Optimal decarbonisation pathway for mining truck fleets

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Abstract

The fossil fuel powered mining truck fleets can contribute up to 80% of total emissions in open pit mines. This study investigates the optimal decarbonisation pathway for mining truck fleets. Notably, our proposed pathway incorporates power generation, negative carbon technologies, and carbon trading. Technical, financial, and environmental models of decarbonisation technologies are established, capturing regional variations and time dynamic characteristics such as cost trends and carbon capture efficiency. The dynamic natures of characteristics pose challenges for using the cost-effective analyses approach to find the optimal decarbonisation pathway. To address this, we introduce a mixed-integer programming optimisation framework to find the decarbonisation pathway with minimum life cycle costs during the planning period. A case study for the optimal decarbonisation pathway of truck fleets in a South African coal mine is conducted to illustrate the applicability of the proposed model. Results indicate that the optimal decarbonisation pathway is significantly influenced by factors such as land cost, annual budget, and carbon trading prices. The proposed method provides invaluable guidance for transitioning towards a cleaner and more sustainable mining industry.

采矿卡车车队的最佳脱碳途径
以化石燃料为动力的矿用卡车车队可占露天矿总排放量的 80%。本研究调查了采矿卡车车队的最佳脱碳途径。值得注意的是,我们提出的途径包括发电、负碳技术和碳交易。我们建立了脱碳技术的技术、财务和环境模型,捕捉了地区差异和时间动态特征,如成本趋势和碳捕集效率。这些特征的动态性质给使用成本效益分析方法寻找最佳去碳化途径带来了挑战。为解决这一问题,我们引入了一个混合整数编程优化框架,以找到规划期内生命周期成本最小的去碳化途径。我们对南非某煤矿卡车车队的最优去碳化路径进行了案例研究,以说明所提模型的适用性。结果表明,最优去碳化路径受到土地成本、年度预算和碳交易价格等因素的显著影响。所提出的方法为向更清洁、更可持续的采矿业过渡提供了宝贵的指导。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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