Zhang Xiaodong, Duan Chaohui, Wang Yafei, Gao Hongyan, Hu Lian, Wang Xinzhong
College of Agricultural Engineering, Jiangsu University, Zhenjiang, China.
Key Laboratory of Modern Agricultural Equipment and Technology, Ministry of Education, Jiangsu University, Zhenjiang, Jiangsu, China.
Front Plant Sci. 2023 Jan 11;13:1093671. doi: 10.3389/fpls.2022.1093671. eCollection 2022.
The timely detection of information on crop nutrition is of great significance for improving the production efficiency of facility crops. In this study, the terahertz (THz) spectral information of tomato plant leaves with different nitrogen levels was obtained. The noise reduction of the THz spectral data was then carried out by using the Savitzky-Golay (S-G) smoothing algorithm. The sample sets were then analyzed by using Kennard-Stone (KS) and random sampling (RS) methods, respectively. The KS algorithm was optimized to divide the sample sets. The stability competitive adaptive reweighted sampling (SCARS), uninformative variable elimination (UVE), and interval partial least-squares (iPLS) algorithms were then used to screen the pre-processed THz spectral data. Based on the selected characteristic frequency bands, a model for the detection of the nitrogen content of tomato based on the THz spectrum was established by the radial basis function neural network (RBFNN) and backpropagation neural network (BPNN) algorithms, respectively. The results show that the root-mean-square error of correction (RMSEC) and root-mean-square error of prediction (RMSEP) of the BPNN model were respectively 0.1722% and 0.1843%, and the determination coefficients of the correction set ( ) and prediction set ( ) were respectively 0.8447 and 0.8375. The RMSEC and RMSEP values of the RBFNN model were respectively 0.1322% and 0.1855%, and the and values were respectively 0.8714 and 0.8463. Thus, the accuracy of the model established by the RBFNN algorithm was slightly higher. Therefore, the nitrogen content of tomato leaves can be detected by THz spectroscopy. The results of this study can provide a theoretical basis for the research and development of equipment for the detection of the nitrogen content of tomato leaves.
及时检测作物营养信息对于提高设施作物的生产效率具有重要意义。本研究获取了不同氮素水平下番茄植株叶片的太赫兹(THz)光谱信息。然后采用Savitzky-Golay(S-G)平滑算法对THz光谱数据进行降噪处理。接着分别采用Kennard-Stone(KS)法和随机抽样(RS)法对样本集进行分析。对KS算法进行优化以划分样本集。随后使用稳定性竞争自适应重加权采样(SCARS)、无信息变量消除(UVE)和区间偏最小二乘法(iPLS)算法对预处理后的THz光谱数据进行筛选。基于所选特征频段,分别采用径向基函数神经网络(RBFNN)和反向传播神经网络(BPNN)算法建立了基于THz光谱的番茄氮含量检测模型。结果表明,BPNN模型的校正均方根误差(RMSEC)和预测均方根误差(RMSEP)分别为0.1722%和0.1843%,校正集( )和预测集( )的决定系数分别为0.8447和0.8375。RBFNN模型的RMSEC和RMSEP值分别为0.1322%和0.1855%, 和 值分别为0.8714和0.8463。因此,RBFNN算法建立的模型精度略高。所以,可通过THz光谱法检测番茄叶片的氮含量。本研究结果可为番茄叶片氮含量检测设备的研发提供理论依据。