Aspinall Richard
Department of Earth Sciences, Geographic Information and Analysis Center, Montana State University, Bozeman, MT, USA.
J Environ Manage. 2004 Aug;72(1-2):91-103. doi: 10.1016/j.jenvman.2004.02.009.
This paper develops an approach to modelling land use change that links model selection and multi-model inference with empirical models and GIS. Land use change is frequently studied, and understanding gained, through a process of modelling that is an empirical analysis of documented changes in land cover or land use patterns. The approach here is based on analysis and comparison of multiple models of land use patterns using model selection and multi-model inference. The approach is illustrated with a case study of rural housing as it has developed for part of Gallatin County, Montana, USA. A GIS contains the location of rural housing on a yearly basis from 1860 to 2000. The database also documents a variety of environmental and socio-economic conditions. A general model of settlement development describes the evolution of drivers of land use change and their impacts in the region. This model is used to develop a series of different models reflecting drivers of change at different periods in the history of the study area. These period specific models represent a series of multiple working hypotheses describing (a) the effects of spatial variables as a representation of social, economic and environmental drivers of land use change, and (b) temporal changes in the effects of the spatial variables as the drivers of change evolve over time. Logistic regression is used to calibrate and interpret these models and the models are then compared and evaluated with model selection techniques. Results show that different models are 'best' for the different periods. The different models for different periods demonstrate that models are not invariant over time which presents challenges for validation and testing of empirical models. The research demonstrates (i) model selection as a mechanism for rating among many plausible models that describe land cover or land use patterns, (ii) inference from a set of models rather than from a single model, (iii) that models can be developed based on hypothesised relationships based on consideration of underlying and proximate causes of change, and (iv) that models are not invariant over time.
本文提出了一种土地利用变化建模方法,该方法将模型选择和多模型推断与实证模型及地理信息系统(GIS)相结合。土地利用变化常通过建模过程进行研究并增进理解,该建模过程是对已记录的土地覆盖或土地利用模式变化的实证分析。此处的方法基于使用模型选择和多模型推断对多种土地利用模式模型进行分析和比较。以美国蒙大拿州加拉廷县部分地区农村住房的发展情况为例对该方法进行了说明。一个GIS包含了1860年至2000年每年农村住房的位置。该数据库还记录了各种环境和社会经济状况。一个聚落发展的通用模型描述了土地利用变化驱动因素的演变及其在该地区的影响。此模型用于开发一系列不同模型,反映研究区域历史上不同时期的变化驱动因素。这些特定时期的模型代表了一系列多个工作假设,描述了(a)作为土地利用变化的社会、经济和环境驱动因素表征的空间变量的影响,以及(b)随着变化驱动因素随时间演变,空间变量影响的时间变化。逻辑回归用于校准和解释这些模型,然后使用模型选择技术对这些模型进行比较和评估。结果表明,不同时期有不同的“最佳”模型。不同时期的不同模型表明,模型并非随时间不变,这给实证模型的验证和测试带来了挑战。该研究证明了(i)模型选择作为在众多描述土地覆盖或土地利用模式的合理模型中进行评级评估的一种机制,(ii)从一组模型而非单个模型进行推断,(iii)可以基于对变化的潜在和直接原因的考虑所假设的关系来开发模型,以及(iv)模型并非随时间不变。