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首页> 外文期刊>Journal of industrial microbiology & biotechnology >A simulation study comparing the impact of experimental error on the performance of experimental designs and artificial neural networks used for process screening
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A simulation study comparing the impact of experimental error on the performance of experimental designs and artificial neural networks used for process screening

机译:模拟研究比较了实验误差对实验设计和用于过程筛选的人工神经网络性能的影响

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摘要

Many variables and their interactions can affect a biotechnological process. Testing a large number of variables and all their possible interactions is a cumbersome task and its cost can be prohibitive. Several screening strategies, with a relatively low number of experiments, can be used to find which variables have the largest impact on the process and estimate the magnitude of their effect. One approach for process screening is the use of experimental designs, among which fractional factorial and Plackett-Burman designs are frequent choices. Other screening strategies involve the use of artificial neural networks (ANNs). The advantage of ANNs is that they have fewer assumptions than experimental designs, but they render black-box models (i.e., little information can be extracted about the process mechanics). In this paper, we simulate a biotechnological process (fed-batch growth of baker's yeast) to analyze and compare the effect of random experimental errors of different magnitudes and statistical distributions on experimental designs and ANNs. Except for the situation in which the error has a normal distribution and the standard deviation is constant, it was not possible to determine a clear-cut rule for favoring one screening strategy over the other. Instead, we found that the data can be better analyzed using both strategies simultaneously.
机译:许多变量及其相互作用会影响生物技术过程。测试大量变量及其所有可能的交互是一项繁琐的任务,其成本可能令人望而却步。可以使用几种筛选策略(相对较少的实验)来确定哪些变量对过程的影响最大,并估算其影响的程度。一种用于过程筛选的方法是使用实​​验设计,其中分数阶因子设计和Plackett-Burman设计是常见的选择。其他筛选策略包括使用人工神经网络(ANN)。人工神经网络的优势在于,与实验设计相比,它们的假设要少一些,但它们可以绘制黑盒模型(即,几乎无法提取有关过程力学的信息)。在本文中,我们模拟了一个生物技术过程(面包酵母的补料分批生长),以分析和比较不同幅度和统计分布的随机实验误差对实验设计和人工神经网络的影响。除了误差具有正态分布且标准偏差恒定的情况之外,无法确定明确的规则以偏爱一种筛选策略。相反,我们发现同时使用两种策略可以更好地分析数据。

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