论文标题
用于增强学习的半分析工业冷却系统模型
Semi-analytical Industrial Cooling System Model for Reinforcement Learning
论文作者
论文摘要
我们提出了一个混合工业冷却系统模型,该模型将分析解决方案嵌入多物理模拟中。该模型设计用于增强学习(RL)应用程序,并平衡简单性与模拟保真度和解释性。该模型的忠诚度根据大规模冷却系统的现实世界数据进行了评估。接下来是一个案例研究,说明该模型如何用于RL研究。为此,我们开发了一个工业任务套件,该套件允许指定不同的问题设置和复杂性水平,并使用它来评估不同RL算法的性能。
We present a hybrid industrial cooling system model that embeds analytical solutions within a multi-physics simulation. This model is designed for reinforcement learning (RL) applications and balances simplicity with simulation fidelity and interpretability. The model's fidelity is evaluated against real world data from a large scale cooling system. This is followed by a case study illustrating how the model can be used for RL research. For this, we develop an industrial task suite that allows specifying different problem settings and levels of complexity, and use it to evaluate the performance of different RL algorithms.