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首页> 外文期刊>Food Science & Nutrition >Nondestructive measurement of kiwifruit firmness, soluble solid content (SSC), titratable acidity (TA), and sensory quality by vibration spectrum
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Nondestructive measurement of kiwifruit firmness, soluble solid content (SSC), titratable acidity (TA), and sensory quality by vibration spectrum

机译:基韦氏固体性,可溶性固体含量(SSC),可滴定酸度(TA)和感觉质量的无损测量

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摘要

Maturity is a key attribute to evaluate the quality and acceptability of fruit products. In this study, the impact method was used for nondestructive measurement of kiwifruit maturity. The fruit was vertically dropped onto an impact plate, and an accelerometer was used to measure the response signal. Then, fruit firmness, soluble solid content (SSC), titratable acidity (TA), and sensory scores were measured to determine the kiwifruit maturity. In addition, different modeling methods were proposed for data analysis. The results showed that the optimized prediction results were obtained by the principal component analysis–back‐propagation neural network (PCA‐BPNN) method for both quantitative and qualitative analysis. The optimized correlation coefficient between prediction and actual values (rp) and root mean square error of prediction (RESEP) for firmness, SSC, TA, and sensory score were 0.881 (2.359N), 0.641 (1.511 Brix), 0.568 (0.023%), and 0.935 (0.693), respectively. The optimized discriminant accuracy for immature, mature, and overmature kiwifruits was 94.2% and 92.1% for calibration and validation, respectively. Such results indicated the feasibility of the proposed impact method for kiwifruit maturity evaluation.
机译:成熟是评估水果产品的质量和可接受的关键属性。在该研究中,影响方法用于Kiwifruit成熟度的非破坏性测量。将果实垂直掉在冲击板上,并使用加速度计测量响应信号。然后,测量果实固体,可溶性固体含量(SSC),可滴定酸度(TA)和感官分数,以确定猕猴桃成熟度。此外,提出了不同的建模方法进行数据分析。结果表明,通过主要成分分析 - 回到传播神经网络(PCA-BPNN)方法获得了优化的预测结果,用于定量和定性分析。用于固定性,SSC,TA和感觉分数的预测和实际值(RP)和均方根(RP)和均线平均误差的优化相关系数为0.881(2.359N),0.641(1.511 Brix),0.568(0.023%)分别为0.935(0.693)。对于校准和验证,校准和验证的优化判别精度分别为94.2%和92.1%。这些结果表明了拟议的猕猴桃成熟度评价的影响方法的可行性。

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