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A nondestructive testing method for soluble solid content in Korla fragrant pears based on electrical properties and artificial neural network

机译:基于电气性能和人工神经网络的Korla芳香梨可溶性固体含量的无损检测方法

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The detection of soluble solid content in Korla fragrant pear is a destructive and time‐consuming endeavor. In effort to remedy this, a nondestructive testing method based on electrical properties and artificial neural network was established in this study. Specifically, variations of electrical properties (e.g., equivalent parallel capacitance, quality factor, loss factor, equivalent parallel resistance, complex impedance, and equivalent parallel inductance) of Korla fragrant pears with accumulated temperature were tested using a workbench developed by ourselves. After that the characteristic variables of electrical properties were constructed by principal component analysis (PCA). In addition, three models were constructed to predict SSC in Korla fragrant pears based on the characteristic variables: general regression neural network (GRNN), back‐propagation neural network (BPNN), and adaptive network fuzzy inference system (ANFIS). The results indicated that the GRNN model has the best prediction effects of SSC (R2?=?0.9743, RMSE?=?0.2584), superior to that of the BPNN and ANFIS models. Results facilitate a successful, alternative application for rapid assessment of SSC of the maturation stage Korla fragrant pear.
机译:在Korla香梨中可溶性固体含量的检测是一种破坏性和耗时的努力。努力解决这一点,在本研究中建立了基于电学和人工神经网络的非破坏性测试方法。具体地,使用自己的工作台测试Korla香梨的电性能(例如,等效平行电容,质量因数,质量因数,等效并联电阻,复杂的并联电阻,复杂的并联电阻,等效并联电感)。之后通过主成分分析(PCA)构建电性能的特征变量。此外,基于特征变量,构建了三种模型以预测Korla香梨中的SSC:一般回归神经网络(GRNN),反向传播神经网络(BPNN)和自适应网络模糊推理系统(ANFIS)。结果表明,GRNN模型具有SSC的最佳预测效果(R2?= 0.9743,RMSE?= 0.2584),优于BPNN和ANFIS模型。结果促进了成功,替代申请,用于快速评估成熟阶段Korla香梨SSC。

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