NMMI:用于区域特征空间格局分析的质量紧致度量

Wenwen Li, Tingyong Chen, E. Wentz, C. Fan
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引用次数: 19

摘要

空间格局分析在理解地理现象、识别原因、预测未来趋势等方面发挥着重要作用。传统的模式分析工具基于非空间属性的分布来评估地理特征的聚类或分散模式。这些度量忽略了空间对象的形状——这是一个关键的考虑因素。另一方面,形状分析的研究仅仅基于几何来测量一个面特征的紧致性、伸长率或凸性,而不考虑其属性分布的模式。本文报告了我们在开发一种称为归一化质量惯性矩(NMMI)的新模式分析方法方面所做的努力,该方法将形状和非空间属性集成到紧凑模式的分析中。NMMI基于物理学中一个众所周知的概念——质量惯性矩——并且能够检测一些连续属性在一个面特征上的集中或扩散程度。我们称之为质量紧致度。当属性均匀分布在特征上时,该度量可以简化为形状紧密度度量。首先描述了NMMI的理论模型和计算方法,然后通过一系列实验证明了其良好的性能。我们进一步讨论了这种方法在城市扩张和政治区划方面的潜在广泛应用。在政治选区的背景下,一个国会选区的NMMI越高,表示不公平划分的程度越低,反之亦然。这项工作通过引入这种新的、有效的、高效的质量密实度测量方法,对空间格局和形状分析做出了原创和独特的贡献,该方法同时考虑了几何和空间分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
NMMI: A Mass Compactness Measure for Spatial Pattern Analysis of Areal Features
Spatial pattern analysis plays an important role in geography for understanding geographical phenomena, identifying causes, and predicting future trends. Traditional pattern analysis tools assess cluster or dispersed patterns of geographical features based on the distribution of nonspatial attributes. These metrics ignore the shape of spatial objects—a critical consideration. The study of shape analysis, on the other hand, measures the compactness, elongation, or convexity of an areal feature based merely on geometry, without considering patterns of its attribute distribution. This article reports our efforts in developing a new pattern analysis method called the normalized mass moment of inertia (NMMI) that integrates both shape and nonspatial attributes into the analysis of compactness patterns. The NMMI is based on a well-known concept in physics—the mass moment of inertia—and is capable of detecting the degree of concentration or diffusion of some continuous attribute on an areal feature. We termed this the mass compactness. This measure can be reduced to a shape compactness measure when the attribute is evenly distributed on the feature. We first describe the theoretical model of the NMMI and its computation and then demonstrate its good performance through a series of experiments. We further discuss potentially broad applications of this approach in the contexts of urban expansion and political districting. In the political districting context, higher NMMI of a congressional district suggests a lower degree of gerrymander and vice versa. This work makes an original and unique contribution to spatial pattern and shape analysis by introducing this new, effective, and efficient measure of mass compactness that accounts for both geometric and spatial distribution.
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