Wang Xiao, Liu Haixin, Sun Zhenyu, Han Xiaoqing
College of Mining and Geomatics, Hebei University of Engineering, Handan, China.
Jizhong Energy Fengfeng Group Company Limited, Gaokai District, Handan, China.
Heliyon. 2024 Sep 4;10(17):e37426. doi: 10.1016/j.heliyon.2024.e37426. eCollection 2024 Sep 15.
Drought has a significant impact on crop growth and productivity, highlighting the critical need for precise and timely soil moisture estimation to mitigate agricultural losses. This study focuses on soil moisture retrieval in northern Hebei Province during July 2012, utilizing eight widely employed remote sensing drought indices derived from MODIS satellite data. These indices were cross-referenced with measured soil moisture levels for analysis. Based on their correlation coefficients, a composite remote sensing drought index set comprising six indices was identified. Furthermore, a radial basis function neural network (RBFNN) was employed to estimate soil relative humidity. The accuracy evaluation of the soil moisture estimation model, which integrates multiple remote sensing drought indices and the RBFNN, demonstrated clear superiority over models relying on single drought indices. The model achieved an average estimation accuracy of 87.54 % for soil relative humidity at a depth of 10 cm (SM10) and 87.36 % for a 20 cm depth (SM20). The root mean square errors (RMSE) for the test sets were 0.093 and 0.092, respectively. Validation results for July 2013 indicated that the inversion accurately reflected the actual soil moisture conditions, effectively capturing dynamic moisture changes. These results fully verify the reliability and practicability of the model. These findings introduce a novel approach to local agricultural soil moisture estimation, with significant implications for enhancing agricultural water resource management and decision-making processes.
干旱对作物生长和生产力有重大影响,凸显了精确及时估算土壤湿度以减轻农业损失的迫切需求。本研究聚焦于2012年7月河北省北部的土壤湿度反演,利用从MODIS卫星数据得出的八个广泛使用的遥感干旱指数。这些指数与实测土壤湿度水平进行交叉参考以进行分析。基于它们的相关系数,确定了一个由六个指数组成的综合遥感干旱指数集。此外,采用径向基函数神经网络(RBFNN)来估算土壤相对湿度。对整合了多个遥感干旱指数和RBFNN的土壤湿度估算模型的准确性评估表明,其明显优于依赖单一干旱指数的模型。该模型对10厘米深度(SM10)的土壤相对湿度的平均估算准确率达到87.54%,对20厘米深度(SM20)的平均估算准确率达到87.36%。测试集的均方根误差(RMSE)分别为0.093和0.092。2013年7月的验证结果表明,反演准确反映了实际土壤湿度状况,有效捕捉了动态湿度变化。这些结果充分验证了该模型的可靠性和实用性。这些发现为当地农业土壤湿度估算引入了一种新方法,对加强农业水资源管理和决策过程具有重要意义。