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Lessons learned implementing an operational continuous United States national land change monitoring capability: The Land Change Monitoring, Assessment, and Projection (LCMAP) approach

机译:验证在实施运营持续美国国家土地变革监测能力:土地变更监测,评估和投影(LCMAP)方法

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Growing demands for temporally specific information on land surface change are fueling a new generation of maps and statistics that can contribute to understanding geographic and temporal patterns of change across large regions, provide input into a wide range of environmental modeling studies, clarify the drivers of change, and provide more timely information for land managers. To meet these needs, the U.S. Geological Survey has implemented a capability to monitor land surface change called the Land Change Monitoring, Assessment, and Projection (LCMAP) initiative. This paper describes the methodological foundations and lessons learned during development and testing of the LCMAP approach. Testing and evaluation of a suite of 10 annual land cover and land surface change data sets over six diverse study areas across the United States revealed good agreement with other published maps (overall agreement ranged from 73% to 87%) as well as several challenges that needed to be addressed to meet the goals of robust, repeatable, and geographically consistent monitoring results from the Continuous Change Detection and Classification (CCDC) algorithm. First, the high spatial and temporal variability of observational frequency led to differences in the number of changes identified, so CCDC was modified such that change detection is dependent on observational frequency. Second, the CCDC classification methodology was modified to improve its ability to characterize gradual land surface changes. Third, modifications were made to the classification element of CCDC to improve the representativeness of training data, which necessitated replacing the random forest algorithm with a boosted decision tree. Following these modifications, assessment of prototype Version 1 LCMAP results showed improvements in overall agreement (ranging from 85% to 90%).
机译:对临时特定信息的需求不断增长的关于陆地表面变化的信息正在推动新一代地图和统计数据,可以有助于了解大型地区的地理和时间模式,为广泛的环境建模研究提供输入,阐明了变化的驱动因素,并为土地管理人员提供更及时的信息。为了满足这些需求,美国地质调查已经实施了监测土地变化监测,评估和预测(LCMAP)倡议的土地表面变化的能力。本文介绍了在LCMAP方法的开发和测试期间汲取的方法论基础和经验教训。在美国的六个多样化的研究领域套房套件的测试和评估显示出与其他公布地图的良好协议(总协议范围从73%到87%)以及几个挑战需要解决,以满足强大,可重复的,地理上一致的监测结果,来自连续变化检测和分类(CCDC)算法。首先,观测频率的高空间和时间可变性导致所识别的变化次数的差异,因此CCDC被修改,使得变化检测取决于观察频率。其次,修改了CCDC分类方法,以提高其表征逐渐陆地表面变化的能力。第三,对CCDC的分类元素进行了修改,以提高培训数据的代表性,这需要用升压决策树替换随机林算法。在这些修改之后,原型版本1 LCMAP结果的评估显示总体协议的改进(范围从85%到90%)。

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