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Optimization of adaptive neuro fuzzy inference system based urban growth model

机译:基于城市增长模型的自适应神经模糊推理系统的优化

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Abstract Background Global urban population has increased from 22.9 % in 1985 to 47 % in 2010. In Iran, population living in urban areas has consistently increased from about 31 % in 1956 to 68.4 % in 2006. Urban growth as one of the results of rapid population growth, results lots of problems. Thus, monitoring and modelling of the urban expansion is necessary. Methods In this research, a novel Adaptive Neuro Fuzzy Inference System (ANFIS)-based methodology has been developed for urban growth modeling, as well as interpreting the relationship between the drivers of urbanization. Then, ANFIS results were compared with those achieved by both ANN and Logistic Regression (LR)-based methodologies using Percent Area Match quantity and Percent Area Match location to assess model goodness of fit. Results The proposed ANFIS model which takes the advantages of using neural networks and fuzzy logic at the same time, had the best performances among the three implemented models. It was able to identify important factors in the development and their relationship and influence on the growth of the city. Conclusions The research aim is to find a computational based method which can effectively capture, analyse and model the complex nature of spatial phenomenon like urban growth. The proposed ANFIS method due to its structure is able to deals with nonlinear phenomenon. Integration of Remote sensing data, GIS tools and also, computational based method provide us an effective, reliable and also, scientific methods for monitoring, analysing and modeling of environmental phenomenon.
机译:摘要背景全球城市人口已从1985年的22.9%增加到2010年的47%。在伊朗,居住在城市地区的人口一直从1956年的约31%增长到2006年的68.4%。城市发展是快速增长的结果之一人口增长,导致很多问题。因此,有必要对城市扩张进行监测和建模。方法在本研究中,已经开发了一种新颖的基于自适应神经模糊推理系统(ANFIS)的方法来进行城市增长建模,并解释城市化驱动因素之间的关系。然后,将ANFIS结果与使用面积匹配百分比和位置匹配位置评估基于模型的拟合优度的ANN和基于逻辑回归(LR)的方法所获得的结果进行比较。结果所提出的ANFIS模型具有同时使用神经网络和模糊逻辑的优势,在三种实现的模型中具有最佳性能。它能够确定发展中的重要因素及其与城市发展的关系和影响。结论研究目的是要找到一种基于计算的方法,该方法可以有效地捕获,分析和建模像城市增长这样的空间现象的复杂性质。所提出的ANFIS方法由于其结构而能够处理非线性现象。遥感数据,GIS工具以及基于计算的方法的集成为我们提供了一种有效,可靠且科学的方法来监测,分析和建模环境现象。

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