论文标题
确定性混乱中的有条件混合
Conditional mixing in deterministic chaos
论文作者
论文摘要
一方面,鉴于对初始状态的精确了解,可以在所有时间内预测混乱的动力系统,但在许多情况下它们也迅速混合,这意味着对系统状态的平滑概率信息(通过度量量化)具有可忽略的价值来预测长期未来。但是,在各种物理问题中需要了解中间概率信息的长期预测价值,并且仍然缺乏。 在数据同化和线性响应理论中特别感兴趣的是SRB度量的条件度量,该测量值零集的一般平滑函数集。在本文中,我们提供了严格而数值的证据,表明此类措施在动力学下将这种措施一致地回归到完整的SRB测量中,以指数迅速地汇总。我们称此属性有条件混合。我们将证明有条件混合在一类广义的面包师地图中,并在一些非马克维亚分段双曲线图中进行数值证明。有条件的混合通过部分观察对混乱系统的长期预测的有效性提供了自然的限制,并且似乎是证明在平稳均匀双曲线外的线性响应中存在的关键。
While on the one hand, chaotic dynamical systems can be predicted for all time given exact knowledge of an initial state, they are also in many cases rapidly mixing, meaning that smooth probabilistic information (quantified by measures) on the system's state has negligible value for predicting the long-term future. However, an understanding of the long-term predictive value of intermediate kinds of probabilistic information is necessary in various physical problems, and largely remains lacking. Of particular interest in data assimilation and linear response theory are the conditional measures of the SRB measure on zero sets of general smooth functions of the phase space. In this paper we give rigorous and numerical evidence that such measures generically converge back under the dynamics to the full SRB measures, exponentially quickly. We call this property conditional mixing. We will prove that conditional mixing holds in a class of generalised baker's maps, and demonstrate it numerically in some non-Markovian piecewise hyperbolic maps. Conditional mixing provides a natural limit on the effectiveness of long-term forecasting of chaotic systems via partial observations, and appears key to proving the existence of linear response outside the setting of smooth uniform hyperbolicity.