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影响电子舌长期稳定性的因素及改进漂移校正方法的应用。

Factors Influencing the Long-Term Stability of Electronic Tongue and Application of Improved Drift Correction Methods.

机构信息

Department of Physics and Control, Faculty of Food Science, Szent István University, Somlói út 14-16, H-1118 Budapest, Hungary.

Institute of Pharmacology, Medical University of Vienna, 1090 Vienna, Austria.

出版信息

Biosensors (Basel). 2020 Jul 7;10(7):74. doi: 10.3390/bios10070074.

Abstract

Temperature, memory effect, and cross-contamination are suspected to contribute to drift in electronic tongue (e-tongue) sensors, therefore drift corrections are required. This paper aimed to assess the disturbing effects on the sensor signals during measurement with an Alpha Astree e-tongue and to develop drift correction techniques. Apple juice samples were measured at different temperatures. pH change of apple juice samples was measured to assess cross-contamination. Different sequential orders of model solutions and apple juice samples were applied to evaluate the memory effect. Model solutions corresponding to basic tastes and commercial apple juice samples were measured for six consecutive weeks to model drift of the sensor signals. Result showed that temperature, cross-contamination, and memory effect influenced the sensor signals. Three drift correction methods: additive drift correction based on all samples, additive drift correction based on reference samples, and multi sensor linear correction, were developed and compared to the component correction in literature through linear discriminant analysis (LDA). LDA analysis showed all the four methods were effective in reducing sensor drift in long-term measurements but the additive correction relative to the whole sample set gave the best results. The results could be explored for long-term measurements with the e-tongue.

摘要

温度、记忆效应和交叉污染被怀疑是导致电子舌(e-tongue)传感器漂移的原因,因此需要进行漂移校正。本文旨在评估 Alpha Astree e-tongue 在测量过程中传感器信号受到的干扰影响,并开发漂移校正技术。测量了不同温度下的苹果汁样品。测量了苹果汁样品的 pH 值变化,以评估交叉污染。应用不同的模型溶液和苹果汁样品的顺序来评估记忆效应。测量了对应基本味觉的模型溶液和商业苹果汁样品,以模拟传感器信号的漂移,共进行了六周。结果表明,温度、交叉污染和记忆效应对传感器信号有影响。开发了三种漂移校正方法:基于所有样品的加性漂移校正、基于参考样品的加性漂移校正和多传感器线性校正,并通过线性判别分析(LDA)与文献中的分量校正进行比较。LDA 分析表明,所有四种方法都能有效减少长期测量中的传感器漂移,但相对于整个样本集的加性校正效果最好。这些结果可用于电子舌的长期测量。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/474d/7400105/1c33c66c9fb7/biosensors-10-00074-g001.jpg

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