根据土地使用和模式的多陆地卫星图像(LCM)对土地使用和模式的预测

Herlawati Herlawati, Fata Nidaul Khasanah, Prima Dina Atika, Rafika Sari, Rahmadya Trias Handayanto
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引用次数: 2

摘要

土地利用/覆盖对一个地区的质量影响很大。因此,许多区域规划者需要其他领域的帮助,如地理信息学、计算机科学、环境等。虽然预测和预报已经得到了广泛的研究,但就实际情况(地理空间)而言,它还需要进一步发展,特别是涉及区域类型组合的预测和预报,如城市和郊区。本研究利用遥感基地和地理信息系统对印度尼西亚西爪哇省勿加西市和地区的土地进行了预测。通过比较两种情景(照常营业和植被保护),使用已创建并验证的模型(AUC精度结果为0.828)预测到2030年的土地利用变化。植被保护方案能够保持绿地转换为其他土地类型,如建筑和工业
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Prediksi Perubahan Penggunaan Lahan dan Pola Berdasarkan Citra Landsat Multi Waktu dengan Land Change Modeler (LCM)
Land use/cover greatly affect the quality of an area. Therefore, many regional planners need assistance byother fields, such as geoinformatics, computer science, environment, and others. Although prediction and forecasting have been widely studied, in regardto real conditions (geospatial)itstill needmoredevelopment, especially thoseinvolving a combination of regional types, such as urban and suburban areas. This study uses a remote sensing base and geographic information system in predicting land in the city and district of Bekasi, West Java, Indonesia. With two scenarios compared (business as usual and vegetation conservation), the model that has been created and validated (with an AUC accuracy result of 0.828) is used to predict land use change until 2030. Scenarios with vegetation conservation are able to keep green areas to switch to land types others, such as buildings and industry
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