We demonstrate a Physics-informed Neural Network (PINN) based model for real-time health monitoring of a heat exchanger, that plays a critical role in improving energy efficiency of thermal power plants. A hypernetwork based approach is used to enable the domain-decomposed PINN learn the thermal behavior of the heat exchanger in response to dynamic boundary conditions, eliminating the need to re-train. As a result, we achieve orders of magnitude reduction in inference time in comparison to existing PINNs, while maintaining the accuracy on par with the physics-based simulations. This makes the approach very attractive for predictive maintenance of the heat exchanger in digital twin environments.
翻译:我们展示了基于物理信息神经网络(PINN)的热交换器实时健康监测模型,该模型在提高热电厂能效方面发挥着关键作用。我们采用了基于超网络的方法,使域分解的热交换器能够根据动态边界条件学习热交换器的热行为,从而消除了再培训的需要。结果,我们实现了与现有热交换器相比的推导时间数量级下降,同时保持了与基于物理的模拟相同的准确性。这使得这种方法对数字双环境热交换器的预测维护非常有吸引力。