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Monitoring of Cell Concentration during Saccharomyces cerevisiae Culture by a Color Sensor: Optimization of Feature Sensor Using ACO

机译:通过颜色传感器监测酿酒酵母培养过程中的细胞浓度:使用ACO优化特征传感器

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摘要

The odor information produced in Saccharomyces cerevisiae culture is one of the important characteristics of yeast growth status. This work innovatively presents the quantitative monitoring of cell concentration during the yeast culture process using a homemade color sensor. First, a color sensor array, which could visually represent the odor changes produced during the yeast culture process, was developed using eleven porphyrins and one pH indicator. Second, odor information of the culture substrate was obtained during the process using the homemade color sensor. Next, color components, which came from different color sensitive spots, were extracted first and then optimized using the ant colony optimization (ACO) algorithm. Finally, the back propagation neural network (BPNN) model was developed using the optimized feature color components for quantitative monitoring of cell concentration. Results demonstrated that BPNN models, which were developed using two color components from FTPPFeCl (component B) and MTPPTE (component B), can obtain better results on the basis of both the comprehensive consideration of the model performance and the economic benefit. In the validation set, the average of determination coefficient RP2 was 0.8837 and the variance was 0.0725, while the average of root mean square error of prediction (RMSEP) was 1.0033 and the variance was 0.1452. The overall results sufficiently demonstrate that the optimized sensor array can satisfy the monitoring accuracy and stability of the cell concentration in the process of yeast culture.
机译:酿酒酵母培养物中产生的气味信息是酵母生长状态的重要特征之一。这项工作创新地提出了使用自制的颜色传感器在酵母培养过程中细胞浓度的定量监测。首先,使用11种卟啉和一种pH指示剂开发了一种颜色传感器阵列,该阵列可以直观地代表酵母培养过程中产生的气味变化。其次,在该过程中使用自制的颜色传感器获得了培养基质的气味信息。接下来,首先提取来自不同颜色敏感点的颜色成分,然后使用蚁群优化(ACO)算法对其进行优化。最后,使用优化的特征颜色分量开发了反向传播神经网络(BPNN)模型,用于定量监测细胞浓度。结果表明,在综合考虑模型性能和经济效益的基础上,使用FTPPFeCl(组分B)和MTPPTE(组分B)两种颜色组分开发的BPNN模型可以获得更好的结果。在验证集中,确定系数的平均值 R P 2 < /平均值为0.8837,方差为0.0725,而预测均方根误差的平均值(RMSEP)为1.0033,方差为0.1452。总体结果充分表明,优化的传感器阵列可以满足酵母培养过程中细胞浓度的监测精度和稳定性。

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