论文标题
朝着可扩展的物理一致的神经网络:数据驱动的多区热建筑模型的应用
Towards Scalable Physically Consistent Neural Networks: an Application to Data-driven Multi-zone Thermal Building Models
论文作者
论文摘要
随着越来越多的数据收集,近年来,数据驱动的建模方法一直在流行。虽然身体上的声音,但经典的灰色框模型通常很麻烦地识别和扩展,并且其精度可能会因其有限的表现力所阻碍。另一方面,如今通常依赖神经网络(NNS)的经典黑框方法,即使在大规模上也可以通过数据从数据中得出统计模式来实现令人印象深刻的性能。但是,它们仍然完全忽略了基本的物理定律,如果实际物理系统的决定基于它们,这可能会导致潜在的灾难性失败。最近开发了物理上一致的神经网络(PCNN)来解决这些上述问题,确保身体一致性,同时仍利用NNS达到最新的准确性。 在这项工作中,我们将PCNN扩展为建立温度动态,并与经典的灰色盒和黑盒方法进行详尽的比较。更确切地说,我们设计了三个不同的PCNN扩展,从而体现了体系结构的模块化和灵活性,并正式证明了它们的身体一致性。在介绍的案例研究中,尽管结构约束,但PCNN被证明可以实现最先进的准确性,甚至超过基于NN的模型。此外,我们的调查还清楚地说明了NNS在保持完全良好的性能的同时,在实践中可能会误导性。尽管这种性能是以计算复杂性为代价的,但与所有其他物理一致的方法相比,PCNN的准确性提高了17-35%,为具有先进性能的可扩展物理一致的模型铺平了道路。
With more and more data being collected, data-driven modeling methods have been gaining in popularity in recent years. While physically sound, classical gray-box models are often cumbersome to identify and scale, and their accuracy might be hindered by their limited expressiveness. On the other hand, classical black-box methods, typically relying on Neural Networks (NNs) nowadays, often achieve impressive performance, even at scale, by deriving statistical patterns from data. However, they remain completely oblivious to the underlying physical laws, which may lead to potentially catastrophic failures if decisions for real-world physical systems are based on them. Physically Consistent Neural Networks (PCNNs) were recently developed to address these aforementioned issues, ensuring physical consistency while still leveraging NNs to attain state-of-the-art accuracy. In this work, we scale PCNNs to model building temperature dynamics and propose a thorough comparison with classical gray-box and black-box methods. More precisely, we design three distinct PCNN extensions, thereby exemplifying the modularity and flexibility of the architecture, and formally prove their physical consistency. In the presented case study, PCNNs are shown to achieve state-of-the-art accuracy, even outperforming classical NN-based models despite their constrained structure. Our investigations furthermore provide a clear illustration of NNs achieving seemingly good performance while remaining completely physics-agnostic, which can be misleading in practice. While this performance comes at the cost of computational complexity, PCNNs on the other hand show accuracy improvements of 17-35% compared to all other physically consistent methods, paving the way for scalable physically consistent models with state-of-the-art performance.