首页> 外文期刊>International journal of bifurcation and chaos in applied sciences and engineering >ATTRACTOR MODELING AND EMPIRICAL NONLINEAR MODEL REDUCTION OF DISSIPATIVE DYNAMICAL SYSTEMS
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ATTRACTOR MODELING AND EMPIRICAL NONLINEAR MODEL REDUCTION OF DISSIPATIVE DYNAMICAL SYSTEMS

机译:耗散动力系统的吸引子建模与经验非线性模型简化

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摘要

In a broad sense, model reduction means producing a low-dimensional dynamical system that replicates either approximately, or more strictly, exactly and topologically, the output of a dynamical system. Model reduction has an important role in the study of dynamical systems and also with engineering problems. In many cases, there exists a good low-dimensional model for even very high-dimensional systems, even infinite dimensional systems in the case of a PDE with a low-dimensional attractor. The theory of global attractors approaches these issues analytically, and focuses on finding (depending on the question at hand), a slow-manifold, inertial manifold, or center manifold, on which a restricted dynamical system represents the interesting behavior of the dynamical system; the main issue depends on defining a stable invariant manifold in which the dynamical system is invariant. These approaches are analytical in nature, however, and are therefore not always appropriate for dynamical systems known only empirically through a dataset. Empirically, the collection of tools available are much more restricted, and are essentially linear in nature. Usually variants of Galerkin's method, project the dynamical system onto a function linear subspace spanned by modes of some chosen spanning set. Even the popular Karhunen–Loeve decomposition, or POD, method is exactly such a method. As such, it is forced to either make severe errors in the case that the invariant space is intrinsically a highly nonlinear manifold, or bypass low-dimensionality by retaining many modes in order to capture the manifold. In this work, we present a method of modeling a low-dimensional nonlinear manifold known only through the dataset. The manifold is modeled as a discrete graph structure. Intrinsic manifold coordinates will be found specifically through the ISOMAP algorithm recently developed in the Machine Learning community originally for purposes of image recognition.
机译:从广义上讲,模型简化意味着产生一个低维动力系统,该系统可以近似地或更严格地,精确地和拓扑地复制动力系统的输出。模型简化在动力系统研究以及工程问题中具有重要作用。在许多情况下,即使对于非常高维的系统,甚至对于具有低维吸引子的PDE,甚至对于无限维系统,都存在良好的低维模型。全局吸引子理论通过分析来解决这些问题,并着重于发现(取决于当前的问题)慢流形,惯性流形或中心流形,其中受限的动力系统代表了动力系统有趣的行为;主要问题取决于定义一个稳定的不变流形,其中动力学系统是不变的。但是,这些方法本质上是分析性的,因此并不总是适用于仅凭经验通过数据集知道的动力学系统。根据经验,可用工具的集合受到更多限制,并且本质上是线性的。通常是Galerkin方法的变体,将动力学系统投影到功能线性子空间上,该子空间由某些选定的跨越集的模式跨越。甚至流行的Karhunen-Loeve分解或POD方法也正是这种方法。这样,在不变空间本质上是高度非线性流形的情况下,要么被迫犯下严重错误,要么通过保留许多模式以捕获流形来绕过低维。在这项工作中,我们提出了一种仅通过数据集已知的低维非线性流形建模方法。流形被建模为离散图结构。内部流形坐标将通过最近在机器学习社区中开发的ISOMAP算法找到,该算法最初用于图像识别。

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