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Integration of genetic algorithm and multiple kernel support vector regression for modeling urban growth

机译:遗传算法与多核支持向量回归的集成,用于城市增长建模

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There are two main issues of concern for land change scientists to consider. First, selecting appropriate and independent land cover change (LCC) drivers is a substantial challenge because these drivers usually correlate with each other. For this reason, we used a well-known machine learning tool called genetic algorithm (GA) to select the optimum LCC drivers. In addition, using the best or most appropriate LCC model is critical since some of them are limited to a specific function, to discover non-linear patterns within land use data. In this study, a support vector regression (SVR) was implemented to model LCC as SVRs use Various linear and non-linear kernels to better identify non-linear patterns within land use data. With such an approach, choosing the appropriate kernels to model LCC is critical because SVR kernels have a direct impact on the accuracy of the model. Therefore, various linear and non-linear kernels, including radial basis function (RBF), sigmoid (SIG), polynomial (PL) and linear (LN) kernels, were used across two phases: 1) in combination with GA, and 2) without GA present. The simulated maps resulting from each combination were evaluated using a recently modified version of the receiver operating characteristics (ROC) tool called the total operating characteristic (TOC) tool. The proposed approach was applied to simulate urban growth in Rasht County, which is located in the north of Iran. As a result, an SVR-GA-RBF model achieved the highest area under curve (AUC) value at 94% while the lowest AUC was achieved when using the SVR-LN model at 71%. The results show that the synergy between GA and SVR can effectively optimize the variables selection process used when developing an LCC model, and can enhance the predictive accuracy of SVR. (C) 2017 Elsevier Ltd. All rights reserved.
机译:土地变化科学家要考虑两个主要问题。首先,选择适当和独立的土地覆被变化(LCC)驱动程序是一项重大挑战,因为这些驱动程序通常相互关联。因此,我们使用了一种称为遗传算法(GA)的著名机器学习工具来选择最佳LCC驱动程序。此外,使用最佳或最适当的LCC模型至关重要,因为其中一些模型仅限于特定功能,以发现土地利用数据中的非线性模式。在这项研究中,实施了支持向量回归(SVR)来对LCC进行建模,因为SVR使用各种线性和非线性内核来更好地识别土地利用数据中的非线性模式。使用这种方法,选择合适的内核来对LCC建模至关重要,因为SVR内核会直接影响模型的准确性。因此,跨两个阶段使用了各种线性和非线性内核,包括径向基函数(RBF),Sigmoid(SIG),多项式(PL)和线性(LN)内核:1)与GA结合使用,以及2)没有GA存在。使用最近修改的接收器工作特征(ROC)工具(称为总工作特征(TOC)工具)评估了每种组合产生的模拟图。拟议的方法被应用于模拟伊朗北部拉什特县的城市发展。结果,当使用SVR-LN模型时,SVR-GA-RBF模型的最高曲线下面积(AUC)值为94%,而使用SVR-LN模型时的最低AUC值为71%。结果表明,GA和SVR之间的协同作用可以有效地优化开发LCC模型时使用的变量选择过程,并可以提高SVR的预测准确性。 (C)2017 Elsevier Ltd.保留所有权利。

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