改善地热领域的可持续水资源管理:SVM 和 RF 土地利用监测

W. Utama, R. F. Indriani, Maman Hermana, I. M. Anjasmara, S. A. Garini, D. P. N. Putra
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引用次数: 0

摘要

地热田土地利用的管理和监测对于水资源的可持续利用以及在生产可再生能源和保护环境之间取得平衡至关重要。本研究主要比较了支持向量机(SVM)和随机森林(RF)机器学习方法,利用 2021 年至 2023 年期间 Landsat 8 和 Sentinel 2 的卫星图像来监测帕图哈地热区的土地利用情况。其目的是通过准确划分不同的土地覆被类型,改进可持续的水资源管理方法。这项比较分析评估了这些技术在维护地热区水资源可持续性方面的功效。本研究考察了 SVM 和 RF 机器学习技术的应用,特别强调了参数完善和模型评估,以提高土地利用分类的准确性。通过使用 Kernlab 和 e1071 进行算法比较,该研究试图生成精确的土地利用模型图,这凸显了先进分析技术在环境管理中的重要意义。这种方法对于改进土地利用监测和加强可持续实践至关重要。对 SVM 和 RF 方法进行的土地利用分类比较评估表明,RF 在准确性、稳定性和精确度方面更胜一筹,尤其是在错综复杂的城市环境中,因此它是要求高可靠性任务的首选模型。将 SVM 和 RF 应用于地热区土地利用监测符合可持续发展目标(SDGs)6 和 15,因为这有助于可持续水资源管理和生态系统保护。Doi: 10.28991/HEF-2024-05-02-06 全文:PDF
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Improving Sustainable Water Management in Geothermal Fields: SVM and RF Land Use Monitoring
The management and monitoring of land use in geothermal fields are crucial for the sustainable utilization of water resources, as well as for striking a balance between the production of renewable energy and the preservation of the environment. This study primarily compared Support Vector Machine (SVM) and Random Forest (RF) machine learning methods, using satellite imagery from Landsat 8 and Sentinel 2 between 2021 and 2023, to monitor land use in the Patuha geothermal area. The objective is to improve sustainable water management practices by accurately categorizing different land cover types. This comparative analysis assessed the efficacy of these techniques in upholding water sustainability in geothermal regions. This study examined the application of SVM and RF machine learning techniques, with particular emphasis on parameter refinement and model assessment, to enhance land use classification accuracy. By employing Kernlab and e1071 for algorithm comparison, the research sought to produce a precise Land Use Model Map, which underscores the significance of advanced analytical techniques in environmental management. This approach was of utmost importance in improving land use monitoring and reinforcing sustainable practices. The comparative evaluation of SVM and RF methods for land use classification demonstrates the superiority of RF in terms of accuracy, stability, and precision, particularly in intricate urban settings, hence establishing it as the preferred model for tasks demanding high reliability. The application of SVM and RF for monitoring land use in geothermal areas is in alignment with Sustainable Development Goals (SDGs) 6 and 15, as it fosters sustainable water management and the conservation of ecosystems. Doi: 10.28991/HEF-2024-05-02-06 Full Text: PDF
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