评估枣果某些质量特性的智能介电方法

IF 6.4 1区 农林科学 Q1 AGRONOMY
Hadi Karimi
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引用次数: 0

摘要

本研究旨在开发一种智能电容系统,用于测量枣果的水分含量,并识别水果的特征,如品种、大小和成熟度。该研究采用了一种成本效益高且快速的非接触式电容测量解决方案,创建了一个带有可变振荡器的平台,用于测量收获后枣果的介电特性。选择了不同的椰枣品种,即 Zahedi、Ghasb、Mazafati 和 Medjool,分别代表干椰枣果实、半干椰枣果实和湿椰枣果实,来模拟和校准拟议的系统。在三个不同的成熟阶段(Khalal、Rutab 和 Tamr),从高含水量到低含水量,选择了每个品种的椰枣果实样本。此外,还使用烘箱法测定了五个不同的水分含量。由于选择了四个品种、三个成熟阶段和五次逐步热处理,枣果样品的含水量从 8.6 % 到 86.9 % 不等。获取电子信息后,80% 的数据集用于训练,其余 20% 用于评估最终回归模型。结果表明,在所有训练过的机器学习模型中,支持向量回归(SVR)在预测指定频率下的水分含量方面潜力最大。通过拟合 1824 种超参数组合,对 SVR 模型进行了 6 次微调。调整后的模型对 20% 的指定测试数据进行了预测,与实际含水率相比,确定系数为 88%,均方根误差(RMSE)为 9.4%。此外,介电系统还利用多层感知器(MLP)模型对成熟阶段进行了分类,在 Khalal、Rutab 和 Tamr 阶段的 F1 分数分别为 87%、60% 和 68%。MLP 回归模型还能预测枣果的几何平均值,其决定系数为 0.82,均方根误差为 3.05 毫米。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent dielectric method for evaluating some qualitative characteristics of date fruit

This study aimed to develop an intelligent capacitive system to measure the moisture content of date fruit and to recognize fruit characteristics, such as variety, size, and ripeness. A cost-effective and fast non-contact measurement solution using the capacitive method was employed to create a platform with a variable oscillator to measure the dielectric properties of date fruit after harvest. Different date varieties, namely Zahedi, Ghasb, Mazafati and Medjool, representing dry, semi-dry and wet date fruit, respectively, were selected to model and calibrate the proposed system. Samples of date fruit of each variety were selected at three different ripening stages (Khalal, Rutab and Tamr), ranging from high to low moisture content. Additionally, five distinct moisture contents were determined using the oven method. The moisture content of the date fruit samples ranged from 8.6 % to 86.9 % owing to the selection of four varieties, three ripening stages and five stepwise thermal treatments. After acquiring electronic information, 80 % of the dataset was allocated for training purposes, while the remaining 20 % was reserved for evaluating the final regression model. The results showed that of all the trained machine learning models, Support Vector Regression (SVR) had the highest potential for predicting moisture content at the specified frequencies. The SVR model was fine-tuned by fitting 1824 combinations of hyperparameters over 6 folds. The tuned model's prediction for 20 % of the assigned test data resulted in a coefficient of determination of 88 % compared to the actual moisture content, with a Root Mean Square Error (RMSE) of 9.4 %. Furthermore, the dielectric-based system classified the ripening stages using a Multilayer Perceptron (MLP) model, achieving F1 scores of 87 %, 60 % and 68 % for the Khalal, Rutab and Tamr stages, respectively. The MLP regression model also predicted the geometric mean of the date fruit with a coefficient of determination of 0.82 and an RMSE of 3.05 mm.

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来源期刊
Postharvest Biology and Technology
Postharvest Biology and Technology 农林科学-农艺学
CiteScore
12.00
自引率
11.40%
发文量
309
审稿时长
38 days
期刊介绍: The journal is devoted exclusively to the publication of original papers, review articles and frontiers articles on biological and technological postharvest research. This includes the areas of postharvest storage, treatments and underpinning mechanisms, quality evaluation, packaging, handling and distribution of fresh horticultural crops including fruit, vegetables, flowers and nuts, but excluding grains, seeds and forages. Papers reporting novel insights from fundamental and interdisciplinary research will be particularly encouraged. These disciplines include systems biology, bioinformatics, entomology, plant physiology, plant pathology, (bio)chemistry, engineering, modelling, and technologies for nondestructive testing. Manuscripts on fresh food crops that will be further processed after postharvest storage, or on food processes beyond refrigeration, packaging and minimal processing will not be considered.
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