Revealing Robust Oil and Gas Company Macro-Strategies Using Deep Multi-Agent Reinforcement Learning

Cell Press Pub Date : 2022-11-20 DOI:10.2139/ssrn.3933996
Dylan Radovic, L. Kruitwagen, C. S. D. Witt, Ben Caldecott, S. Tomlinson, M. Workman
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引用次数: 5

Abstract

The energy transition potentially poses an existential risk for major international oil companies (IOCs) if they fail to adapt to low-carbon business models. Projections of energy futures, however, are met with diverging assumptions on its scale and pace, causing disagreement among IOC decision-makers and their stakeholders over what the business model of an incumbent fossil fuel company should be. In this work, we used deep multi-agent reinforcement learning to solve an energy systems wargame wherein players simulate IOC decision-making, including hydrocarbon and low-carbon investments decisions, dividend policies, and capital structure measures, through an uncertain energy transition to explore critical and non-linear governance questions, from leveraged transitions to reserve replacements. Adversarial play facilitated by state-of-the-art algorithms revealed decision-making strategies robust to energy transition uncertainty and against multiple IOCs. In all games, robust strategies emerged in the form of low-carbon business models as a result of early transition-oriented movement. IOCs adopting such strategies outperformed business-as-usual and delayed transition strategies regardless of hydrocarbon demand projections. In addition to maximizing value, these strategies benefit greater society by contributing substantial amounts of capital necessary to accelerate the global low-carbon energy transition. Our findings point towards the need for lenders and investors to effectively mobilize transition-oriented finance and engage with IOCs to ensure responsible reallocation of capital towards low-carbon business models that would enable the emergence of fossil fuel incumbents as future low-carbon leaders.
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利用深度多智能体强化学习揭示油气公司稳健的宏观战略
如果大型国际石油公司(ioc)不能适应低碳商业模式,能源转型可能会给它们的生存带来风险。然而,对能源未来的预测在规模和速度上存在分歧,导致国际奥委会决策者及其利益相关者对现有化石燃料公司的商业模式存在分歧。在这项工作中,我们使用深度多智能体强化学习来解决能源系统兵棋游戏,其中参与者模拟IOC决策,包括碳氢化合物和低碳投资决策,股息政策和资本结构措施,通过不确定的能源转型来探索关键的非线性治理问题,从杠杆过渡到储备替代。由最先进的算法推动的对抗性博弈揭示了对能源转型不确定性和多个国际石油公司的强大决策策略。在所有游戏中,稳健的策略都是以低碳商业模式的形式出现的,这是早期转型运动的结果。无论油气需求预测如何,采用这种策略的国际石油公司的表现都优于一切照旧和延迟转型策略。除了实现价值最大化之外,这些战略还为加速全球低碳能源转型贡献了大量必要的资本,从而使更大的社会受益。我们的研究结果表明,贷款机构和投资者需要有效地动员以转型为导向的融资,并与国际石油公司合作,以确保负责任的资本重新配置,以实现低碳商业模式,从而使化石燃料企业成为未来的低碳领导者。
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