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Near infrared spectroscopy and artificial neural network to characterise olive fruit and oil online for process optimisation

机译:近红外光谱和人工神经网络可在线表征橄榄果和油脂,以优化工艺

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A sensor-software based on an artificial neural network (SS-ANN) was designed for real-time characterisation of olive fruit (pulp/stone ratio, extractability index, moisture and oil contents) and the potential characteristics of the extracted oil (free acidity, peroxide index, K-232 and K-270, pigments and polyphenols) in olive paste prior to the kneading step. These predictions were achieved by measuring variables related to olive fruit at the crushing stage, including the type of hammer mill (single grid, double grid and Listello), sieve diameter (4 mm, 5mm, 6mm and 7mm), hammer rotation speed (from 2000 rpm to 3000 rpm), temperature before crushing and mill room temperature. These were related to the near infrared (NIR) spectra from online scanned freshly milled olive paste in the malaxer with data pretreated by either the moving average or wavelet transform technique. The networks obtained showed good predictive capacity for all the parameters examined. Based on the root mean square error of prediction (RMSEP), residual predictive deviation (RPM and coefficient of determination of validation (r(2)), the models that used the wavelet preprocessing procedure were more accurate than those that used the moving average. As examples, for moisture and polyphenols, RMSEP values were 1.79% and 87.80mg kg(-1), and 1.46% and 61.50 mg kg(-1), respectively for the moving average and wavelet transform. Similar results were found for the other parameters. In conclusion, these results confirm the feasibility of SS-ANN as a tool for optimising the olive oil elaboration process.
机译:设计了基于人工神经网络(SS-ANN)的传感器软件,用于实时表征橄榄果(果肉/石块比,提取率指数,水分和油含量)以及提取油的潜在特性(游离酸度) ,橄榄糊中的过氧化物指数,K-232和K-270,颜料和多酚)。这些预测是通过在压榨阶段测量与橄榄果相关的变量来实现的,包括锤式粉碎机的类型(单筛,双筛和李斯特洛),筛直径(4 mm,5mm,6mm和7mm),锤转速(从2000 rpm至3000 rpm),破碎前的温度和研磨机的室温。这些与来自疟原虫在线扫描的新鲜研磨的橄榄糊的近红外(NIR)光谱有关,该数据通过移动平均或小波变换技术进行了预处理。获得的网络对所检查的所有参数均显示出良好的预测能力。基于预测的均方根误差(RMSEP),残余预测偏差(RPM和验证的确定系数(r(2)),使用小波预处理程序的模型比使用移动平均值的模型更准确。例如,对于水分和多酚,移动平均和小波变换的RMSEP值分别为1.79%和87.80mg kg(-1),分别为1.46%和61.50 mg kg(-1)。总之,这些结果证实了SS-ANN作为优化橄榄油精制过程的工具的可行性。

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