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Moisture Content Prediction of Dried Longan Aril from Dielectric Constant Using Multilayer Perceptrons and Support Vector Regression | Science Publications

机译:多层感知器和支持向量回归法从介电常数预测龙眼假种干的含水量科学出版物

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> Problem statement: Estimation of moisture contents of dried food products from their dielectric constants was an important step in moisture measurement systems. The regression models that provide good prediction performance are desirable. Approach: The Multilayer Perceptrons (MLP) and Support Vector Regression (SVR) were applied in this research to predict the moisture contents of dried longan arils from their dielectric constants. The data set was collected from 1500 samples of dried longan aril with five different moisture contents of 10, 14, 18, 22 and 25% Wet basis (Wb.) Dielectric constant of dried longan aril was measured by using our previously proposed electrical capacitance-based system. The results from the MLP and SVR models were compared to that from the linear regression and polynomial regression models. To take into account the generalization of the models, the four-fold cross validation was applied. Results: For the training sets, the average mean absolute errors over three bulk densities of 1.30, 1.45 and 1.60 g cm-3 were 1.7578, 0.6157, 0.3812, 0.3113, 0.0103 and 0.0044% Wb for the linear regression, second-, third-, fourth-order polynomial regression, MLP and SVR models, respectively. For the validation sets, the average mean absolute errors over the three bulk densities were 1.7616, 0.6192, 0.3844, 0.3146, 0.0126 and 0.0093% Wb for the linear regression, 2nd, 3rd and 4th-order polynomial regression, MLP and SVR models, respectively. Conclusion: The regression models based on MLP and SVR yielded better performances than the models based on linear regression and polynomial regression on both training and validation sets. The models based on MLP and SVR also provided robustness to the variation of bulk density. Not only for dried longan aril, the proposed models can also be adapted and applied to other materials or dried food products.
机译: > 问题陈述:从干燥食品的介电常数估算水分含量是水分测量系统中的重要一步。提供良好预测性能的回归模型是可取的。 方法:本研究采用多层感知器(MLP)和支持向量回归(SVR)来从干龙眼假种皮的介电常数预测其含水量。该数据集是从1500个干龙眼假种皮样品中收集的,其中五个不同的水分含量分别为10、14、18、22和25%湿基(Wb。)。基于系统。将MLP和SVR模型的结果与线性回归和多项式回归模型的结果进行比较。为了考虑模型的一般性,应用了四重交叉验证。 结果:对于训练集,在1.30、1.45和1.60 g cm -3 的三个堆积密度下,平均平均绝对误差为1.7578、0.6157、0.3812、0.3113、0.0103线性回归,二阶,三阶,四阶多项式回归,MLP和SVR模型分别为0.0044%Wb和。对于验证集,线性回归,二阶,三阶和四阶多项式回归,MLP和SVR模型在三个堆积密度下的平均平均绝对误差分别为1.7616、0.6192、0.3844、0.3146、0.0126和0.0093%Wb。 。 结论:在训练集和验证集上,基于MLP和SVR的回归模型比基于线性回归和多项式回归的模型具有更好的性能。基于MLP和SVR的模型还为体积密度的变化提供了鲁棒性。所提出的模型不仅适用于龙眼假种干,还可以改编并应用于其他材料或干食品。

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