Effect of maturity stages on the quality indices of wood apple (Feronia limonia) and modeling of its kinetics by applying machine learning approaches

IF 0.2 Q4 HORTICULTURE
J. Goyary, C. Khobragade, S. Chakraborty, A. Tiwari
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引用次数: 0

Abstract

In the present investigation, an inexpensive and non-destructive method was tested for the appropriate maturity classification of wood apple (Feronia limonia). The investigation was conducted to establish the pronounced effect of maturity stages on the growth kinetics, physico-chemical properties, and other quality indices of wood apple. A systematic trend was observed for all the properties namely sphericity, bulk density (g/cm3), true density (g/cm3), pH, total soluble solids TSS (°Brix), titratable acidity (%) and TSS/TA ratio, etc. of the fruit. In contrast, regular changes were also observed in the color properties at various maturity stages of the wood apple. The maturity kinetics was formulated by applying recurrent neural network (RNN) in compliance with K means cluster algorithm. RNN modeling was applied by considering color property (redness value) as input and six maturity indices as the output of the formulated structure. The RNN architecture, 1-6-6 showed the best results for forecasting the wood apple maturity based on color features. Further, based on the results of the K means cluster algorithm, the maturity stages were classified into three main categories, illustrated in the form of a simplified color chart. Hence, this investigation can be useful for proper control and identification of wood apple maturity during the processing.
成熟期对木苹果(Feronia limonia)品质指标的影响及其应用机器学习方法的动力学建模
本文研究了一种廉价、无损的木苹果成熟度分级方法。研究了不同成熟期对木苹果生长动力学、理化性质及其他品质指标的显著影响。果实的球形度、容重(g/cm3)、真密度(g/cm3)、pH、总可溶性固形物TSS(°Brix)、可滴定酸度(%)和TSS/TA比等性状均有系统的变化趋势。相反,木苹果在不同成熟期的颜色特性也有规律的变化。采用符合K均值聚类算法的递归神经网络(RNN)建立了成熟度动力学模型。采用RNN建模,将颜色属性(红度值)作为输入,6个成熟度指标作为输出。基于颜色特征预测木苹果成熟度的RNN结构,1-6-6效果最好。此外,基于K均值聚类算法的结果,将成熟度阶段分为三大类,并以简化的彩色图表的形式进行说明。因此,本研究可为木苹果在加工过程中的成熟度控制和鉴定提供依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Horticultural Sciences
Journal of Horticultural Sciences Agricultural and Biological Sciences-Plant Science
CiteScore
0.30
自引率
0.00%
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0
审稿时长
6 weeks
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