CYCELGMay 24, 2025

CiRL: Open-Source Environments for Reinforcement Learning in Circular Economy and Net Zero

arXiv:2505.21536v11 citationsh-index: 4Has Code
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This provides a tool for researchers and engineers in circular economy to apply reinforcement learning for net zero goals, but it is incremental as it builds on existing methods.

The authors introduced CiRL, an open-source library of deep reinforcement learning environments for modeling material circularity in the circular economy, based on thermodynamical material networks and integrated with Stable-Baselines3 for accessibility.

The demand of finite raw materials will keep increasing as they fuel modern society. Simultaneously, solutions for stopping carbon emissions in the short term are not available, thus making the net zero target extremely challenging to achieve at scale. The circular economy (CE) paradigm is gaining attention as a solution to address climate change and the uncertainties of supplies of critical materials. Hence, in this paper, we introduce CiRL, a deep reinforcement learning (DRL) library of environments focused on the circularity of both solid and fluid materials. The integration of DRL into the design of material circularity is possible thanks to the formalism of thermodynamical material networks, which is underpinned by compartmental dynamical thermodynamics. Along with the focus on circularity, this library has three more features: the new CE-oriented environments are in the state-space form, which is typically used in dynamical systems analysis and control designs; it is based on a state-of-the-art Python library of DRL algorithms, namely, Stable-Baselines3; and it is developed in Google Colaboratory to be accessible to researchers from different disciplines and backgrounds as is often the case for circular economy researchers and engineers. CiRL is publicly available.

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