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Application of fault identification algorithms for sensors based on data reconstruction in fermentation process

机译:基于数据重构的传感器故障识别算法在发酵过程中的应用

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A fault identification algorithm of principal component space (PCS) information reconstruction based on T2 statistic have been proposed aiming at the defect of difficulty to effectively identify the fault, that qualitative diagnosis can only be implemented using traditional variable contribution rate and the data reconstruction method based on Q statistic ignores the fault information of PCS. The reconstruction value, T2 statistic and its control limits are obtained on the basis of defining fault subspace and using the normal process data to calculate reconstructed index and reconstructing the fault data in PCS. In this paper the lincomycin fermentation process is studied and the sensor faults are set and identified by statistical model based on PCA. The results have shown that the method used has good capability in diagnosis and recognizability.
机译:针对难以有效识别故障的缺陷,提出了一种基于T 2 统计的主成分空间信息重构故障识别算法,只能利用传统变量进行定性诊断。贡献率和基于Q统计量的数据重建方法忽略了PCS的故障信息。在定义故障子空间的基础上,利用正常过程数据计算重建指数T 2 的统计量及其控制极限,得到PCS中的重建指标。本文研究了林可霉素的发酵过程,并通过基于PCA的统计模型对传感器故障进行设置和识别。结果表明,所使用的方法具有良好的诊断和识别能力。

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