Shafizadeh-Moghadam Hossein, Tayyebi Amin, Helbich Marco
Department of GIS & RS, Tarbiat Modares University, Tehran, Iran.
Institute of Geography, University of Heidelberg, Heidelberg, Germany.
Environ Monit Assess. 2017 Jun;189(6):300. doi: 10.1007/s10661-017-5986-3. Epub 2017 May 29.
Transition index maps (TIMs) are key products in urban growth simulation models. However, their operationalization is still conflicting. Our aim was to compare the prediction accuracy of three TIM-based spatially explicit land cover change (LCC) models in the mega city of Mumbai, India. These LCC models include two data-driven approaches, namely artificial neural networks (ANNs) and weight of evidence (WOE), and one knowledge-based approach which integrates an analytical hierarchical process with fuzzy membership functions (FAHP). Using the relative operating characteristics (ROC), the performance of these three LCC models were evaluated. The results showed 85%, 75%, and 73% accuracy for the ANN, FAHP, and WOE. The ANN was clearly superior compared to the other LCC models when simulating urban growth for the year 2010; hence, ANN was used to predict urban growth for 2020 and 2030. Projected urban growth maps were assessed using statistical measures, including figure of merit, average spatial distance deviation, producer accuracy, and overall accuracy. Based on our findings, we recomend ANNs as an and accurate method for simulating future patterns of urban growth.
转移指数图(TIMs)是城市增长模拟模型中的关键产物。然而,其操作仍存在冲突。我们的目的是比较印度孟买这座特大城市中三种基于TIM的空间明确土地覆盖变化(LCC)模型的预测准确性。这些LCC模型包括两种数据驱动方法,即人工神经网络(ANNs)和证据权重(WOE),以及一种将层次分析法与模糊隶属函数相结合的基于知识的方法(FAHP)。使用相对操作特征(ROC)对这三种LCC模型的性能进行了评估。结果显示,ANN、FAHP和WOE的准确率分别为85%、75%和73%。在模拟2010年城市增长时,ANN明显优于其他LCC模型;因此,使用ANN来预测2020年和2030年的城市增长。使用包括品质因数、平均空间距离偏差、生产者精度和总体精度在内的统计指标对预测的城市增长图进行了评估。基于我们的研究结果,我们推荐ANN作为一种准确的方法来模拟未来城市增长模式。