地理空间数据和深度学习揭示关键原材料供应的环境、社会和治理风险:锂案例

Christopher J. M. Lawley, Marcus Haynes, B. Chudasama, Kathryn Goodenough, Toni Eerola, Artem Golev, Steven E. Zhang, Junhyeok Park, É. Lèbre
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摘要

关键原材料(CRM)全球供应链的中断有可能延迟或增加可再生能源转型的成本。然而,对于某些 CRM 而言,供应链中断的主要驱动因素可能是与环境、社会和治理(ESG)相关的问题,而不是地质稀缺性。在此,我们将公共地理空间数据作为关键 ESG 指标(如保护、生物多样性、淡水、能源、废物、土地利用、人类发展、健康与安全以及治理)的可映射替代物,并结合全球新闻事件数据集,训练并验证了三个预测 "冲突 "事件(如争端、抗议、暴力)的模型、(1) 知识驱动的模糊逻辑模型,整个模型的接收器工作特征图的曲线下面积 (AUC) 为 0.72;(2) 天真贝叶斯模型,测试集的 AUC 为 0.81;(3) 深度学习模型,包括堆叠自动编码器和前馈人工神经网络,测试集的 AUC 为 0.91。深度学习模型的高 AUC 表明,公共地理空间数据可以准确预测自然资源冲突,但我们也表明,机器学习的结果受到人口密度代用指标的影响,很可能低估了偏远地区发生冲突的可能性。知识驱动型方法受人口偏差的影响最小,可用于计算 ESG 评级,然后应用于全球锂矿点数据集作为案例研究。我们证明,相对于ESG评级较高(即风险较低)的小型伟晶岩矿床子集,巨型卤水锂矿床(即>10 Mt Li2O)被限制在空间位置风险较高的区域。我们的研究结果揭示了锂的来源、资源规模和空间风险之间的权衡。我们认为,这种地理空间环境、社会和公司治理评级可广泛适用于其他 CRM,而且在矿产勘探之前绘制空间位置风险图有可能改善环境、社会和公司治理结果以及加强供应链的政府政策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Geospatial Data and Deep Learning Expose ESG Risks to Critical Raw Materials Supply: The Case of Lithium
Disruptions to the global supply chains of critical raw materials (CRM) have the potential to delay or increase the cost of the renewable energy transition. However, for some CRM, the primary drivers of these supply chain disruptions are likely to be issues related to environmental, social, and governance (ESG) rather than geological scarcity. Herein we combine public geospatial data as mappable proxies for key ESG indicators (e.g., conservation, biodiversity, freshwater, energy, waste, land use, human development, health and safety, and governance) and a global dataset of news events to train and validate three models for predicting “conflict” events (e.g., disputes, protests, violence) that can negatively impact CRM supply chains: (1) a knowledge-driven fuzzy logic model that yields an area under the curve (AUC) for the receiver operating characteristics plot of 0.72 for the entire model; (2) a naïve Bayes model that yields an AUC of 0.81 for the test set; and (3) a deep learning model comprising stacked autoencoders and a feed-forward artificial neural network that yields an AUC of 0.91 for the test set. The high AUC of the deep learning model demonstrates that public geospatial data can accurately predict natural resources conflicts, but we show that machine learning results are biased by proxies for population density and likely underestimate the potential for conflict in remote areas. Knowledge-driven methods are the least impacted by population bias and are used to calculate an ESG rating that is then applied to a global dataset of lithium occurrences as a case study. We demonstrate that giant lithium brine deposits (i.e., >10 Mt Li2O) are restricted to regions with higher spatially situated risks relative to a subset of smaller pegmatite-hosted deposits that yield higher ESG ratings (i.e., lower risk). Our results reveal trade-offs between the sources of lithium, resource size, and spatially situated risks. We suggest that this type of geospatial ESG rating is broadly applicable to other CRM and that mapping spatially situated risks prior to mineral exploration has the potential to improve ESG outcomes and government policies that strengthen supply chains.
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