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The impulse response method for pear quality evaluation using a laser Doppler vibrometer

机译:用激光多普勒振动计评估梨品质的脉冲响应方法

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The impulse response method using a laser Doppler vibrometer (LDV) was performed to nondestructively measure pear quality. To get a wide range of texture and different freshness in pears, the experiment was conducted every other day during 7 days storage. Each pear was excited by a half-sine impulse signal, and an LDV was used to measure the response signal from the top of the pear. A fast Fourier transform algorithm was used to transform time domain signals to frequency domain signals. A total of 15 and 8 features were extracted from the time and frequency domain signals, respectively. Pear texture was measured by the puncture test. Maximum force (ME), flesh firmness (FF) and stiffness (Stif) were extracted from the force-deformation curve as texture indices. Different modeling methods, including the stepwise multiple linear regression (SMLR), back propagation neural network (BPNN), and principal component analysis-back propagation neural network (PCA-BPNN) methods, were used for quantitative analysis of pear texture. Best prediction results were obtained by the PCA-BPNN method, especially for predicting FF with correlation coefficient (r(p)) of 0.840 and root mean square error of prediction (RMSEP) of 0.959 N. The Fisher's discriminant analysis (FDA), BPNN, and PCA-BPNN methods were applied to qualitative analysis of pear freshness. Pears were categorized into 4 groups with different freshness according to the 4 test days. The best results were also obtained by the PCA-BPNN method, resulting in accuracy of 89.0% and 83.3% for calibration and validation, respectively. Experimental results showed that the impulse response method using an LDV is capable for evaluating pear texture and freshness. The proposed approach provides a way for rapid detection of pear quality to meet the requirement of on-line detection. (C) 2015 Elsevier Ltd. All rights reserved.
机译:进行了使用激光多普勒振动计(LDV)的脉冲响应方法来无损测量梨的质量。为了获得各种梨的质地和不同的新鲜度,该实验每隔一天进行一次,存放7天。每个梨都被一个半正弦脉冲信号激励,并且使用LDV测量来自梨顶部的响应信号。快速傅立叶变换算法用于将时域信号转换为频域信号。分别从时域和频域信号中提取了总共15个和8个特征。通过穿刺试验测量梨的质地。从力-变形曲线中提取最大力(ME),果肉硬度(FF)和刚度(Stif)作为质地指标。使用不同的建模方法,包括逐步多元线性回归(SMLR),反向传播神经网络(BPNN)和主成分分析-反向传播神经网络(PCA-BPNN)方法,对梨的质地进行定量分析。通过PCA-BPNN方法可获得最佳的预测结果,尤其是对于以相关系数(r(p))为0.840和预测均方根误差(RMSEP)为0.959 N的FF进行预测的情况。Fisher判别分析(FDA),BPNN ,PCA-BPNN方法用于梨鲜度的定性分析。根据4个测试日,将梨分为4个具有不同新鲜度的组。通过PCA-BPNN方法也获得了最佳结果,校准和验证的准确度分别为89.0%和83.3%。实验结果表明,使用LDV的脉冲响应方法能够评估梨的质地和新鲜度。所提出的方法提供了一种快速检测梨品质的方法,可以满足在线检测的要求。 (C)2015 Elsevier Ltd.保留所有权利。

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