利用卷积神经网络多变量绘制芬迪湾海底粒度参数图

IF 2.6 3区 地球科学 Q2 GEOSCIENCES, MULTIDISCIPLINARY Marine Geology Pub Date : 2024-05-03 DOI:10.1016/j.margeo.2024.107299
Benjamin Misiuk , Yan Liang Tan , Michael Z. Li , Thomas Trappenberg , Ahmadreza Alleosfour , Ian W. Church , Vicki Ferrini , Craig J. Brown
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引用次数: 0

摘要

高分辨率的海底沉积物信息对于多用途陆架环境中的一系列海洋空间规划应用至关重要。为建立加拿大芬迪湾的这一信息,从区域数据汇编中获得了遗留的海底沉积物测量数据,并利用高分辨率声学海底测绘和海洋学数据集,对整个海湾范围内描述粒度的八个参数进行了建模。这是利用专门为多变量粒度参数地理空间建模而配置的卷积神经网络实现的。响应参数之间的共享信息使模型训练能够使用来自不同传统数据源的部分完整观测数据,而明确的多尺度模型架构则确保了环境预测因子能够以适当的尺度对每个参数进行建模。这就避免了通常在建立模型之前对特定尺度预测集进行详尽的探索和选择。此外,还使用适当的输出激活函数来处理组成粒度参数,为组成数据转换和估算提供了一种高效的替代方法。结果与我们目前对海湾表层地质的理解非常吻合,交叉验证用于对地图预测进行定量评估。在八个预测参数中,平均粒度和泥(粘土和粉土)组分的预测准确率较高(50% 的方差解释率);粒度偏度的准确率相对较低(24% 的方差解释率)。对变量重要性的探讨表明,汇编的声学反向散射是预测粒度的最重要环境变量,但描述海湾内经纬度的地理信息也非常有用。我们假设这些变量之间存在相互作用,从而可以进行特定地点的预测。预测粒度参数值的数据层可用于进一步的沉积学和生态学探索,以及海湾内的海洋空间规划活动。
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Multivariate mapping of seabed grain size parameters in the Bay of Fundy using convolutional neural networks

High-resolution seabed sediment information is critical for a range of marine spatial planning applications in multi-use shelf environments. To establish this information for the Bay of Fundy, Canada, legacy seabed sediment measurements were obtained from regional data compilations, and eight parameters describing the grain size were modelled across the extent of the bay using high resolution acoustic seafloor mapping and oceanographic datasets. This was achieved using a purpose-made convolutional neural network configured for geospatial modelling of multivariate grain size parameters. Shared information between the response parameters enabled model training with partially complete observations from the varied legacy data sources, and an explicit multiscale model architecture ensured that environmental predictors were implemented at appropriate scales for modelling each parameter. This avoids typical exhaustive exploration and selection of scale-specific predictor sets that often precede model building. Compositional grain size parameters were additionally accommodated using appropriate output activation functions, providing an efficient alternative to compositional data transformation and imputation. Results agreed well with our current understanding of the surficial geology of the bay, and cross-validation was used to quantitatively evaluate map predictions. Of the eight predicted parameters, the mean grain size and mud (clay and silt) fractions were predicted with high accuracy (> 50% variance explained); the accuracy of grain size skewness was comparatively low (24% variance explained). Exploration of variable importance suggested that compiled acoustic backscatter was the most important environmental variable for predicting the grain size, but that geographic information describing the latitude and longitude within the bay was also highly useful. We hypothesize an interaction between these variables that enables location-specific prediction. Data layers of predicted grain size parameter values are made available for further sedimentological and ecological exploration, and for marine spatial planning activities within the bay.

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来源期刊
Marine Geology
Marine Geology 地学-地球科学综合
CiteScore
6.10
自引率
6.90%
发文量
175
审稿时长
21.9 weeks
期刊介绍: Marine Geology is the premier international journal on marine geological processes in the broadest sense. We seek papers that are comprehensive, interdisciplinary and synthetic that will be lasting contributions to the field. Although most papers are based on regional studies, they must demonstrate new findings of international significance. We accept papers on subjects as diverse as seafloor hydrothermal systems, beach dynamics, early diagenesis, microbiological studies in sediments, palaeoclimate studies and geophysical studies of the seabed. We encourage papers that address emerging new fields, for example the influence of anthropogenic processes on coastal/marine geology and coastal/marine geoarchaeology. We insist that the papers are concerned with the marine realm and that they deal with geology: with rocks, sediments, and physical and chemical processes affecting them. Papers should address scientific hypotheses: highly descriptive data compilations or papers that deal only with marine management and risk assessment should be submitted to other journals. Papers on laboratory or modelling studies must demonstrate direct relevance to marine processes or deposits. The primary criteria for acceptance of papers is that the science is of high quality, novel, significant, and of broad international interest.
期刊最新文献
Tracking hydrothermal particles from the ridge axis to the sediment column along the Endeavour segment of the Juan de Fuca Ridge Exploring subaqueous bedforms and its relation to hydrodynamics in the Rio Grande Rise, Southwestern Atlantic A Northgrippian sedimentary magnetic enhancement along the western margin of India Bedform development in confined and unconfined settings of the Carchuna Canyon (Alboran Sea, western Mediterranean Sea): An example of cyclic steps in shelf-incised canyons Provenance and sediment dispersal in Pearl River Estuary, southern China unraveled by magnetic properties
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