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Assessing spatial and attribute errors in large national datasets for population distribution models: a case study of Philadelphia county schools

机译:在人口分布模型的大型国家数据集中评估空间和属性误差:以费城县学校为例

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Geospatial technologies and digital data have developed and disseminated rapidly in conjunction with increasing computing efficiency and Internet availability. The ability to store and transmit large datasets has encouraged the development of national infrastructure datasets in geospatial formats. National datasets are used by numerous agencies for analysis and modeling purposes because these datasets are standardized and considered to be of acceptable accuracy for national scale applications. At Oak Ridge National Laboratory a population model has been developed that incorporates national schools data as one of the model inputs. This paper evaluates spatial and attribute inaccuracies present within two national school datasets, Tele Atlas North America and National Center of Education Statistics (NCES).Schools are an important component of the population model, because they are spatially dense clusters of vulnerable populations. It is therefore essential to validate the quality of school input data. Schools were also chosen since a validated schools dataset was produced in geospatial format for Philadelphia County; thereby enabling a comparison between a local dataset and the national datasets.Analyses found the national datasets are not standardized and incomplete, containing 76 to 90 percent of existing schools. The temporal accuracy of updating annual enrollment values resulted in 89 percent inaccuracy for 2003. Spatial rectification was required for 87 percent of NCES points, of which 58 percent of the errors were attributed to the geocoding process. Lastly, it was found that by combining the two national datasets, the resultant dataset provided a more useful and accurate solution.
机译:随着计算效率和互联网可用性的提高,地理空间技术和数字数据已得到迅速发展和传播。存储和传输大型数据集的能力鼓励以地理空间格式开发国家基础设施数据集。许多机构将国家数据集用于分析和建模目的,因为这些数据集已标准化并且被认为对于国家规模的应用具有可接受的准确性。在橡树岭国家实验室,人们开发了人口模型,该模型将国立学校的数据作为模型输入之一。本文评估了北美国家地图集和美国国家教育统计中心(NCES)这两个国家学校数据集中存在的空间和属性误差。学校是人口模型的重要组成部分,因为它们是脆弱人口的空间密集集群。因此,至关重要的是验证学校输入数据的质量。还选择了学校,因为已为费城县以地理空间格式生成了经过验证的学校数据集;分析发现,国家数据集不规范且不完整,包含现有学校的76%至90%。更新年度注册值的时间准确性导致2003年的不准确性为89%。需要对87%的NCES点进行空间校正,其中58%的错误归因于地理编码过程。最后,发现通过组合两个国家数据集,所得数据集提供了更有用和准确的解决方案。

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