4.6 Article

Application of Hyperspectral Technology Combined with Genetic Algorithm to Optimize Convolution Long- and Short-Memory Hybrid Neural Network Model in Soil Moisture and Organic Matter

期刊

APPLIED SCIENCES-BASEL
卷 12, 期 20, 页码 -

出版社

MDPI
DOI: 10.3390/app122010333

关键词

hyperspectral; soil moisture; soil organic matter; genetic algorithm; long- and short-memory neural network

资金

  1. National Natural Science Foundation of China [51365048]

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This paper proposes a method for soil moisture and organic matter content detection based on hyperspectral technology. By using CNN and LSTM modules to extract features, optimizing network parameters with genetic algorithm, and combining grey correlation analysis, the prediction accuracy and computational efficiency are improved. The method outperforms other models in soil moisture and organic matter prediction, and has significant application value.
A method of soil moisture and organic matter content detection based on hyperspectral technology is proposed. A total of 800 different soil samples and hyperspectral data were collected in the laboratory and from the field. A hyperspectral database was established. After wavelet denoising and principal component analysis (PCA) preprocessing, the convolutional neural network (CNN) module was first used to extract the wavelength features of the data. Then, the long- and short-memory neural network (LSTM) module was used to extract the feature bands and nearby hidden state vectors. At the same time, the genetic algorithm (GA) was used to optimize the hyperparametric weight and bias value of the LSTM training network. At the initial stage, the data were normalized, and all features were analyzed by grey correlation degree to extract important features and to reduce the computational complexity of the data. Then, the GA-optimized CNN-LSTM hybrid neural network (GA-CNN-LSTM) algorithm model proposed in this paper was used to predict soil moisture and organic matter. The prediction performance was compared with CNN, support vector regression (SVR), and CNN-LSTM hybrid neural network model without GA optimization. The GA-CNN-LSTM algorithm was superior to other models in all indicators. The highest accuracy rates of 94.5% and 92.9% were obtained for soil moisture and organic matter, respectively. This method can be applied to portable hyperspectrometers and unmanned aerial vehicles to realize large-scale monitoring of moisture and organic matter distribution and to provide a basis for rational irrigation and fertilization in the future.

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