Feng Yongjiu, Tong Xiaohua
College of Marine Sciences, Shanghai Ocean University, Shanghai, 201306, China.
Key Laboratory of Sustainable Exploitation of Oceanic Fisheries Resources, Shanghai Ocean University, Shanghai, 201306, China.
Environ Monit Assess. 2017 Sep 22;189(10):515. doi: 10.1007/s10661-017-6224-8.
Defining transition rules is an important issue in cellular automaton (CA)-based land use modeling because these models incorporate highly correlated driving factors. Multicollinearity among correlated driving factors may produce negative effects that must be eliminated from the modeling. Using exploratory regression under pre-defined criteria, we identified all possible combinations of factors from the candidate factors affecting land use change. Three combinations that incorporate five driving factors meeting pre-defined criteria were assessed. With the selected combinations of factors, three logistic regression-based CA models were built to simulate dynamic land use change in Shanghai, China, from 2000 to 2015. For comparative purposes, a CA model with all candidate factors was also applied to simulate the land use change. Simulations using three CA models with multicollinearity eliminated performed better (with accuracy improvements about 3.6%) than the model incorporating all candidate factors. Our results showed that not all candidate factors are necessary for accurate CA modeling and the simulations were not sensitive to changes in statistically non-significant driving factors. We conclude that exploratory regression is an effective method to search for the optimal combinations of driving factors, leading to better land use change models that are devoid of multicollinearity. We suggest identification of dominant factors and elimination of multicollinearity before building land change models, making it possible to simulate more realistic outcomes.
定义转换规则是基于元胞自动机(CA)的土地利用建模中的一个重要问题,因为这些模型纳入了高度相关的驱动因素。相关驱动因素之间的多重共线性可能会产生负面影响,必须在建模过程中予以消除。我们根据预先定义的标准进行探索性回归,从影响土地利用变化的候选因素中确定了所有可能的因素组合。评估了包含五个符合预先定义标准的驱动因素的三种组合。利用选定的因素组合,构建了三个基于逻辑回归的CA模型,以模拟中国上海2000年至2015年的动态土地利用变化。为了进行比较,还应用了一个包含所有候选因素的CA模型来模拟土地利用变化。使用消除了多重共线性的三个CA模型进行的模拟比包含所有候选因素的模型表现更好(准确率提高了约3.6%)。我们的结果表明,并非所有候选因素对于准确的CA建模都是必要的,并且模拟对统计上不显著的驱动因素的变化不敏感。我们得出结论,探索性回归是寻找驱动因素最佳组合的有效方法,可导致更好的、不存在多重共线性的土地利用变化模型。我们建议在建立土地变化模型之前识别主导因素并消除多重共线性,从而有可能模拟出更现实的结果。