Martínez-Peña Raquel, Castillo-Gironés Salvador, Álvarez Sara, Vélez Sergio
Woody Crops Department, Regional Institute of Agri-Food and Forestry Research and Development of Castilla-La Mancha (IRIAF), Agroenvironmental Research Center "El Chaparrillo", CM412 Ctra.Porzuna km.4, 13005, Ciudad Real, Spain.
Agroenineering Department, Valencian Institute for Agricultural Research (IVIA), CV-315, km 10.7, 46113, Moncada, Valencia, Spain.
Curr Res Food Sci. 2024 Sep 5;9:100835. doi: 10.1016/j.crfs.2024.100835. eCollection 2024.
Pistachio trees have become a significant global agricultural commodity because their nuts are renowned for their unique flavour and numerous health benefits, contributing to their high demand worldwide. This study explores the application of Hyperspectral Imaging (HSI) and Machine Learning (ML) to determine pistachio nuts' geographic origin and irrigation practices, alongside predicting essential commercial quality and yield parameters. The study was conducted in two Spanish orchards and employed HSI technology to capture spectral data. It used ML models like Partial Least Squares (PLS), Support Vector Machine (SVM), and Extreme Gradient Boosting (XGBoost) for analysis. The results demonstrated high accuracy in classifying pistachios based on origin, with accuracies exceeding 94%, and in assessing water content and colour pigments, where both PLS and SVM models achieved 99% accuracy. The research highlighted distinct spectral signatures associated with different irrigation treatments, particularly in the Near-Infrared (NIR) region, with PLS showing an accuracy of 92%. However, challenges were noted in predicting fruit orientation, while predicting height location within the tree was more successful, reflecting clearer spectral distinctions. Regression models also showed promise, particularly in predicting yield (R = 0.89 with PLS) and percentage of blank nuts (R = 0.71 with PLS). The correlation analysis revealed key insights, such as an inverse relationship between blank nuts and yield, and a strong correlation between yield and split nuts. Despite challenges in predicting fruit orientation, the research showed promising results in forecasting yield and commercial quality factors, indicating the effectiveness of spectral analysis in optimising pistachio production and sustainability.
开心果树已成为一种重要的全球农产品,因为其坚果以独特风味和诸多健康益处而闻名,这使得它们在全球范围内需求旺盛。本研究探讨了高光谱成像(HSI)和机器学习(ML)在确定开心果的地理来源和灌溉方式方面的应用,同时预测关键的商业品质和产量参数。该研究在西班牙的两个果园进行,采用HSI技术获取光谱数据。研究使用了偏最小二乘法(PLS)、支持向量机(SVM)和极端梯度提升(XGBoost)等ML模型进行分析。结果表明,基于产地对开心果进行分类的准确率很高,超过了94%,在评估水分含量和色素方面,PLS和SVM模型的准确率均达到了99%。研究突出了与不同灌溉处理相关的独特光谱特征,特别是在近红外(NIR)区域,PLS的准确率为92%。然而,在预测果实方向方面存在挑战,而预测树木内的高度位置则更为成功,这反映出更清晰的光谱差异。回归模型也显示出前景,特别是在预测产量(PLS的R = 0.89)和空壳坚果百分比(PLS的R = 0.71)方面。相关性分析揭示了一些关键见解,如空壳坚果与产量之间的反比关系,以及产量与裂壳坚果之间的强相关性。尽管在预测果实方向方面存在挑战,但该研究在预测产量和商业品质因素方面显示出了有前景的结果,表明光谱分析在优化开心果生产和可持续性方面的有效性。