通过机器学习技术从大空间数据中洞察自然资源的审慎管理

T. Ramachandra, Paras Negi, B. Setturu
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引用次数: 0

摘要

土地覆被(LULC)变化在理解影响区域气候、生物多样性、水文和生态的景观动态方面起着至关重要的作用。时序土地利用变化信息有助于决策者制定可持续的自然保护土地利用政策。人为的压力,特别是无计划的发展活动,造成了相邻森林的破碎,从而影响了森林的结构,使特有物种丧失了栖息地。通过时序遥感数据评估了卡纳塔克邦Bellary地区的LULC变化。通过监督机器学习算法,即随机森林(RF)、支持向量机(SVM)和参数最大似然分类器(MLC),对遥感数据进行分类,以估计土地利用的空间范围。通过准确性评估来评估这些算法的性能。结果表明,与MLC(85.51%, 0.74)和SVM(85.47%, 0.63)的总体Kappa值相比,RF的总体准确率(88.94%)和Kappa值(0.76)最高。在此基础上,采用RF进行时间数据分析,结果表明森林覆盖率从2.61%(1973年)下降到0.74%(2022年)。建筑由1973年的0.27%增加到2022年的2.43%,农业由1973年的68.21%增加到2022年的84.95%。连片森林的破碎化表现为内部或完整森林从1973年的6.73%下降到2022年的2.41%,而非森林区域如建成区、农业区等增加到89.81%。结果表明,需要立即采取政策干预措施,保护残存的森林斑块。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Insights from Big Spatial Data through Machine Learning Techniques for Prudent Management of Natural Resources
Evaluation of Land Use Land Cover (LULC) changes play a vital role in understanding the landscape dynamics that have been influencing climate, biodiversity, hydrology, and ecology of a region. The information of temporal LULC aids decision-makers in framing sustainable land use policies for nature conservation. Anthropogenic pressure, especially unplanned developmental activities, has contributed towards fragmenting contiguous forests, thus affecting their structure and loss of habitat for endemic taxa. LULC changes in the Bellary district, Karnataka have been assessed through temporal remote sensing data. Classification of remote sensing data for estimating the spatial extent of land uses has been done through supervised machine learning algorithms namely random forest (RF), support vector machine (SVM), and parametric maximum likelihood classifier (MLC). The performance of these algorithms was evaluated through accuracy assessments. Results reveal that RF has the highest overall accuracy (88.94%) and Kappa value (0.76) compared to overall Kappa of MLC (85.51%, 0.74) and SVM (85.47%, 0.63). Based on this, RF was considered for temporal data analyses, which highlighted the decline of forest cover from 2.61% (1973) to 0.74% (2022). The built-up has increased from 0.27% (1973) to 2.43% (2022), and agriculture from 68.21% (1973) to 84.95% (2022). Fragmentation of contiguous forests is evident from the decline in the interior or intact forests from 6.73% (1973) to 2.41% (2022) and the increase in the non-forest areas such as built-up, agriculture, etc., amounting now to 89.81%. Results highlight the need for immediate policy interventions for the conservation and protection of the remnant forest patches.
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