基于随机森林混合模型的鄱阳湖局部地形遥感反演
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江西师范大学地理与环境学院

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国家自然科学基金项目(面上项目,重点项目,重大项目)


Remote Sensing Inversion of Local Topography in Poyang Lake Using a Hybrid Random Forest Model
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1.School of Geography and Environment, Jiangxi Normal University;2.School of Geography and Environment, Jiangxi Normal University&Key Laboratory of Poyang Lake Wetland and Watershed Research

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    摘要:

    湖泊地形作为地理环境的核心要素,在地理研究中具有多维度的重要意义,尤其在地表过程中对水文及水动力过程模拟研究具有关键性的影响。传统大型湖泊地形数据获取手段投入大、耗时长、更新周期慢,因此有必要研究一种基于卫星遥感数据快速获取湖泊地形的方法。本文基于陆地卫星(Landsat)遥感影像与实测高程数据,采用随机森林算法(RF)反演鄱阳湖枯水期局部地形。针对地形特征的空间非平稳性及预测残差的空间自相关性,融合地理加权回归(GWR)与普通克里金(OK)法对反演结果进行优化,并对其误差进行分析。结果表明:(1)相比RF,地理加权回归随机森林克里金混合模型(GWR-RF-OK)精度明显提高,两个研究区实测高程与反演高程的决定系数(R2)均上升,平均绝对误差(MAE)和平均相对误差(MRE)均下降。(2)混合模型在土地覆盖类型单一的裸滩区和土地覆盖类型相对复杂的鄱阳湖南矶湿地国家级自然保护区(以下简称南矶湿地区)都有较好的反演效果,R2分别为0.71、0.56,MAE分别为0.34m、0.35m,MRE分别为5.26%、3.06%。经分段分析,模型在地形高程大于10m的区域反演效果更佳。(3)地形起伏程度和土地覆盖类型会影响反演精度,地形平缓区域误差显著小于陡峭区域,同类地表覆被在土地覆盖类型单一区域的地形反演精度明显优于多种土地覆盖类型混合区域。

    Abstract:

    Abstract: Lake topography, as a core element of the geographical environment, holds multifaceted significance in geographical research. It exerts fundamental influence on surface processes, particularly in hydrological and hydrodynamic modeling. Given that traditional methods for acquiring bathymetric data in large lakes are cost-intensive, time-consuming, and yield infrequent updates, it is imperative to develop rapid satellite remote sensing-based approaches for lake topography mapping. This study utilizes the Random Forest (RF) algorithm combined with Landsat remote sensing imagery and measured elevation data to inverse the local topography of Poyang Lake during the dry season. To address the spatial non-stationarity of topographic features and the spatial autocorrelation of prediction residuals, this study integrates Geographically Weighted Regression (GWR) with Ordinary Kriging (OK) methods to optimize the inversion results and analyzes its errors. The results show that: (1) compared with the RF model, the accuracy of the geographically weighted regression random forest kriging hybrid model (GWR-RF-OK) is significantly improved, and the coefficient of determination (R2) of the measured and inverted elevations in the two study areas are increased, and the mean absolute error (MAE) and mean relative error (MRE) are decreased. (2) The hybrid model has better inversion effect in both the bare beach area with single surface cover type and the Nanji Wetland National Nature Reserve of Poyang Lake (hereinafter referred to as Nanji Wetland Area), which has relatively complex surface cover types, with the R2 of 0.71 and 0.56, the MAE of 0.34m and 0.35m, and the MRE of 5.26% and 3.06%, respectively. After segmentation analysis, the model has better inversion effect in areas with topographic elevation greater than 10m. (3) The degree of topographic relief and the type of surface cover affects the accuracy of the inversion, with the error being smaller in areas with gentle topography than in areas with steep topography, and the accuracy of the topographic inversion of the same type of surface cover in areas with a single surface cover is significantly better than that in areas with a mixture of multiple surface cover types.

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  • 收稿日期:2025-08-03
  • 最后修改日期:2026-04-11
  • 录用日期:2025-09-12
  • 在线发布日期: 2025-11-06
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