北方农业学报 ›› 2025, Vol. 53 ›› Issue (5): 127-134.doi: 10.12190/j.issn.2096-1197.2025.05.13

• 农业信息技术 • 上一篇    

基于SVM-RFE的酿酒葡萄品种鉴别模型研究

吕雪梅, 李红娟   

  1. 中国农业大学烟台研究院,山东 烟台 264670
  • 收稿日期:2025-06-03 出版日期:2025-10-20 发布日期:2026-01-20
  • 通讯作者: 李红娟(1978—),女,副教授,博士,主要从事酿酒葡萄栽培及品种选育方面的研究工作。
  • 作者简介:吕雪梅(2004—),女,在读本科,专业为葡萄与葡萄酒工程。
  • 基金资助:
    2022年度烟台市校地融合资金项目

Research on a varietal identification model for wine grapes based on SVM-RFE

LYU Xuemei, LI Hongjuan   

  1. Yantai Institute of China Agricultural University,Yantai 264670,China
  • Received:2025-06-03 Online:2025-10-20 Published:2026-01-20

摘要: 【目的】 解决传统葡萄品种鉴别方法效率低、机器学习模型可解释性差等问题,为葡萄品种的田间快速鉴别提供科学依据。【方法】 基于叶片形态性状构建高效的酿酒葡萄品种鉴别模型,利用支持向量机-递归特征消除法(support vector machine-recursive feature elimination,SVM-RFE),以山东省烟台市7个主要酿酒葡萄品种为研究对象,测量17个叶片形态性状,经贝叶斯优化(Bayesian optimization,BO)算法对SVM、K最近邻(K-nearest neighbors,KNN)和决策树(decision tree,DT)模型进行参数优化,根据AUC值评估模型性能,并结合RFE和对应模型分类准确率筛选关键特征。【结果】 经BO优化后的SVM模型表现最优,AUC值达0.960 7,精确率为95.56%,召回率为84.31%,准确率为95.46%,以蛇龙珠为正类时F1值为0.895 8。RFE筛选出14个关键特征,构建的BO-SVM-RFE模型在保持高性能的同时,模型准确率提升至96.05%,并进一步提升了模型可解释性。【结论】 成功构建了基于SVM-RFE的酿酒葡萄品种鉴别模型(BO-SVM-RFE模型),明确了叶柄长等14个关键鉴别指标。

关键词: 酿酒葡萄, 品种鉴别, 支持向量机, 递归特征消除法, 叶片形态性状, 贝叶斯优化

Abstract: 【Objective】 To address the issues of low efficiency in traditional grape variety identification methods and poor interpretability of machine learning models,providing a scientific basis for rapid field identification of grape varieties.【Methods】 An efficient identification model for wine grape varieties was constructed based on leaf morphological traits. Utilizing the support vector machine-recursive feature elimination(SVM-RFE) method,seven major wine grape varieties in Yantai,Shandong Province,were selected as research objects,for which seventeen leaf morphological traits were measured. The Bayesian optimization(BO) algorithm was used to optimize the parameters of the support vector machine(SVM),K-nearest neighbors(KNN),and decision tree(DT) models. Model performance was evaluated based on AUC value,and key features were screened using RFE combined with the corresponding model classification accuracy.【Results】 The SVM model optimized by BO exhibited the best performance,achieving an AUC value of 0.960 7,a precision of 95.56%,a recall of 84.31%,and an accuracy of 95.46%,with an F1 score of 0.895 8 when setting Cabernet Gernischt as the positive class. RFE screened out 14 key features,and the constructed BO-SVM-RFE model maintained high performance while achieving an improved model accuracy of 96.05% and further enhancing model interpretability.【Conclusion】 A varietal identification model for wine grapes based on SVM-RFE(the BO-SVM-RFE model) was successfully constructed,and 14 key identification indicators,including petiole length,were clarified.

Key words: Wine grapes, Varietal identification, Support vector machine, Recursive feature elimination, Leaf morphological traits, Bayesian optimization

中图分类号: 

  • S663.1