蒋易宇, 王硕, 张丽娜, 谭彧. 基于水培生菜力学特征的成熟度分类方法[J]. 农业工程学报, 2023, 39(1): 179-187. DOI: 10.11975/j.issn.1002-6819.202210063
    引用本文: 蒋易宇, 王硕, 张丽娜, 谭彧. 基于水培生菜力学特征的成熟度分类方法[J]. 农业工程学报, 2023, 39(1): 179-187. DOI: 10.11975/j.issn.1002-6819.202210063
    JIANG Yiyu, WANG Shuo, ZHANG Lina, TAN Yu. Maturity classification using mechanical characteristics of hydroponic lettuce[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2023, 39(1): 179-187. DOI: 10.11975/j.issn.1002-6819.202210063
    Citation: JIANG Yiyu, WANG Shuo, ZHANG Lina, TAN Yu. Maturity classification using mechanical characteristics of hydroponic lettuce[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2023, 39(1): 179-187. DOI: 10.11975/j.issn.1002-6819.202210063

    基于水培生菜力学特征的成熟度分类方法

    Maturity classification using mechanical characteristics of hydroponic lettuce

    • 摘要: 为了能准确识别生菜的成熟度,实现生菜适时采收,避免因采收期不当而造成品质下降等问题,该研究提出用穿刺试验力学特征表征水培生菜成熟度的方法,提取同一颗生菜不同叶片的不同部位时域和频域的力学特征,得到叶片力学特征与叶片成熟特性指标的相关性。为了对水培生菜未成熟株、成熟株、过成熟株进行准确分类,设计双阈值深度遍历算法,确定分类准确率最高的叶片类型和区域;采用6种机器学习算法以该区域所有的力学特征为输入,以成熟度3种分类为输出进行训练。试验结果表明,生菜叶片力学特征与成熟度特性指标紧密相关,生菜中叶叶茎区域分类准确率最高,可优化集成分类机器学习算法准确率最高为94.3%。研究结果提供了一种应用力学特征解决水培生菜成熟度检测与分类的新方法。

       

      Abstract: Accurate identification of lettuce maturity is one of the most important steps during vegetable production. The better quality of lettuce can depend mainly on the picking time in the period of suitable maturity. Among them, the harvested lettuce texture is one of the important bases to determine lettuce maturity in this case. Fortunately, the mechanical characteristics can also be an optimal way to evaluate and detect the lettuce texture after harvesting. It is very necessary to clarify the relationship between the lettuce maturity and harvested texture. In this study, a novel classification was proposed to characterize the maturity of vegetables, according to the mechanical characteristics of hydroponic lettuce under the puncture test. Three categories were also classified by the immature, mature, and over-mature plants. Firstly, a systematic extraction was performed on the mechanical characteristics of the stem and mesophyll in the inner, middle, and outer leaves of immature, mature, and over mature plants in the time and frequency domain. The correlation analysis was made between the leaf mechanical characteristics and chlorophyll content, and the above-ground fresh weight. Some indicators were then calculated to accurately characterize the leaf maturity characteristics. A consistency analysis was also implemented between the mechanical characteristics and the changes of soluble sugar or soluble protein. Secondly, a dual-threshold depth traversal was designed to classify the individual characteristics of a single leaf and single region. The classification thresholds of immature and mature were obtained for the mature and over-mature mechanical characteristics. An optimal selection was performed on the blade type and region with the highest classification accuracy. All the mechanical features of the region were then trained using various machine learnings. The test results showed that the mechanical characteristics of the leaves were significantly correlated with the above-ground fresh quality of lettuce. There was a significantly low correlation with the Soil Plant Analysis Development (SPAD) value of the middle leaves, indicating the better consistence with the change law of soluble sugar and soluble protein. It infers that the mechanical characteristics of leaves can be expected to characterize the maturity of lettuce. The overall accuracy rate of the mechanical features in the single threshold classification was ranked in the descending order of: middle leaf > inner leaf > outer leaf. More importantly, the classification effect of each feature in the stem part was outstandingly better than that of the mesophyll part. Among them, the highest classification accuracy was 75.5% in the fracture force of the middle leaf stem. Specifically, the classification thresholds of fracture force were 0.98, and 1.38 N, respectively, for the immature and mature, while the mature and overripe plants. An optimal ensemble was achieved to better classify all the mechanical characteristics of the stem and mesophyll in the middle leaves. Correspondingly, the integration method was the Bagging, and the training learner was a decision tree. The accuracy rate was more than 94.3% for the three types of lettuce. A series of experiments were carried out to verify under the same conditions. Another batch of lettuce was planted in this case. The integrated model was also optimized using machine learning after training. The prediction accuracy rate was obtained by 91.7%, indicating the better validity of the improved model. Consequently, the mechanical characteristics can be expected to serve as a new tool for the rapid identification and accurate classification of vegetable maturity. An optimal harvest texture of mature lettuce was also determined to improve the harvest quality of lettuce.

       

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