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Online Fault Detection in Virginiamycin Production

机译:弗吉尼亚霉素生产中的在线故障检测

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It is difficult to measure online substrate, biomass, and product concentrations, due to the lack of reliable sensors in the fermentation. In view of this, the pH, dissolved oxygen (DO) concentration, and CO_2 production, among others, are usually utilized in bioprocess analysis. With these easily obtained online measurements, it is possible to reconstruct the evolution of the state variables or estimate the bioprocess parameters. Neural networks, which rely on the efficacious nonlinear multivariate analysis capacity and its favorable black-box feature, are most widely applied to bioprocess analysis and fault detection. In this study, an artificial autoassociative neural network (AANN) has been used online to detect deviations from normal antibiotic production fermentation with ordinary state variables. To improve the efficiency of extracting hidden information contained in multidimensional state variables, and finally to render the AANN adequate for fault detection, we have explored the following methods: preprocessing of the data that involved normalizing the training data of the AANN; evaluation of the data that involved assessing the output of the AANN; and selection of state variables. A method for fault detection for virginiamycin production by Streptomyces virginiae was developed.
机译:由于发酵中缺乏可靠的传感器,难以测量在线衬底,生物质和产品浓度。鉴于此,通常在生物过程分析中使用pH,溶解的氧(DO)浓度和CO_2产生。通过这些容易获得在线测量,可以重建状态变量的演变或估计生物过程参数。神经网络依赖于有效的非线性多变量分析能力及其有利的黑盒功能,最广泛应用于生物过程分析和故障检测。在这项研究中,人工自夸神经网络(AANN)已被用于检测与普通状态变量的正常抗生素生产发酵的偏差。为了提高提取多维状态变量中包含的隐藏信息的效率,最后要使AANN充足的故障检测,我们探讨了以下方法:预处理涉及标准化AANN培训数据的数据;评估涉及评估AANN的产出的数据;和选择状态变量。开发了一种用于弗吉尼亚州弗吉尼亚州弗吉尼亚霉素的故障检测方法。

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