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- Title
Spectral Diagnostic Model for Agricultural Robot System Based on Binary Wavelet Algorithm.
- Authors
Wu, Weibin; Tang, Ting; Gao, Ting; Han, Chongyang; Li, Jie; Zhang, Ying; Wang, Xiaoyi; Wang, Jianwu; Feng, Yuanjiao
- Abstract
The application of agricultural robots can liberate labor. The improvement of robot sensing systems is the premise of making it work. At present, more research is being conducted on weeding and harvesting systems of field robot, but less research is being conducted on crop disease and insect pest perception, nutritional element diagnosis and precision fertilizer spraying systems. In this study, the effects of the nitrogen application rate on the absorption and accumulation of nitrogen, phosphorus and potassium in sweet maize were determined. Firstly, linear, parabolic, exponential and logarithmic diagnostic models of nitrogen, phosphorus and potassium contents were constructed by spectral characteristic variables. Secondly, the partial least squares regression and neural network nonlinear diagnosis model of nitrogen, phosphorus and potassium contents were constructed by the high-frequency wavelet sensitivity coefficient of binary wavelet decomposition. The results show that the neural network nonlinear diagnosis model of nitrogen, phosphorus and potassium content based on the high-frequency wavelet sensitivity coefficient of binary wavelet decomposition is better. The R2, MRE and NRMSE of nn of nitrogen, phosphorus and potassium were 0.974, 1.65% and 0.0198; 0.969, 9.02% and 0.1041; and 0.821, 2.16% and 0.0301, respectively. The model can provide growth monitoring for sweet corn and a perception model for the nutrient element perception system of an agricultural robot, while making preliminary preparations for the realization of intelligent and accurate field fertilization.
- Subjects
AGRICULTURAL robots; PARTIAL least squares regression; AGRICULTURAL pests; SWEET corn; SPRAYING &; dusting in agriculture
- Publication
Sensors (14248220), 2022, Vol 22, Issue 5, pN.PAG
- ISSN
1424-8220
- Publication type
Article
- DOI
10.3390/s22051822