Han Xiao-ping, Zuo Yue-ming, Li Ling-zhi
Engineering Technique College of Shanxi Agricultural University, Taigu 030801, China.
Guang Pu Xue Yu Guang Pu Fen Xi. 2010 Sep;30(9):2479-83.
It was successful to denoise the spectrum signal within visual wave band (350-560 nm) by wavelet transformation, to extract the folic acid characteristic wavelength 366 nm and some character wavelengths with relation to chlorophyll at 380, 414, 437 and 554 nm. In the range from 560 to 2500 nm, after denoising, the biggest error was smaller than 1.47%, while at the peak or vale of character wavelength the biggest error was smaller than 0.11%. Moreover, the model was established based on the denoised data acquired with aid of plant probe. The model was also based on BP neural network and for predicting the nitrogen content in nutrient solution in hydroponic cultivation of tomato. The results showed that the predicting model, which used the values of absorbance at 554, 673, 1440 and 1940 nm as input variables of BP neural network,had a very good forecasting accuracy and great potential to be used practically.
通过小波变换成功地对可见光波段(350 - 560纳米)内的光谱信号进行了去噪,提取出叶酸特征波长366纳米以及与叶绿素相关的一些特征波长,分别为380、414、437和554纳米。在560至2500纳米范围内,去噪后最大误差小于1.47%,而在特征波长的峰值或谷值处最大误差小于0.11%。此外,该模型是基于借助植物探头获取的去噪数据建立的。该模型也是基于BP神经网络,用于预测水培番茄营养液中的氮含量。结果表明,以554、673、1440和1940纳米处的吸光度值作为BP神经网络的输入变量的预测模型具有非常好的预测精度和很大的实际应用潜力。