School of Earth Systems and Sustainability, Southern Illinois University Carbondale, Carbondale, IL, 62901, USA.
Environmental Resources and Policy, Southern Illinois University Carbondale, Carbondale, IL, 62901, USA.
Environ Monit Assess. 2023 Jan 23;195(2):320. doi: 10.1007/s10661-023-10918-2.
Sustainable management of the US Army installations is critical for military training and readiness of forces. However, monitoring military training-induced vegetation cover disturbances using remote sensing data is challenging due to the lack of methodology for optimizing the selection of spectral variables or predictors and spatial modeling methods. This study aimed to propose and demonstrate a methodological solution for this purpose. The study was conducted in the Fort Riley installation in which three training areas were selected to map and monitor the training-induced vegetation cover loss. Sentinel-2 images and field observations of percentage vegetation cover (PVC) were combined at a spatial resolution of 10 m by 10 m to map PVC and its dynamics by comparison of two predictor selection methods and five spatial modeling algorithms based on a total of 304 spectral variables from the images before and after the training. Results showed that overall, the correlation-based predictor selection method reduced the relative root mean square error (RRMSE) of PVC predictions by 4.44% than the random forest (RF)-based predictor selection. Machine learning methods including RF, neural network, and support vector machine overall reduced the RRMSE of PVC predictions by 42.83% compared with multiple linear regression and k-nearest neighbors. Combining correlation-based predictor selection and RF modeling, coupled with leave one out cross validation, provided the greatest potential of increasing the accuracy of monitoring the vegetation cover loss. The findings provided useful implications to develop a near real-time system of monitoring military training-induced vegetation cover loss.
美国陆军设施的可持续管理对军事训练和部队战备至关重要。然而,由于缺乏优化光谱变量或预测因子选择以及空间建模方法的方法,使用遥感数据监测军事训练引起的植被覆盖干扰具有挑战性。本研究旨在为此目的提出并展示一种方法解决方案。该研究在莱利堡进行,其中选择了三个训练区来绘制和监测训练引起的植被覆盖损失。哨兵-2 图像和实地观察的植被百分比(PVC)覆盖相结合,空间分辨率为 10 m x 10 m,通过比较两种预测因子选择方法和基于图像中 304 个光谱变量的五种空间建模算法,对 PVC 及其动态进行映射。结果表明,总体而言,基于相关性的预测因子选择方法比基于随机森林(RF)的预测因子选择方法减少了 PVC 预测的相对均方根误差(RRMSE)4.44%。与多元线性回归和 K-最近邻相比,机器学习方法包括 RF、神经网络和支持向量机总体减少了 PVC 预测的 RRMSE 42.83%。结合基于相关性的预测因子选择和 RF 建模,并结合留一法交叉验证,为提高监测植被覆盖损失的准确性提供了最大的潜力。研究结果为开发监测军事训练引起的植被覆盖损失的近实时系统提供了有用的启示。