We present an Equation/Variable free machine learning (EVFML) framework for the control of the collective dynamics of complex/multiscale systems modelled via microscopic/agent-based simulators. The approach obviates the need for construction of surrogate, reduced-order models.~The proposed implementation consists of three steps: (A) from high-dimensional agent-based simulations, machine learning (in particular, non-linear manifold learning (Diffusion Maps (DMs)) helps identify a set of coarse-grained variables that parametrize the low-dimensional manifold on which the emergent/collective dynamics evolve. The out-of-sample extension and pre-image problems, i.e. the construction of non-linear mappings from the high-dimensional input space to the low-dimensional manifold and back, are solved by coupling DMs with the Nystrom extension and Geometric Harmonics, respectively; (B) having identified the manifold and its coordinates, we exploit the Equation-free approach to perform numerical bifurcation analysis of the emergent dynamics; then (C) based on the previous steps, we design data-driven embedded wash-out controllers that drive the agent-based simulators to their intrinsic, imprecisely known, emergent open-loop unstable steady-states, thus demonstrating that the scheme is robust against numerical approximation errors and modelling uncertainty.~The efficiency of the framework is illustrated by controlling emergent unstable (i) traveling waves of a deterministic agent-based model of traffic dynamics, and (ii) equilibria of a stochastic financial market agent model with mimesis.
翻译:我们提出了一个量化/可变免费机器学习(EVFML)框架,用于控制通过微镜/试剂模拟模拟器模拟的复杂/多尺度系统的集体动态。该方法避免了建造代位、减序模型的必要性。 ~拟议实施由三个步骤组成:(A) 由基于高维的代理模拟、机器学习(特别是非线性多重学习(Difmmission Maps (DMs)))帮助确定一组粗略的变量,这些变量将形成/集成动态所依赖的低维维元模型进行平衡。 超模扩展和预模问题,即从高维输入空间到低维度的元体和背部的非线性绘图,正在通过分别与 Nystrom 扩展和测深调模型模式进行合并来解决;(B) 已经确定了基于方位及其正态的正态模型,我们利用无赤道方法对浮现/集动态演变的低维度数据进行数字分解分析; 以我们所了解的直径不稳的精确度结构模型为基础,从而以先前的正态的内流数据流流数据为基础,从而根据以前的正态和正态的正态结构进行。