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Deep reinforcement learning in World-Earth system models to discover sustainable management strategies

机译:世界地球系统模型中深入加强学习,以发现可持续的管理策略

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Increasingly complex nonlinear World-Earth system models are used for describing the dynamics of the biophysical Earth system and the socioeconomic and sociocultural World of human societies and their interactions. Identifying pathways toward a sustainable future in these models for informing policymakers and the wider public, e.g., pathways leading to robust mitigation of dangerous anthropogenic climate change, is a challenging and widely investigated task in the field of climate research and broader Earth system science. This problem is particularly difficult when constraints on avoiding transgressions of planetary boundaries and social foundations need to be taken into account. In this work, we propose to combine recently developed machine learning techniques, namely, deep reinforcement learning (DRL), with classical analysis of trajectories in the World-Earth system. Based on the concept of the agent-environment interface, we develop an agent that is generally able to act and learn in variable manageable environment models of the Earth system. We demonstrate the potential of our framework by applying DRL algorithms to two stylized World-Earth system models. Conceptually, we explore thereby the feasibility of finding novel global governance policies leading into a safe and just operating space constrained by certain planetary and socioeconomic boundaries. The artificially intelligent agent learns that the timing of a specific mix of taxing carbon emissions and subsidies on renewables is of crucial relevance for finding World-Earth system trajectories that are sustainable in the long term. Published under license by AIP Publishing.
机译:越来越复杂的非线性世界地球系统模型用于描述生物物理系统的动态以及人类社会的社会经济和社会文化世界及其互动。识别这些模型中可持续未来的途径,以告知政策制定者和更广泛的公众,例如导致危险人为气候变化的强大减缓的途径,是气候研究和更广阔的地球系统科学领域的具有挑战性和广泛的调查任务。当需要考虑到避免行星边界和社会基础的限制时,这个问题特别困难。在这项工作中,我们建议结合最近开发的机器学习技术,即深增强学习(DRL),具有世界地球系统轨迹的经典分析。基于代理环境界面的概念,我们开发一个通常能够采取行动和学习地球系统的可变管理环境模型的代理。我们通过将DRL算法应用于两个程式化的世界地球系统模型,我们展示了我们框架的潜力。概念上,我们探讨了寻找新的全球治理政策的可行性,这是一个安全,只是由某些行星和社会经济边界限制的安全性,只是经营空间。人为智能代理人得知,税收碳排放和可再生能源补贴的具体组合的时间对于寻找长期可持续的世界地球系统轨迹是至关重要的。通过AIP发布根据许可发布。

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    《Chaos》 |2019年第12期|共16页
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  • 正文语种 eng
  • 中图分类 自然科学总论;
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  • 入库时间 2022-08-19 23:30:32

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