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Using the ART-MMAP neural network to model and predict urban growth: a spatiotemporal data mining approach

机译:使用ART-MMAP神经网络建模和预测城市增长:时空数据挖掘方法

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Predicting patterns of urban growth will be a major challenge for policy makers and environmental scientists in the 21st century. How cities grow-their shape and size-will have enormous implications for environmental sustainability and infrastructure needs. This paper presents a spatiotemporal ART-MMAP neural method to simulate and predict urban growth. Factors that affect urban growth-that is, transportation routes, land use, and topography-were directly used as inputs to the neural network model for model calibration. The calibrated network was then applied to a study site-St Louis, Missouri-to predict future urban growth and to examine future land development scenarios. This paper also introduces an effective and straightforward method for model validation and accuracy assessment, the prediction error matrix, which has been used in the pattern recognition field for several decades. In order to assess the performance of the neural network model, an in-depth accuracy assessment was conducted in which the model results were compared against a null model, an alternative naive model, and two random models. The neural network model consistently outperformed the naive model and two random models, and produced similar or better results than the null model. Furthermore, we evaluated the models' performance at different spatial resolutions. The prediction accuracy increases when spatial resolution becomes coarser. One particularly interesting result is that when the results are aggregated to 1 km spatial resolution, there is 100% accuracy of urban growth predicted by the neural network model versus actual urban growth.
机译:预测城市增长方式将是21世纪决策者和环境科学家的主要挑战。城市的发展方式(形状和规模)将对环境可持续性和基础设施需求产生巨大影响。本文提出了一种时空ART-MMAP神经方法来模拟和预测城市增长。影响城市增长的因素(即运输路线,土地使用和地形)直接用作神经网络模型的输入,以进行模型校准。然后将校准后的网络应用到密苏里州圣路易斯的研究地点,以预测未来的城市增长并检查未来的土地开发方案。本文还介绍了一种有效而直接的用于模型验证和准确性评估的方法,即预测误差矩阵,该方法已在模式识别领域使用了数十年。为了评估神经网络模型的性能,进行了深入的准确性评估,其中将模型结果与null模型,备用naive模型和两个随机模型进行了比较。神经网络模型始终优于朴素模型和两个随机模型,并且比空模型产生相似或更好的结果。此外,我们评估了模型在不同空间分辨率下的性能。当空间分辨率变粗时,预测精度会提高。一个特别有趣的结果是,当将结果汇总到1 km的空间分辨率时,神经网络模型预测的城市增长与实际城市增长的准确度为100%。

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