Wang N S, Stephanopoulos G
Chemical Engineering Department, California Institute of Technology, Pasadena, California 91125, USA.
Biotechnol Bioeng. 1983 Sep;25(9):2177-208. doi: 10.1002/bit.260250906.
A systematic method is presented which is capable of both detecting the presence of grossly biased measurement errors and locating the source of these errors in a bioreactor through statistical hypothesis testing. Equality constraints derived from material and energy balances are employed for the detection of data inconsistencies and for the subsequent identification of the suspect measurements by a process of data analysis and rectification. Maximum likelihood techniques are applied to the estimation of the states and parameters of the bioreactor after the suspect measurements have been eliminated. The level of significance is specified by the experimenter while the measurments are assumed to be randomly, normally distributed with zero mean and known variances. Two different approaches of data analysis, batchwise and sequential, that lead to a consistent set of adjustments on the experimental values, are discussed. Several examples based on the fermentation data taken from literature sources are presented to demonstrate the utility of the proposed method, and one set of data is solved numerically to illustrate the computational aspect of the algorithm.
本文提出了一种系统方法,该方法能够通过统计假设检验来检测生物反应器中是否存在严重偏差的测量误差,并确定这些误差的来源。利用物料和能量平衡导出的等式约束来检测数据不一致性,并通过数据分析和校正过程随后识别可疑测量值。在消除可疑测量值之后,应用最大似然技术来估计生物反应器的状态和参数。显著性水平由实验者指定,同时假设测量值是随机的、正态分布的,均值为零且方差已知。讨论了两种不同的数据分析方法,即分批法和序贯法,它们会对实验值进行一组一致的调整。给出了几个基于文献来源的发酵数据的例子,以证明所提出方法的实用性,并对一组数据进行数值求解以说明算法的计算方面。