利用公共地理空间数据和机器学习绘制海底沉积物分布图,支持区域近海可再生能源开发

Connor W. Capizzano, Alexandria C. Rhoads, Jennifer A. Croteau, Benjamin G. Taylor, M. Guarinello, Emily J. Shumchenia
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摘要

鉴于美国近海风能开发的快速扩张,底栖生物栖息地(尤其是表层沉积物)的精确测绘对于减轻对这些宝贵生态系统的潜在影响至关重要。然而,近海风电的发展速度已经超过了环境监测工作的成果,迫使利益相关者不得不依靠有限的公共地理空间数据来进行影响评估。因此,本研究试图开发和评估一个系统化的工作流程,利用可能带来整合和建模挑战的公共地理空间数据生成区域尺度的沉积物地图。为了演示这种方法,研究人员对美国东北部大陆架的沉积物分布进行了描述,自 2016 年以来,该大陆架一直在进行海上风电开发。该地区的公开沉积物和测深数据分别使用国家分类标准和空间工具进行处理,并使用机器学习算法进行整合,以预测沉积物的出现。总体而言,这种方法和生成的沉积物综合数据可有效预测沿海地区的沉积物分布,但在数据稀缺或质量较差的近海地区则表现不佳。尽管存在这些不足,但这项研究建立在底栖生物栖息地测绘工作的基础上,并强调了区域协作的必要性,以规范海底数据收集和共享活动,为海上风能决策提供支持。
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Mapping Seafloor Sediment Distributions Using Public Geospatial Data and Machine Learning to Support Regional Offshore Renewable Energy Development
Given the rapid expansion of offshore wind development in the United States (US), the accurate mapping of benthic habitats, specifically surficial sediments, is essential for mitigating potential impacts on these valuable ecosystems. However, offshore wind development has outpaced results from environmental monitoring efforts, compelling stakeholders to rely on a limited set of public geospatial data for conducting impact assessments. The present study therefore sought to develop and evaluate a systematic workflow for generating regional-scale sediment maps using public geospatial data that may pose integration and modeling challenges. To demonstrate this approach, sediment distributions were characterized on the northeastern US continental shelf where offshore wind development has occurred since 2016. Publicly available sediment and bathymetric data in the region were processed using national classification standards and spatial tools, respectively, and integrated using a machine learning algorithm to predict sediment occurrence. Overall, this approach and the generated sediment composite effectively predicted sediment distributions in coastal areas but underperformed in offshore areas where data were either scarce or of poor quality. Despite these shortcomings, this study builds on benthic habitat mapping efforts and highlights the need for regional collaboration to standardize seafloor data collection and sharing activities for supporting offshore wind energy decisions.
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