Torrecilla José S, Mena Maria L, Yáñez-Sedeño Paloma, García Julián
Department of Chemical Engineering, Complutense University of Madrid, 28040 Madrid, Spain.
J Agric Food Chem. 2007 Sep 5;55(18):7418-26. doi: 10.1021/jf0703351. Epub 2007 Aug 8.
In this paper is considered a new computerized approach to the determination of concentrations of phenolic compounds (caffeic acid and catechol). An integrated artificial neural network (ANN)/laccase biosensor is designed. The data collected (current signals) from amperometric detection of the laccase biosensor were transferred into an ANN trained computer for modeling and prediction of output. Such an integrated ANN/laccase biosensor system is capable of the prediction of caffeic acid and catechol concentrations of olive oil mill wastewater, based on the created models and patterns, without any previous knowledge of this phenomenon. The predicted results using the ANN were compared with the amperometric detection of phenolic compounds obtained at a laccase biosensor in olive oil wastewater of the 2004-2005 harvest season. The difference between the real and the predicted values was <0.5%. biosensor; olive oil mill wastewater; chemical analysis; phenolic compounds.
本文考虑了一种用于测定酚类化合物(咖啡酸和儿茶酚)浓度的新型计算机化方法。设计了一种集成人工神经网络(ANN)/漆酶生物传感器。从漆酶生物传感器的安培检测收集的数据(电流信号)被传输到经过训练的ANN计算机中,用于输出的建模和预测。这种集成的ANN/漆酶生物传感器系统能够基于创建的模型和模式预测橄榄油厂废水中咖啡酸和儿茶酚的浓度,而无需事先了解此现象。将使用ANN的预测结果与在2004 - 2005收获季节橄榄油废水中漆酶生物传感器获得的酚类化合物的安培检测结果进行比较。实际值与预测值之间的差异<0.5%。生物传感器;橄榄油厂废水;化学分析;酚类化合物。