研究目的
To develop a low‐cost, portable multispectral sensor system for non‐invasive determination of leaf nitrogen (N) and water contents in crops.
研究成果
The proposed low‐cost, portable multispectral sensor system can effectively determine leaf nitrogen content non‐invasively with an appropriate regression model. However, further investigation is needed to improve the water content estimation results. The device shows promise for monitoring crop health status in a cost-effective manner.
研究不足
The proposed device was only tested on canola, corn, wheat, and soybean in a greenhouse‐controlled environment. The performance variations, if applied in field settings, need further investigation. Additionally, the water content estimation results were not as satisfactory as the N estimation, indicating a need for further improvement.
1:Experimental Design and Method Selection:
The study utilized a low‐cost, portable multispectral sensor system comprising two multispectral sensors (visible and near‐infrared) to detect reflectance at 12 wavelengths. The rational quadratic Gaussian process regression (GPR) algorithm was applied to correlate the reflectance data with actual N and water content.
2:Sample Selection and Data Sources:
Four different species of plants (canola, corn, soybean, and wheat) were used as test plants. Spectral data were collected from 307 leaves (121 for N and 186 for water experiment) in a controlled greenhouse environment.
3:List of Experimental Equipment and Materials:
The sensor system included two multispectral sensors (AS7262 and AS7263), a Qwiic mux breakout board (TCA9548A), a Raspberry Pi version 3 (RP3), a power bank (BWA18WI035C), and an OLED display (DS‐OLED‐MOD).
4:Experimental Procedures and Operational Workflow:
Two separate experiments (N and water) were performed. Spectral data were collected from the sample leaf surfaces, and actual N and water contents were measured using an LECO TruMac N analyzer and the difference between fresh and dried leaf weights, respectively.
5:Data Analysis Methods:
The GPR algorithm was used for modeling the spectral data, and five‐fold cross‐validation was performed to validate the model.
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