Department of Biology, One Bear Place #97388, Baylor University, Waco, Texas 76798, USA.
Ecol Appl. 2011 Apr;21(3):968-82. doi: 10.1890/10-0202.1.
Wetlands generally provide significant ecosystem services and function as important harbors of biodiversity. To ensure that these habitats are conserved, an efficient means of identifying wetlands at risk of conversion is needed, especially in the southern United States where the rate of wetland loss has been highest in recent decades. We used multivariate adaptive regression splines to develop a model to predict the risk of wetland habitat loss as a function of wetland features and landscape context. Fates of wetland habitats from 1992 to 1997 were obtained from the National Resources Inventory for the U.S. Forest Service's Southern Region, and land-cover data were obtained from the National Land Cover Data. We randomly selected 70% of our 40 617 observations to build the model (n = 28 432), and randomly divided the remaining 30% of the data into five Test data sets (n = 2437 each). The wetland and landscape variables that were important in the model, and their relative contributions to the model's predictive ability (100 = largest, 0 = smallest), were land-cover/ land-use of the surrounding landscape (100.0), size and proximity of development patches within 570 m (39.5), land ownership (39.1), road density within 570 m (37.5), percent woody and herbaceous wetland cover within 570 m (27.8), size and proximity of development patches within 5130 m (25.7), percent grasslands/herbaceous plants and pasture/hay cover within 5130 m (21.7), wetland type (21.2), and percent woody and herbaceous wetland cover within 1710 m (16.6). For the five Test data sets, Kappa statistics (0.40, 0.50, 0.52, 0.55, 0.56; P < 0.0001), area-under-the-receiver-operating-curve (AUC) statistics (0.78, 0.82, 0.83, 0.83, 0.84; P < 0.0001), and percent correct prediction of wetland habitat loss (69.1, 80.4, 81.7, 82.3, 83.1) indicated the model generally had substantial predictive ability across the South. Policy analysts and land-use planners can use the model and associated maps to prioritize at-risk wetlands for protection, evaluate wetland habitat connectivity, predict future conversion of wetland habitat based on projected land-use trends, and assess the effectiveness of wetland conservation programs.
湿地通常提供重要的生态系统服务,并作为生物多样性的重要港湾。为了确保这些栖息地得到保护,需要一种有效的方法来识别有转化风险的湿地,特别是在美国南部,那里的湿地损失率在最近几十年一直是最高的。我们使用多元自适应回归样条来建立一个模型,以预测湿地生境丧失的风险,作为湿地特征和景观背景的函数。1992 年至 1997 年湿地生境的命运是从美国林务局南部地区的国家资源清查中获得的,土地覆盖数据是从国家土地覆盖数据中获得的。我们随机选择了我们 40617 个观测值的 70%来建立模型(n = 28432),并将剩余的 30%的数据随机分为五个测试数据集(n = 2437 个)。模型中重要的湿地和景观变量及其对模型预测能力的相对贡献(100=最大,0=最小)是周围景观的土地覆盖/土地利用(100.0)、570 米内发展斑块的大小和接近度(39.5)、土地所有权(39.1)、570 米内道路密度(37.5)、570 米内木本和草本湿地覆盖的百分比(27.8)、5130 米内发展斑块的大小和接近度(25.7)、5130 米内草地/草本植物和牧场/干草覆盖的百分比(21.7)、湿地类型(21.2)和 1710 米内木本和草本湿地覆盖的百分比(16.6)。对于五个测试数据集,Kappa 统计量(0.40、0.50、0.52、0.55、0.56;P<0.0001)、面积下的接收者操作特征曲线(AUC)统计量(0.78、0.82、0.83、0.83、0.84;P<0.0001)和湿地生境丧失的正确预测百分比(69.1、80.4、81.7、82.3、83.1)表明,该模型总体上在南部地区具有很强的预测能力。政策分析人员和土地利用规划者可以使用该模型和相关地图来确定需要保护的高风险湿地,评估湿地生境的连通性,根据预测的土地利用趋势预测湿地生境的未来转化,并评估湿地保护计划的有效性。