Recent advances of data-driven machine learning have revolutionized fields like computer vision, reinforcement learning, and many scientific and engineering domains. In many real-world and scientific problems, systems that generate data are governed by physical laws. Recent work shows that it provides potential benefits for machine learning models by incorporating the physical prior and collected data, which makes the intersection of machine learning and physics become a prevailing paradigm. By integrating the data and mathematical physics models seamlessly, it can guide the machine learning model towards solutions that are physically plausible, improving accuracy and efficiency even in uncertain and high-dimensional contexts. In this survey, we present this learning paradigm called Physics-Informed Machine Learning (PIML) which is to build a model that leverages empirical data and available physical prior knowledge to improve performance on a set of tasks that involve a physical mechanism. We systematically review the recent development of physics-informed machine learning from three perspectives of machine learning tasks, representation of physical prior, and methods for incorporating physical prior. We also propose several important open research problems based on the current trends in the field. We argue that encoding different forms of physical prior into model architectures, optimizers, inference algorithms, and significant domain-specific applications like inverse engineering design and robotic control is far from being fully explored in the field of physics-informed machine learning. We believe that the interdisciplinary research of physics-informed machine learning will significantly propel research progress, foster the creation of more effective machine learning models, and also offer invaluable assistance in addressing long-standing problems in related disciplines.
翻译:数据驱动机器学习的最新进展使计算机视野、强化学习和许多科学和工程领域等领域发生革命性的变化。在许多现实世界和科学问题中,产生数据的系统受物理法则的制约。最近的工作表明,它通过纳入物理先期和收集的数据,为机器学习模型提供了潜在的好处,使机器学习和物理的交叉成为主流模式。通过将数据和数学物理先行模型和数学物理先行模型进行无缝的整合,它可以指导机器学习模型找到实际上看似可行的解决办法,提高准确性和效率,即使在不确定和高维度的环境中也是如此。在本次调查中,我们展示了这种学习模式,即利用实证数据和已有的物理先行知识来改进一系列涉及物理机制的任务的绩效。我们系统地审查最近从机器学习任务、物理先行和物理先行方法这三个角度进行的物理学后行学习。我们还根据实地当前趋势提出了一些重要的公开研究问题。我们指出,将各种物理先行形式编码化为模型结构、优化机能、精确地推断算法和大量地先前物理先行的物理先验知识。我们从远的机物理研究学习中,将深刻地、深入的机能物理学研究研究研究学习中,将深刻地、深入的机能物理学后法系研究研究的学习,将深刻的机能学系研究的学习,例如深地、深地研究的物理研究的学习。我们学习,将深刻的机能物理学后进研究的物理研究的学习,将深刻的学习。</s>