Mapping Canada’s Green Economic Pathways for Battery Minerals: Balancing Prospectivity Modelling With Conservation and Biodiversity Values

C. Lawley, M. Mitchell, D. Stralberg, R. Schuster, Eliot J. B. McIntire, J. Bennett
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引用次数: 2

Abstract

Electrification of Canada’s energy and transport sectors is essential to achieve net-zero emissions by 2050 and will require a vast amount of raw materials. A large proportion of these critical raw materials are expected to be sourced from as yet undiscovered mineral deposits, which has the potential to accelerate environmental pressures on natural ecosystems. Herein we overlay new prospectivity model results for a major source of Canada’s battery minerals (i.e., magmatic Ni ± Cu ± Co ± PGE mineral systems) with five ecosystem services (i.e., freshwater resources, carbon, nature-based recreation, species at risk, climate-change refugia) and gaps in the current protected-area network to identify areas of high geological potential with lower ecological risk. New prospectivity models were trained on high-resolution geological and geophysical survey compilations using spatial cross-validation methods. The area under the curve for the receive operating characteristics (ROC) plot and the preferred gradient boosting machines model is 0.972, reducing the search space for more than 90% of deposits in the test set by 89%. Using the inflection point on the ROC plot as a threshold, we demonstrate that 16% of the most prospective model cells partially overlap with the current network of protected and other conserved areas, further reducing the search space for new critical mineral deposits. The vast majority of the remaining high prospectivity cells correspond to ecoregions with less than half of the protected areas required to meet national conservation targets. Poorly protected ecoregions with one or more of the five ecosystem services are interpreted as hotspots with the highest potential for conflicting land-use priorities in the future, including parts of southern Ontario and Québec, western Labrador, and northern Manitoba and Saskatchewan. Managing hotspots with multiple land-use priorities would necessarily involve partnerships with both Indigenous peoples whose traditional lands are affected, and other impacted communities. We suggest that prospectivity models and other machine learning methods can be used as part of natural resources management strategies to balance critical mineral development with conservation and biodiversity values.
绘制加拿大电池矿物的绿色经济路径:平衡前景模型与保护和生物多样性价值
加拿大能源和运输部门的电气化对于到2050年实现净零排放至关重要,这将需要大量的原材料。这些关键原材料的很大一部分预计将来自尚未发现的矿藏,这有可能加速对自然生态系统的环境压力。在此,我们将加拿大电池矿物(即岩浆Ni±Cu±Co±PGE矿物系统)的主要来源的新远景模型结果与五种生态系统服务(即淡水资源,碳,自然娱乐,濒危物种,气候变化避难所)和当前保护区网络中的空白进行了覆盖,以确定高地质潜力和低生态风险的区域。利用空间交叉验证方法对高分辨率地质和地球物理调查汇编进行了新的远景模型训练。接收工作特征(ROC)图和首选梯度增强机模型的曲线下面积为0.972,将测试集中90%以上的矿床的搜索空间减少了89%。使用ROC图上的拐点作为阈值,我们证明最有前景的模型细胞中有16%与当前受保护和其他保护区域的网络部分重叠,进一步减少了寻找新的关键矿床的空间。剩余的绝大多数高前景单元对应的生态区域的保护区面积不到达到国家保护目标所需的一半。具有五种生态系统服务中的一种或多种的保护不足的生态区域被解释为未来土地利用优先冲突的可能性最高的热点地区,包括安大略省南部和qusamubec的部分地区、拉布拉多西部、马尼托巴省北部和萨斯喀彻温省。管理具有多重土地使用优先权的热点地区,必然需要与传统土地受到影响的土著人民以及其他受影响社区建立伙伴关系。我们建议,前景模型和其他机器学习方法可以作为自然资源管理策略的一部分,以平衡关键矿产开发与保护和生物多样性价值。
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