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首页> 外文期刊>International Journal of Geographical Information Science >Developing a multi-network urbanization model: A case study of urban growth in Denver, Colorado
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Developing a multi-network urbanization model: A case study of urban growth in Denver, Colorado

机译:建立多网络城市化模型:以科罗拉多州丹佛市的城市发展为例

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摘要

Urbanization is an important issue concerning diverse scientific and policy communities. Computational models quantifying locations and quantities of urban growth offer numerous environmental and socioeconomic benefits. Traditional urban growth models are based on a single-algorithm fitting procedure and thus restricted on their ability to capture spatial heterogeneity. Accordingly, a GIS-based modeling framework titled multi-network urbanization (MuNU) model is developed that integrates multiple neural networks. The MuNU model enables a filtering approach where input data patterns are automatically reallocated into appropriate neural networks with targeted accuracies. We hypothesize that observations classified by individual neural networks share greater homogeneity, and thus modeling accuracy will increase with the integration of multiple targeted algorithms. Land use and land cover data sets of two time snapshots (1977 and 1997) covering the Denver Metropolitan Area are used for model training and validation. Compared to a single-step algorithm - either a stepwise logistic regression or a single neural network - several improvements are evident in the visual output of the MuNU model. Statistical validations further quantify the superiority of the MuNU model and support our hypothesis of effective incorporation of spatial heterogeneity.
机译:城市化是涉及不同科学和政策社区的重要问题。量化城市增长的地点和数量的计算模型提供了许多环境和社会经济效益。传统的城市增长模型基于单一算法的拟合程序,因此受限于其捕获空间异质性的能力。因此,开发了一个基于GIS的建模框架,名为多网络城市化(MuNU)模型,该框架集成了多个神经网络。 MuNU模型启用了一种过滤方法,其中输入数据模式会自动重新分配到具有目标精度的适当神经网络中。我们假设由单个神经网络分类的观测值具有更高的同质性,因此建模精度将随着多个目标算法的集成而增加。覆盖丹佛都会区的两个时间快照(1977年和1997年)的土地利用和土地覆盖数据集用于模型训练和验证。与单步算法(逐步逻辑回归或单个神经网络)相比,MuNU模型的视觉输出具有明显的改进。统计验证进一步量化了MuNU模型的优越性,并支持我们关于有效纳入空间异质性的假设。

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