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DOI | 10.1080/15481603.2024.2302221 |
Land cover changes in grassland landscapes: combining enhanced Landsat data composition, LandTrendr, and machine learning classification in google earth engine with MLP-ANN scenario forecasting | |
Parracciani, Cecilia; Gigante, Daniela; Mutanga, Onisimo; Bonafoni, Stefania; Vizzari, Marco | |
发表日期 | 2024 |
ISSN | 1548-1603 |
EISSN | 1943-7226 |
起始页码 | 61 |
结束页码 | 1 |
卷号 | 61期号:1 |
英文摘要 | Understanding grassland habitat dynamics in space and time is crucial for evaluating the effectiveness of protection measures and developing sustainable management practices, specifically within the Natura 2000 network and in light of the European Biodiversity Strategy. Land cover maps, derived from remote sensing data, are essential for understanding long-term changes in vegetation cover and land use and assessing the impact of land use changes on grassland ecosystems. In this study, we conducted a 20-year land cover analysis of grassland landscapes in Umbria, Italy, using Random Forest classifications of Landsat data in Google Earth Engine. Our analysis was based on the years 2000, 2010, and 2020. We integrated harmonic modeling, Gray-Level Co-occurrence Matrix (GLCM) textural analysis, statistical image and gradient analysis, and other spectral and Digital Terrain Model (DTM)-derived indices to enhance the classification capabilities. The LandTrendr (LT) algorithm was used in GEE to collect ground control points in no-change areas automatically. We used a method based on Multilayer Perceptron-Artificial Neural Networks (MLP-ANNs) to forecast 2040 land cover. Our land cover classifications and the scenario model validation achieved an overall accuracy of over 90%. However, the classification of shrublands proved challenging due to their mixed composition and unique spatial patterns, resulting in lower accuracies. Feature importance analysis demonstrated the value of the enhanced map composition, and applying the LandTrendr algorithm simplified the diachronic land use and land cover (LULC) classification and change analysis by supporting automatic training data collection. Results support the interpretation of grassland dynamics in Umbria over the past two decades and identify areas affected by encroachment from shrubs, woody plants, or those with reduced green biomass. The forecasting method along with the selection of spatial drivers to predict land cover change, demonstrated high efficiency compared to other studies. A specific analysis was developed to identify areas where conservation measures related to the Natura 2000 network have been more or less effective in preserving grasslands. Overall, the research provides a scientific foundation for a methodology helpful in informing policy decisions and defining spatially explicit management strategies to enhance grassland conservation inside and outside Natura 2000 areas. |
英文关键词 | Landsat; GLCM; random forest; Natura 2000; LandTrendr; Artificial Neural Networks; harmonic modeling |
语种 | 英语 |
WOS研究方向 | Physical Geography ; Remote Sensing |
WOS类目 | Geography, Physical ; Remote Sensing |
WOS记录号 | WOS:001143141500001 |
来源期刊 | GISCIENCE & REMOTE SENSING
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文献类型 | 期刊论文 |
条目标识符 | http://gcip.llas.ac.cn/handle/2XKMVOVA/306007 |
作者单位 | University of Perugia; University of Kwazulu Natal; University of Perugia |
推荐引用方式 GB/T 7714 | Parracciani, Cecilia,Gigante, Daniela,Mutanga, Onisimo,et al. Land cover changes in grassland landscapes: combining enhanced Landsat data composition, LandTrendr, and machine learning classification in google earth engine with MLP-ANN scenario forecasting[J],2024,61(1). |
APA | Parracciani, Cecilia,Gigante, Daniela,Mutanga, Onisimo,Bonafoni, Stefania,&Vizzari, Marco.(2024).Land cover changes in grassland landscapes: combining enhanced Landsat data composition, LandTrendr, and machine learning classification in google earth engine with MLP-ANN scenario forecasting.GISCIENCE & REMOTE SENSING,61(1). |
MLA | Parracciani, Cecilia,et al."Land cover changes in grassland landscapes: combining enhanced Landsat data composition, LandTrendr, and machine learning classification in google earth engine with MLP-ANN scenario forecasting".GISCIENCE & REMOTE SENSING 61.1(2024). |
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