Guan Peng, Zheng Yili, Lei Guannan
School of Engineering, Beijing Forestry University, Beijing, China.
Beijing Laboratory of Urban and Rural Ecological Environment, Beijing Municipal Education Commission, Beijing, China.
Plant Methods. 2021 Oct 12;17(1):104. doi: 10.1186/s13007-021-00803-9.
Forest canopies are highly sensitive to their growth, health, and climate change. The study aims to obtain time sequence images in mix foresters using a near-earth remote sensing method to track the seasonal variation in the color index and select the optimal color index. Three different regions of interest (RIOs) were defined and six color indexes (GRVI, HUE, GGR, RCC, GCC, and GEI) were calculated to analyze the microenvironment difference. The key phenological phase was identified using the double logistic model and the derivative method, and the phenology forecast of color indexes was performed based on the long short-term memory (LSTM) model.
The results showed that the same color index in different RIOs and different color indexes in the same RIO present a slight difference in the days of growth and the days corresponding to the peak value, exhibiting different phenological phases; the mean squared error (MSE), root mean squared error (RMSE), mean absolute error (MAE), and mean absolute percentage error (MAPE) of the LSTM model was 0.0016, 0.0405, 0.0334, and 12.55%, respectively, indicating that this model has a good forecast effect.
In different areas of the same forest, differences in the micro-ecological environment in the canopies were prevalent, with their internal growth mechanism being affected by different cultivation ways and the external environment. Besides, the optimal color index also varies with species in phenological response, that is, different color indexes are used for different forests. With the data of color indexes as the training set and forecast set, the feasibility of the LSTM model in phenology forecast is verified.
森林冠层对其生长、健康状况及气候变化高度敏感。本研究旨在利用近地遥感方法获取混交林的时间序列图像,以追踪颜色指数的季节变化并选择最优颜色指数。定义了三个不同的感兴趣区域(ROI),并计算了六个颜色指数(GRVI、HUE、GGR、RCC、GCC和GEI)来分析微环境差异。使用双逻辑模型和导数方法确定关键物候期,并基于长短期记忆(LSTM)模型对颜色指数进行物候预测。
结果表明,不同ROI中的相同颜色指数以及同一ROI中的不同颜色指数在生长天数和对应峰值的天数上存在细微差异,呈现出不同的物候阶段;LSTM模型的均方误差(MSE)、均方根误差(RMSE)、平均绝对误差(MAE)和平均绝对百分比误差(MAPE)分别为0.0016、0.0405、0.0334和12.55%,表明该模型具有良好的预测效果。
在同一森林的不同区域,冠层微生态环境的差异普遍存在,其内部生长机制受不同栽培方式和外部环境的影响。此外,最优颜色指数在物候响应方面也因物种而异,即不同的森林使用不同的颜色指数。以颜色指数数据作为训练集和预测集,验证了LSTM模型在物候预测中的可行性。