基于人工神经网络和马尔可夫链模型的经济和地表参数预测未来土地利用

Q4 Earth and Planetary Sciences
Earth Pub Date : 2023-09-15 DOI:10.3390/earth4030039
Ankush Rani, Saurabh Kumar Gupta, Suraj Kumar Singh, Gowhar Meraj, Pankaj Kumar, Shruti Kanga, Bojan Đurin, Dragana Dogančić
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引用次数: 0

摘要

本研究的主要目的是综合分析印度旁遮普邦巴欣达地区土地利用和土地覆盖(LULC)变化的动态,包括历史、当前和未来趋势。为了预测未来的LULC,采用了基于人工神经网络(ANN)概念的元胞自动机-马尔可夫链(CA),并结合环境、经济和文化等地图学变量进行了预测。为了分割LULC,该研究使用了ML模型的组合,如支持向量机(SVM)和最大似然分类器(MLC)。本研究是实证性质的,并采用定量分析来揭示LULC随时间的变化。结果表明,到2050年,中国的荒地面积将从1990年的55.2 km2减少到5.6 km2,这意味着土地管理的改善或人类活动的增加。另一方面,植被面积预计将从1990年的81.3平方公里增加到2050年的205.6平方公里,反映了城市化与生态保护之间的平衡。预计农业用地将从1990年的2597.4平方公里增加到2020年的2859.6平方公里,然后在2050年稳定在2898.4平方公里。预计水体景观将从1990年的13.4 km2缩小到2050年的5.6 km2,为水资源提供了可能的问题。预计湿地区域将减少,从而使灌溉和地下水水库的可持续性复杂化。这些发现得到了强有力的统计指标的证实,本研究的Kno(0.97)、Kstandard(0.95)和Klocation(0.97)的高kappa系数表明CA预测具有合理的准确性。从F1评分的结果来看,MLC对植被的分割存在明显的问题,在SVM分类中得到了解决。本研究的结果可用于为该地区及其他地区的土地利用政策和可持续发展计划提供信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Future Land Use Utilizing Economic and Land Surface Parameters with ANN and Markov Chain Models
The main aim of this study is to comprehensively analyze the dynamics of land use and land cover (LULC) changes in the Bathinda region of Punjab, India, encompassing historical, current, and future trends. To forecast future LULC, the Cellular Automaton–Markov Chain (CA) based on artificial neural network (ANN) concepts was used using cartographic variables such as environmental, economic, and cultural. For segmenting LULC, the study used a combination of ML models, such as support vector machine (SVM) and Maximum Likelihood Classifier (MLC). The study is empirical in nature, and it employs quantitative analyses to shed light on LULC variations through time. The result indicates that the barren land is expected to shrink from 55.2 km2 in 1990 to 5.6 km2 in 2050, signifying better land management or increasing human activity. Vegetative expanses, on the other hand, are expected to rise from 81.3 km2 in 1990 to 205.6 km2 in 2050, reflecting a balance between urbanization and ecological conservation. Agricultural fields are expected to increase from 2597.4 km2 in 1990 to 2859.6 km2 in 2020 before stabilizing at 2898.4 km2 in 2050. Water landscapes are expected to shrink from 13.4 km2 in 1990 to 5.6 km2 in 2050, providing possible issues for water resources. Wetland regions are expected to decrease, thus complicating irrigation and groundwater reservoir sustainability. These findings are confirmed by strong statistical indices, with this study’s high kappa coefficients of Kno (0.97), Kstandard (0.95), and Klocation (0.97) indicating a reasonable level of accuracy in CA prediction. From the result of the F1 score, a significant issue was found in MLC for segmenting vegetation, and the issue was resolved in SVM classification. The findings of this study can be used to inform land use policy and plans for sustainable development in the region and beyond.
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Earth
Earth Earth and Planetary Sciences-Earth and Planetary Sciences (all)
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