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Data-driven discovery of emergent behaviors in collective dynamics

机译:集体动力学中紧急行为的数据驱动

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摘要

Particle- and agent-based systems are a ubiquitous modeling tool in many disciplines. We consider the fundamental problem of inferring the governing structure, i.e. interaction kernels, in a nonparametric fashion, from observations of agent-based dynamical systems. In particular, we are interested in collective dynamical systems exhibiting emergent behaviors with complicated interaction kernels, and for kernels which are parameterized by a single unknown parameter. This work extends the estimators introduced in Lu et al. (2019), which are based on suitably regularized least squares estimators, to these larger classes of systems. We provide extensive numerical evidence that the estimators provide faithful approximations to the interaction kernels, and provide accurate predictions for trajectories started at new initial conditions, both throughout the "training'' time interval in which the observations were made, and often much beyond. We demonstrate these features on prototypical systems displaying collective behaviors, ranging from opinion dynamics, flocking dynamics, self-propelling particle dynamics, synchronized oscillator dynamics, to a gravitational system. Our experiments also suggest that our estimated systems can display the same emergent behaviors as the observed systems, including those that occur at larger timescales than those in the training data. Finally, in the case of families of systems governed by a parametric family of interaction kernels, we introduce novel estimators that estimate the parametric family of kernels, splitting it into a common interaction kernel and the action of parameters. We demonstrate this in the case of gravity, by learning both the "common component'' 1/r2 and the dependency on mass, without any a priori knowledge of either one, from observations of planetary motions in our solar system. (C) 2020 Elsevier B.V. All rights reserved.
机译:基于颗粒和代理的系统是许多学科中普遍存在的建模工具。我们考虑推断治理结构的根本问题,即非参数时时尚的互动核,从基于代理的动态系统的观察结果。特别是,我们对具有复杂交互内核的紧急行为以及由单个未知参数进行参数化的内核的集体动态系统感兴趣。这项工作扩展了Lu等人引入的估计。 (2019),基于适当规划的最小二乘估计,对这些较大的系统。我们提供广泛的数值证据,即估算器向互动核提供忠实的近似,并为在新初始条件下开始的轨迹提供准确的预测,两者在整个观察的“培训”的时间间隔内,并且通常超出。我们展示了展示集体行为的原型系统上的这些特征,从观点动态,植绒动态,自推进粒子动力学,同步振荡器动力学,同步振荡器动力学到引力系统。我们的实验还表明我们的估计系统可以显示与观察到相同的紧急行为系统,包括那些在较大时间尺于培训数据中发生的系统。最后,在由参数族互动内核管理的系统家庭的情况下,我们引入了估计参数核的新颖估算器,将其分成了一个常见交互内核和参数的动作。我们在重力的情况下展示了这一点,通过学习“共同组成部分”1 / R2和质量依赖性,而无论如何都没有任何一个,从我们太阳系中的行星运动的观察到。 (c)2020 Elsevier B.V.保留所有权利。

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