School of Chemical Engineering, University of Birmingham, Edgbaston, Birmingham, B15 2TT, UK.
College of Medical and Dental Sciences, University of Birmingham, Edgbaston, Birmingham, B15 2TT, UK.
Sci Rep. 2020 Oct 1;10(1):16247. doi: 10.1038/s41598-020-73329-0.
The algorithm behind particle methods is extremely versatile and used in a variety of applications that range from molecular dynamics to astrophysics. For continuum mechanics applications, the concept of 'particle' can be generalized to include discrete portions of solid and liquid matter. This study shows that it is possible to further extend the concept of 'particle' to include artificial neurons used in Artificial Intelligence. This produces a new class of computational methods based on 'particle-neuron duals' that combines the ability of computational particles to model physical systems and the ability of artificial neurons to learn from data. The method is validated with a multiphysics model of the intestine that autonomously learns how to coordinate its contractions to propel the luminal content forward (peristalsis). Training is achieved with Deep Reinforcement Learning. The particle-neuron duality has the advantage of extending particle methods to systems where the underlying physics is only partially known, but we have observations that allow us to empirically describe the missing features in terms of reward function. During the simulation, the model evolves autonomously adapting its response to the available observations, while remaining consistent with the known physics of the system.
粒子方法背后的算法非常通用,可用于从分子动力学到天体物理学等各种应用。对于连续体力学应用,可以将“粒子”的概念推广到包括固体和液体物质的离散部分。本研究表明,可以进一步扩展“粒子”的概念,将人工智能中使用的人工神经元包括在内。这产生了一类新的基于“粒子-神经元对偶”的计算方法,它结合了计算粒子模拟物理系统的能力和人工神经元从数据中学习的能力。该方法通过自主学习如何协调收缩以推动腔内容物前进(蠕动)的肠多物理模型进行验证。训练是通过深度强化学习实现的。粒子-神经元对偶具有将粒子方法扩展到基础物理仅部分已知的系统的优势,但我们有观察结果,允许我们根据奖励函数从经验上描述缺失的特征。在模拟过程中,模型自主进化,根据可用观察结果自适应调整其响应,同时与系统的已知物理保持一致。