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Entropy Evolution and Uncertainty Estimation with Dynamical Systems

机译:动力系统的熵演化和不确定性估计

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This paper presents a comprehensive introduction and systematic derivation of the evolutionary equations for absolute entropy H and relative entropy D, some of which exist sporadically in the literature in different forms under different subjects, within the framework of dynamical systems. In general, both H and D are dissipated, and the dissipation bears a form reminiscent of the Fisher information; in the absence of stochasticity, dH/dt is connected to the rate of phase space expansion, and D stays invariant, i.e., the separation of two probability density functions is always conserved. These formulas are validated with linear systems, and put to application with the Lorenz system and a large-dimensional stochastic quasi-geostrophic flow problem. In the Lorenz case, H falls at a constant rate with time, implying that H will eventually become negative, a situation beyond the capability of the commonly used computational technique like coarse-graining and bin counting. For the stochastic flow problem, it is first reduced to a computationally tractable low-dimensional system, using a reduced model approach, and then handled through ensemble prediction. Both the Lorenz system and the stochastic flow system are examples of self-organization in the light of uncertainty reduction. The latter particularly shows that, sometimes stochasticity may actually enhance the self-organization process.
机译:本文对绝对熵H和相对熵D的演化方程进行了全面的介绍和系统推导,其中一些在动力学系统的框架内以零散形式存在于不同主题下的文献中。通常,H和D都被消散,并且消散的形式使人联想到Fisher信息。在没有随机性的情况下,dH / dt与相空间扩展的速率有关,而D保持不变,即,两个概率密度函数的分离始终保持不变。这些公式已通过线性系统进行了验证,并与Lorenz系统和大尺寸随机准地转流问题一起应用。在Lorenz情况下,H随时间以恒定速率下降,这意味着H最终将变为负值,这种情况超出了粗粒度和bin计数等常用计算技术的能力。对于随机流问题,首先使用简化的模型方法将其简化为可计算处理的低维系统,然后通过集合预测进行处理。考虑到不确定性的降低,劳伦兹系统和随机流动系统都是自组织的例子。后者特别表明,有时随机性实际上可以增强自组织过程。

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