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Spatio-Temporal Analysis of Oil Spill Impact and Recovery Pattern of Coastal Vegetation and Wetland Using Multispectral Satellite Landsat 8-OLI Imagery and Machine Learning Models

机译:使用多光谱卫星山地卫星8-Oli图像和机器学习模型的沿海植被和湿地洪水泄漏抗冲击和恢复模式的时空分析

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摘要

Oil spills are a global phenomenon with impacts that cut across socio-economic, health, and environmental dimensions of the coastal ecosystem. However, comprehensive assessment of oil spill impacts and selection of appropriate remediation approaches have been restricted due to reliance on laboratory experiments which offer limited area coverage and classification accuracy. Thus, this study utilizes multispectral Landsat 8-OLI remote sensing imagery and machine learning models to assess the impacts of oil spills on coastal vegetation and wetland and monitor the recovery pattern of polluted vegetation and wetland in a coastal city. The spatial extent of polluted areas was also precisely quantified for effective management of the coastal ecosystem. Using Johor, a coastal city in Malaysia as a case study, a total of 49 oil spill (ground truth) locations, 54 non-oil-spill locations and Landsat 8-OLI data were utilized for the study. The ground truth points were divided into 70% training and 30% validation parts for the classification of polluted vegetation and wetland. Sixteen different indices that have been used to monitor vegetation and wetland stress in literature were adopted for impact and recovery analysis. To eliminate similarities in spectral appearance of oil-spill-affected vegetation, wetland and other elements like burnt and dead vegetation, Support Vector Machine (SVM) and Random Forest (RF) machine learning models were used for the classification of polluted and nonpolluted vegetation and wetlands. Model optimization was performed using a random search method to improve the models’ performance, and accuracy assessments confirmed the effectiveness of the two machine learning models to identify, classify and quantify the area extent of oil pollution on coastal vegetation and wetland. Considering the harmonic mean (F1), overall accuracy (OA), User’s accuracy (UA), and producers’ accuracy (PA), both models have high accuracies. However, the RF outperformed the SVM with F1, OA, PA and UA values of 95.32%, 96.80%, 98.82% and 95.11%, respectively, while the SVM recorded accuracy values of F1 (80.83%), OA (92.87%), PA (95.18%) and UA (93.81%), respectively, highlighting 1205.98 hectares of polluted vegetation and 1205.98 hectares of polluted wetland. Analysis of the vegetation indices revealed that spilled oil had a significant impact on the vegetation and wetland, although steady recovery was observed between 2015-2018. This study concludes that Chlorophyll Vegetation Index, Modified Difference Water Index, Normalized Difference Vegetation Index and Green Chlorophyll Index vegetation indices are more sensitive for impact and recovery assessment of both vegetation and wetland, in addition to Modified Normalized Difference Vegetation Index for wetlands. Thus, remote sensing and Machine Learning models are essential tools capable of providing accurate information for coastal oil spill impact assessment and recovery analysis for appropriate remediation initiatives.
机译:漏油是有冲击的全球现象,在整个海岸带生态系统的社会经济,卫生和环境等方面切断。然而,溢油影响和适当的补救办法选择全面评估已被限制,由于其上提供有限的覆盖区域和分类精度实验室实验的依赖。因此,本研究采用多光谱陆地卫星8 OLI遥感图像和机器学习模型来评估影响的漏油对沿海植被和湿地和监测污染植被在沿海城市的恢复模式和湿地。污染地区的空间范围也恰恰是沿海生态系统的有效管理量化。使用柔,沿海城市马来西亚作为案例研究,共49漏油(地面实况)的位置,54个非溢油位置和陆地卫星8 OLI数据用于该研究。地面实况点,分为70%的培训和30%验证零件污染的植被和湿地分类。已用于监测植被和湿地文学十六压力不同指数均采用冲击和恢复分析。为了消除漏油,影响植被的光谱外观上的相似性,湿地和其他元素,如烧焦的,死植被,支持向量机(SVM)和随机森林(RF)机器学习模型,用于污染和nonpolluted植被分类湿地。使用随机搜索的方法来提高模型的性能进行模型优化,并准确评估确认两个机器学习模型的有效性,识别,分类和量化对沿岸植被和湿地的石油污染的区域范围。考虑到调和平均值(F1),整体精度(OA),用户精度(UA),以及生产者的准确度(PA),这两种模式具有较高的精度。然而,RF优于SVM与分别95.32%,96.80%,98.82%和95.11%,F1,OA,PA和UA值,而F1(80.83%),OA(92.87%)的SVM记录精确度值, PA(95.18%)和UA(93.81%),分别,突出1205.98公顷污染植被和1205.98公顷污染湿地。植被指数分析表明,溢油对植被和湿地一显著的影响,2015 - 2018年虽然观察到间稳步复苏。这项研究的结论是,叶绿素植被指数,改良差异水体指数,归一化植被指数和绿色的叶绿素指数植被指数是两个植被和湿地的影响和恢复评估更为敏感,除了改进的归一化植被指数的湿地。因此,遥感和机器学习模型能够提供适当的补救措施海岸漏油事件影响评估和恢复分析准确的信息必不可少的工具。

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