普通小球藻在通风管式光生物反应器中生物质生产的预测模型

M. Mansouri
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引用次数: 11

摘要

本研究的目的是研究普通小球藻(Chlorella vulgaris)对CO2的生物固定和生物质生产的生长速度。采用Logistic、Gompertz、修正Gompertz、Baranyi、Morgan和Richards 6个数学生长模型对连续过程的生物量生产力进行了评价,并预测了细胞生长的滞后期(λ)、最大特定生长速率(μmax)和最大细胞浓度(Xmax)等参数。低均方根误差(RMSE)和高回归系数(R2)表明所采用的模型与实验数据拟合良好,足以描述生物质产量。采用统计学和生理显著性标准,认为Baranyi模型最适合量化生物量增长。该模型的生物学变量为μmax=0.0309 h−1,λ=100 h, Xmax=1.82 g/L。
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Predictive modeling of biomass production by Chlorella vulgaris in a draft-tube airlift photobioreactor
The objective of this study was to investigate the growth rate of Chlorella vulgaris for CO2 biofixation and biomass production. Six mathematical growth models (Logistic, Gompertz, modified Gompertz, Baranyi, Morgan and Richards) were used to evaluate the biomass productivity in continuous processes and to predict the following parameters of cell growth: lag phase duration (λ), maximum specific growth rate (μmax), and maximum cell concentration (Xmax). The low root-mean-square error (RMSE) and high regression coefficients (R2) indicated that the models employed were well fitted to the experiment data and it could be regarded as enough to describe biomass production. Using statistical and physiological significance criteria, the Baranyi model was considered the most appropriate for quantifying biomass growth. The biological variables of this model are as follows: μmax=0.0309 h−1, λ=100 h, and Xmax=1.82 g/L.
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