Zhan Chunyi, Mao Hongyi, Fan Rongsheng, He Tanggui, Qing Rui, Zhang Wenliang, Lin Yi, Li Kunyu, Wang Lei, Xia Tie'en, Wu Youli, Kang Zhiliang
College of Mechanical and Electrical Engineering, Sichuan Agriculture University, Ya'an 625014, China.
Sichuan Jiuzhou Electric Group Co., Ltd., Mianyang 621000, China.
Foods. 2024 Nov 6;13(22):3547. doi: 10.3390/foods13223547.
China ranks first in apple production worldwide, making the assessment of apple quality a critical factor in agriculture. Sucrose concentration (SC) is a key factor influencing the flavor and ripeness of apples, serving as an important quality indicator. Nondestructive SC detection has significant practical value. Currently, SC is mainly measured using handheld refractometers, hydrometers, electronic tongues, and saccharimeter analyses, which are not only time-consuming and labor-intensive but also destructive to the sample. Therefore, a rapid nondestructive method is essential. The fluorescence hyperspectral imaging system (FHIS) is a tool for nondestructive detection. Upon excitation by the fluorescent light source, apples displayed distinct fluorescence characteristics within the 440-530 nm and 680-780 nm wavelength ranges, enabling the FHIS to detect SC. This study used FHIS combined with machine learning (ML) to predict SC at the apple's equatorial position. Primary features were extracted using variable importance projection (VIP), the successive projection algorithm (SPA), and extreme gradient boosting (XGBoost). Secondary feature extraction was also conducted. Models like gradient boosting decision tree (GBDT), random forest (RF), and LightGBM were used to predict SC. VN-SPA + VIP-LightGBM achieved the highest accuracy, with Rp2, RMSEp, and RPD reaching 0.9074, 0.4656, and 3.2877, respectively. These results underscore the efficacy of FHIS in predicting apple SC, highlighting its potential for application in nondestructive quality assessment within the agricultural sector.
中国是全球苹果产量第一的国家,因此苹果品质评估成为农业中的关键因素。蔗糖浓度(SC)是影响苹果风味和成熟度的关键因素,是一项重要的品质指标。无损检测SC具有重要的实用价值。目前,SC主要通过手持折射仪、比重计、电子舌和糖量计分析来测量,这些方法不仅耗时费力,而且对样品具有破坏性。因此,一种快速无损的方法至关重要。荧光高光谱成像系统(FHIS)是一种无损检测工具。在荧光光源激发下,苹果在440 - 530纳米和680 - 780纳米波长范围内呈现出明显的荧光特性,使得FHIS能够检测SC。本研究使用FHIS结合机器学习(ML)来预测苹果赤道位置的SC。使用变量重要性投影(VIP)、连续投影算法(SPA)和极端梯度提升(XGBoost)提取主要特征。还进行了二次特征提取。使用梯度提升决策树(GBDT)、随机森林(RF)和LightGBM等模型来预测SC。VN - SPA + VIP - LightGBM实现了最高的准确率,Rp2、RMSEp和RPD分别达到0.9074、0.4656和3.2877。这些结果强调了FHIS在预测苹果SC方面的有效性,突出了其在农业无损质量评估中的应用潜力。