Identifying the geochemical fingerprint of volcanic material in soils of distal areas using a machine-learning approach

IF 5.4 1区 农林科学 Q1 GEOSCIENCES, MULTIDISCIPLINARY
Maurizio Ambrosino , Stefano Albanese , Angelica Capozzoli , Antonio Lucadamo , Domenico Cicchella
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Abstract

In this study, the Campania region (Italy) was selected to test a novel approach for identifying the geochemical signature of volcanic material in distal soils using their chemical composition. The Campania soil database comprises analyses of 48 elements for 5553 samples. Previous studies allowed us to confidently label 1277 samples as volcanic soils and 353 as non-volcanic soils. These labeled samples were used to train three machine learning algorithms to classify 3903 uncertain samples. Three different soil types were effectively identified with 98 % accuracy: volcanic, non-volcanic, and mixed. Subsequently, regional geochemical background values for each element in the various identified soil types were determined using ProUCL software. The results show that volcanic soils have background values of some key macronutrients (K, Na) and potentially toxic elements (As, Be, Hg, Pb, U, Tl) up to 18 times higher than non-volcanic soils. On the contrary, non-volcanic soils show the geochemical signature of materials of carbonate and clay origin, with enrichments of Ca, Mg, Co, Mn, Ni up to 4 times higher than volcanic soils. All these findings are fundamentally important for accurately establishing local reference background concentration values, which are crucial for promoting sustainable soil management practices. Moreover, the geochemical information generated by this study also yielded valuable insights into the geographic distribution of pyroclastic fallout from ancient eruptions, which is essential for understanding the historical dynamics of volcanic activity in the region.
利用机器学习方法识别远端地区土壤中火山物质的地球化学指纹
在这项研究中,选择坎帕尼亚地区(意大利)来测试一种新的方法,利用它们的化学成分来识别远端土壤中火山物质的地球化学特征。坎帕尼亚土壤数据库包括对5553个样品的48种元素的分析。以前的研究使我们能够自信地将1277个样本标记为火山土壤,353个标记为非火山土壤。这些标记的样本被用来训练三种机器学习算法,对3903个不确定样本进行分类。三种不同的土壤类型被有效识别,准确率高达98%:火山、非火山和混合。随后,利用ProUCL软件确定了不同土壤类型中各元素的区域地球化学背景值。结果表明,火山土的一些关键常量元素(K、Na)和潜在有毒元素(As、Be、Hg、Pb、U、Tl)的背景值比非火山土高18倍。非火山土则表现出碳酸盐和粘土物质的地球化学特征,Ca、Mg、Co、Mn、Ni的富集程度是火山土的4倍。所有这些发现对于准确建立当地参考背景浓度值具有重要意义,这对于促进可持续土壤管理实践至关重要。此外,本研究产生的地球化学信息还为了解古代火山喷发产生的火山碎屑沉降物的地理分布提供了有价值的见解,这对于了解该地区火山活动的历史动态至关重要。
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来源期刊
Catena
Catena 环境科学-地球科学综合
CiteScore
10.50
自引率
9.70%
发文量
816
审稿时长
54 days
期刊介绍: Catena publishes papers describing original field and laboratory investigations and reviews on geoecology and landscape evolution with emphasis on interdisciplinary aspects of soil science, hydrology and geomorphology. It aims to disseminate new knowledge and foster better understanding of the physical environment, of evolutionary sequences that have resulted in past and current landscapes, and of the natural processes that are likely to determine the fate of our terrestrial environment. Papers within any one of the above topics are welcome provided they are of sufficiently wide interest and relevance.
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