Modelling of Expansion Changes of Vilnius City Area and Impacts on Landscape Patterns Using an Artificial Neural Network

M. Mirsanjari, J. S. Visockienė, F. Mohammadyari, A. Zarandian
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引用次数: 5

Abstract

Abstract The present study aimed to analyse changes in the land cover of Vilnius city and its surrounding areas and propose a scenario for their future changes using an Artificial Neural Network. The land cover dynamics modelling was based on a multilayer perceptron neural network. Landscape metrics at a class and landscape level were evaluated to determine the amount of changes in the land uses. As the results showed, the Built-up area class increased, while the forest (Semi forest and Dense forest) classes decreased during the period from 1999 to 2019. The predicted scenario showed a considerable increase of about 60 % in the Built-up area until 2039. The vegetation plant areas consist about 47 % of all the area in 2019, but it will be 36 % in 2039, if this trend (urban expansion) continues in the further. The findings further indicated the major urban expansion in the vegetation areas. However, Built-up area would expand over Semi forest land and Dense forest land, with a large part of them changed into built- up areas.
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维尔纽斯城区扩张变化及其对景观格局影响的人工神经网络模拟
摘要:本研究旨在分析维尔纽斯市及其周边地区的土地覆盖变化,并利用人工神经网络提出其未来变化的情景。土地覆盖动态建模基于多层感知器神经网络。评估了类和景观水平的景观指标,以确定土地利用的变化量。结果表明:1999 - 2019年,建成区面积增加,森林(半森林和茂密森林)减少;预测的情景显示,到2039年,建成区面积将大幅增加约60%。2019年,植被植物面积约占总面积的47%,如果这一趋势(城市扩张)继续下去,到2039年将达到36%。研究结果进一步表明,城市扩张主要发生在植被区。而建成区将向半林地和茂密林地扩展,其中很大一部分将变成建成区。
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