Hasson Michael, Marvin M Colin, Lapôtre Mathieu G A
Earth and Planetary Sciences Department, Stanford University, Stanford, CA 94305-2115.
Proc Natl Acad Sci U S A. 2024 Oct;121(40):e2407655121. doi: 10.1073/pnas.2407655121. Epub 2024 Sep 16.
As sand moves across Earth's landscapes, the shapes of individual grains evolve, and microscopic textures accumulate on their surfaces. Because transport processes vary between environments, the shape and suite of microtextures etched on sand grains provide insights into their transport histories. For example, previous efforts to link microtextures to transport environments have demonstrated that they can provide important information about the depositional environments of rocks with few other indicators. However, such analyses rely on 1) subjective human description of microtextures, which can yield biased, error-prone results; 2) nonstandard lists of microtextures; and 3) relatively large sample sizes (>20 grains) to obtain reliable results, the manual documentation of which is extremely labor intensive. These drawbacks have hindered broad adoption of the technique. We address these limitations by developing a deep neural network model, SandAI, that classifies scanning electron microscope images of modern sand grains by transport environment with high accuracy. The SandAI model was developed using images of sand grains from modern environments around the globe. Training data encompass the four most common terrestrial environments: fluvial, eolian, glacial, and beach. We validate the model on quartz grains from modern sites unknown to it, and Jurassic-Pliocene sandstones of known depositional environments. Next, the model is applied to two samples of the Cryogenian Bråvika Member (of contested origin), yielding insights into periglacial systems associated with Snowball Earth. Our results demonstrate the robustness and versatility of the model in quickly and automatically constraining the transport histories recorded in individual grains of quartz sand.
当沙子在地球表面移动时,单个沙粒的形状会发生演变,其表面会积累微观纹理。由于不同环境中的搬运过程各不相同,刻蚀在沙粒上的微观纹理形状和组合能为其搬运历史提供线索。例如,先前将微观纹理与搬运环境联系起来的研究表明,在几乎没有其他指示物的情况下,它们能提供有关岩石沉积环境的重要信息。然而,此类分析依赖于:1)对微观纹理的主观人工描述,这可能会产生有偏差且容易出错的结果;2)微观纹理的非标准清单;3)相对较大的样本量(>20颗沙粒)才能获得可靠结果,而人工记录这些样本极为耗费人力。这些缺点阻碍了该技术的广泛应用。我们通过开发一个深度神经网络模型SandAI来解决这些局限性,该模型能高精度地根据搬运环境对现代沙粒的扫描电子显微镜图像进行分类。SandAI模型是利用全球现代环境中沙粒的图像开发的。训练数据涵盖四种最常见的陆地环境:河流、风成、冰川和海滩。我们用该模型未知的现代地点的石英砂颗粒以及已知沉积环境的侏罗纪 - 上新世砂岩对模型进行验证。接下来,将该模型应用于新元古代布拉维卡段(成因存疑)的两个样本,从而深入了解与雪球地球相关的冰缘系统。我们的结果证明了该模型在快速自动确定石英砂单个颗粒记录的搬运历史方面的稳健性和通用性。