基于 ATR-FTIR 技术原位无损感知棉花叶片表面农药沉积量

    In situ non-destructive sensing of pesticide deposition on cotton leaf surfaces using ATR-FTIR technology

    • 摘要: 为了探究基于红外衰减全反射光谱(Fourier transform attenuated total reflection infrared spectroscopy, ATR-FTIR)技术实施农药沉积量原位感知的可能性,该研究以含有不同量广谱性杀菌剂啶酰菌胺沉积的棉花叶片为试材,结合化学计量学分析方法开展相关探索。首先使用棉花叶片制成 140 例已知农药沉积量的标准样品,并采用 ATR-FTIR 技术获取其光谱数据;然后借助区间偏最小二乘法、相关性分析等方法筛选到 272 个相关性强的波长变量;最后以优化后的变量及偏最小二乘回归算法建立定量预测模型。结果表明模型的预测性能优异,预测的均方根误差为 1.18 μg/cm2,最低检测限(limit of detection, LOD)低至 3.54 μg/cm2;利用概率神经网络判别样品中农药沉积量是否大于 LOD 的整体准确率高达 95%。该研究结果证明 ATR-FTIR 技术可实现农药沉积量的高精度原位检测,为其在生产中的应用提供理论依据和数据支撑。

       

      Abstract: Pesticides can be often regulated to detect the deposition constitutes on the crops in fields. Nevertheless, the current research cannot focus on the specific difficulties in practical application. Fortunately, the attenuated total reflection spectroscopy (ATR-FTIR) technology can be expected to probe the presence of pesticides on the leaf surface without damage to the samples. This study aims to evaluate the in situ non-destructive sensing of pesticide deposition using infrared ATR-FTIR together with chemometric analysis. The examples were also taken as the broad-spectrum fungicide boscalid and the economic crop cotton. 140 standard samples of cotton leaves were then fabricated with known amounts of pesticide deposition. The spectral data was acquired after experiment. Subsequently, the preliminary analysis was conducted to determine the differences among the samples using Principal Component Analysis (PCA). The great variations in spectral characteristics were attributed to the differences in pesticide deposition. Distinct patterns and trends were also identified from the data. After that the interval partial least squares (iPLS) and correlation analysis were employed to screen out the wavelength variables with strong correlations. This procedure aimed to identify the specific wavelengths the most relevant to pesticide deposition. Finally, a prediction model was established using the optimal variables and partial least squares regression (PLSR). The deposition amount of pesticide was predicted using the spectral data. The outstanding performance of prediction model was achieved with an R² value of 0.83 and an RMSE of 1.21 μg/cm² in calibration, while an R² value of 0.86, an RMSE of 1.18 μg/cm², an RPD of 2.3, and an RPIQ of 2.0 in validation. These results demonstrated the high accuracy and reliability of the prediction model on pesticide deposition. In addition, a classification model was also built with the probabilistic neural network (PNN), in order to distinguish whether the samples were with a higher deposition yield than the limit of detection (LOD) of the PLSR model. The PNN classification model shared an overall accuracy of 95% to discriminate whether the pesticide deposition amount on the samples was greater than the LOD of PLSR model. Therefore, it was feasible to classify the samples using PNN model. The prediction of PLSR model was better performed for the preliminary screening and classification. The results demonstrated that the ATR-FTIR shared the successfully perceived boscalid deposition on the surfaces of cotton leaf. Five well-defined peaks of absorption were observed at 3400, 2800, 1720, 1450, and 1160 cm-1, corresponding to the O-H, C-H, C=O, aromatic, and C-O stretching vibrations, respectively. These specific peaks were also resulted from the overlapping between the pesticide and leaf surfaces. The detection mechanism was enhanced from the valuable peaks information about the chemical interactions between the pesticide and the leaf. Among them, 272 wavelength variables were selected as the inputs that highly correlated with the pesticide deposition among the five well-defined peaks. The quantitative model was then established using PLSR. The most relevant spectra were selected to further improve the accuracy and performance of the model. The low LOD (3.54 μg/cm²) of PLSR model was calculated and validated by the RMSE value, indicating the sensitivity to detect even small amounts of pesticide deposition. Therefore, the ATR-FTIR technology can be expected to accurately detect the pesticides with different amount of deposition. This finding can provide the theoretical foundation and data support to in situ and non-destructive perception of its original deposition or residual amount in other crops. The promising potential can be offered for the pesticide monitoring and management, thus enabling more efficient and sustainable agricultural practices.

       

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