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Non-Destructive Prediction of Titratable Acidity and Taste Index Properties of Gala Apple Using Combination of Different Hybrids ANN and PLSR-Model Based Spectral Data

机译:采用不同杂种ANN和PLSR模型的光谱数据的组合GALA Apple的滴定酸度和味道指数性能的非破坏性预测

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摘要

Non-destructive estimation of the internal properties of fruits and vegetables is very important, because better management can be provided for subsequent operations. Researchers and scientists around the world are focusing on non-destructive methods because if they are developed and commercialized, there will be an impressive change in the food industry. In this regard, this paper aims to present a non-destructive method based on Vis-NIR spectral data. The different stages of the proposed algorithm are: (1) Collection of samples of Gala apples, (2) Spectral data extraction by spectroscopy, (3) Pre-processing of spectral data, (4) Measurement of chemical properties of titratable acidity (TA) and taste index, (5) Selection of key wavelengths using hybrid artificial neural network-firefly algorithm (ANN-FA), (6) Non-destructive estimation of the properties using two methods of hybrid ANN- Particle swarm optimization algorithm and partial least squares regression. For considering the reliability of methods for estimating the chemical properties, the prediction operation was executed in 300 iterations. The results represented that the mean and standard deviation of the correlation coefficient and the root mean square error of hybrid ANN-PSO and PLSR for TA were 0.9095 ± 0.0175, 0.0598 ± 0.0064, 0.834 ± 0.0313 and 0.0761 ± 0.0061 respectively. These values for taste index were 0.918 ± 0.02, 3.2 ± 0.39, 0.836 ± 0.033 and 4.09 ± 0.403, respectively. Therefore, it can be concluded that the hybrid ANN-PSO has a better performance for non-destructive prediction of the two mentioned chemical properties than the PLSR method. In general, the proposed method can predict the chemical properties of TA and taste index non-destructively, which is very useful for mechanized harvesting and management of post-harvest operation.
机译:非破坏性估计水果和蔬菜的内部属性非常重要,因为可以为后续操作提供更好的管理。世界各地的研究人员和科学家正在专注于非破坏性方法,因为如果他们开发和商业化,食品行业将会令人印象深刻的变化。在这方面,本文旨在提出基于VIS-NIR光谱数据的非破坏性方法。所提出的算法的不同阶段是:(1)通过光谱学,(3)光谱数据的光谱数据提取的常见节数据提取(3)光谱数据的预处理(4)滴定酸度的化学性质的测量(Ta )味道指数,(5)使用混合人工神经网络 - 萤火虫算法(ANN-FA)的关键波长选择,(6)使用两种混合ANN粒子群优化算法和局部最少的方法的非破坏性估计属性方格回归。为了考虑用于估计化学性质的方法的可靠性,预测操作在300次迭代中执行。结果表明,相关系数的平均值和标准偏差和杂种Ann-PSO的均线平均误差和TA的PLSR分别为0.9095±0.0175,0.0598±0.0064,0.834±0.0313和0.0761±0.0761±0.0061。味道指数的这些值分别为0.918±0.02,3.2±0.39,0.836±0.033和4.09±0.403。因此,可以得出结论,杂交Ann-PSO对两种提到的化学性质的非破坏性预测比PLSR方法更好地具有更好的性能。通常,该方法可以预测TA和味道指数的化学性质,这对于收获后手术的机械化收集和管理非常有用。

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