刘燕德, 吴明明, 孙旭东, 朱丹宁, 李轶凡, 张智诚. 黄桃表面缺陷和可溶性固形物光谱同时在线检测[J]. 农业工程学报, 2016, 32(6): 289-295. DOI: 10.11975/j.issn.1002-6819.2016.06.040
    引用本文: 刘燕德, 吴明明, 孙旭东, 朱丹宁, 李轶凡, 张智诚. 黄桃表面缺陷和可溶性固形物光谱同时在线检测[J]. 农业工程学报, 2016, 32(6): 289-295. DOI: 10.11975/j.issn.1002-6819.2016.06.040
    Liu Yande, Wu Mingming, Sun Xudong, Zhu Dangning, Li Yifan, Zhang Zhicheng. Simultaneous detection of surface deficiency and soluble solids content for Amygdalus persica by online visible near infrared transmittance spectroscopy[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2016, 32(6): 289-295. DOI: 10.11975/j.issn.1002-6819.2016.06.040
    Citation: Liu Yande, Wu Mingming, Sun Xudong, Zhu Dangning, Li Yifan, Zhang Zhicheng. Simultaneous detection of surface deficiency and soluble solids content for Amygdalus persica by online visible near infrared transmittance spectroscopy[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2016, 32(6): 289-295. DOI: 10.11975/j.issn.1002-6819.2016.06.040

    黄桃表面缺陷和可溶性固形物光谱同时在线检测

    Simultaneous detection of surface deficiency and soluble solids content for Amygdalus persica by online visible near infrared transmittance spectroscopy

    • 摘要: 表面缺陷和可溶性固形物是评价黄桃品质的重要指标,采用可见/近红外漫透射光谱技术,探讨黄桃表面缺陷与可溶性固形物同时在线检测的可行性。在运动速度为5个/s、积分时间100 ms、光照强度1 000 W的条件下采集黄桃表面缺陷果与正常果的近红外漫透射光谱。对比分析了同一个黄桃样品损伤前后的光谱特征,建立了黄桃的最小二乘支持向相机判别模型与偏最小二乘判别模型。同时建立了黄桃可溶性固形物偏最小二乘回归模型并采用连续投影算法对模型进行优化,研究了表面缺陷果对黄桃可溶性固形物检测模型精度的影响,最终实现了黄桃表面缺陷与可溶性固形物同时在线检测。采用未参与建模的样品来评价模型的在线分选的准确性,其中表面缺陷果的正确判断率为100%,可溶性固形物分选准确率达到93%。试验结果表明:黄桃表面缺陷与可溶性固形物同时在线检测是可行的,研究可为黄桃在线分选提供技术参考和理论依据。

       

      Abstract: Surface deficiency and soluble solid content (SSC) are important indexes for evaluating the quality of Amygdalus persica.The feasibility was investigated for detecting surface deficiency and SSC of intact Amygdalus persica simultaneously by online visible near infrared(visible NIR) transmittance spectroscopy.Ten tungsten halogen lamps were installed in a sorting line.The power of each lamp was 100 watt.The light sources were illuminated from both sides of the production line, and the detector received light from the bottom of the fruit cup.The spectrum of each sample was recorded automatically by using the hardware trigger mode.The index plate and driving gear were mounted on the same shaft.The location of the index plate′s tooth was matched with the location of the fruit cup.Hall sensor was placed at a height of 2 mm above the tooth of the index plate.When the index plate turned one tooth, a Hall sensor sent a 3.5 V high frequency signal to trigger spectrometer to save one spectrum.The spectra were recorded with the integration time of 100 ms in the wavelength range of 550~900 nm when the samples were conveyed at the speed of five samples per second.The spectra of the same sample before and after damage were analyzed for investigation of the influence of the damage tissue within a peach affected the spectral content of the light transmitted through it.The spectral intensity of the damage was lower than the healthy ones for the damage issue affected the penetration of the light inside the fruit.Three quality discrimination methods of principle component analysis(PCA), least squares support vector machine(LS SVM) and partial least squares discrimination analysis(PLSDA) were used to identify the damage samples.The input vector and parameters of kernel function of LS SVM model were optimized by two step grid search method.The PLSDA model yielded the best results of accuracy rate of 100% compared to PCA or LS SVM methods.Considering the robustness of the partial least squares(PLS) regression model, two groups of healthy samples and the combinations of healthy samples and damage ones.Then the PLS regression model was developed for predicting SSC values.The performance of the PLS regression model was improved with the stand error of prediction(SEP) of 0.71% when the damage samples were removed out.The effective spectral variables were chosen by successive projections algorithm(SPA) method for improving the robustness of the PLS regression model.It was also investigated that the influence of the damage sample to the predictive ability of the PLS regression model.Therefore a new strategy was proposed for detection of surface deficiency and SSC for intact Amygdalus persica simultaneously by online visible NIR transmittance spectroscopy.The new samples, which were not used in the calibration, were used to access the abilities of recognizing the damage samples and predicting SSC of intact Amygdalus persica.The accuracy rate was 100% for identifying surface deficiency samples, and the SEP was 0.71% for predicting SSC.The accuracy of sorting grade was 93% according to the SSC values.The results showed that simultaneous detection of surface deficiency and SSC were feasible by visible NIR transmittance spectroscopy.

       

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