth. Fermentations on straw substrates with different particle lengths and moisture contents were carried out to validate the proposed models. Relative errors of the models were 0.541 -5.221% for biomass and 0.454-3.885%o for fractal dimension. Parameters S and η in fractal kinetic models, which indicated the variation rates of fractal dimension, presented significant specificity for the specific growth rate of P. decumbens, thus can be used to predict fungal biomass in SSF. With advantages of low cost, reasonable accuracy and well adjustability, the coupling of dynamic imaging and computational modelling show potential in the on-line determination of fungal biomass in SSF.
机译:这项工作涉及一种非破坏性方法,包括图像分析和动力学建模,以确定固态发酵(SSF)中的真菌生物量。分形维数,从培养图像量化菌丝体基质的形态变化,显示与木质纤维素底物上的枯草青霉生物量相关。建立动力学模型来描述菌丝基质的分形维数随真菌生长的变化。在具有不同颗粒长度和水分含量的稻草基质上进行发酵以验证所提出的模型。该模型的相对误差为生物量为0.541 -5.221%,分形维数为0.454-3.885%。分形动力学模型中的参数S和η表示分形维数的变化率,对角质对虾的特定生长速率具有明显的特异性,因此可用于预测SSF中的真菌生物量。具有低成本,合理的准确性和良好的可调整性的优势,动态成像和计算模型的耦合显示了在线测定SSF中真菌生物量的潜力。

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