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首页> 外文期刊>SIAM/ASA Journal on Uncertainty Quantification >Lagrangian Uncertainty Quantification and Information Inequalities for Stochastic Flows
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Lagrangian Uncertainty Quantification and Information Inequalities for Stochastic Flows

机译:拉格朗日不确定性量化和信息不平等随机流

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We develop a systematic information-theoretic framework for quantification and mitigation of error in probabilistic Lagrangian (i.e., path-based) predictions which are obtained from dynamical systems generated by uncertain (Eulerian) vector fields. This work is motivated by the desire to improve Lagrangian predictions in complex dynamical systems based either on analytically simplified or data-driven models. We derive a hierarchy of general information bounds on uncertainty in estimates of statistical observables E~v [f], evaluated on trajectories of the approximating dynamical system, relative to the "true" observables E~v [f] in terms of certain ψ-divergences, D_ψ (μ‖v), which quantify discrepancies between probability measures μ associated with the original dynamics and their approximations v. We then derive two distinct bounds on D_ψ (μ‖v) itself in terms of the Eulerian fields.
机译:我们开发一个系统的信息理论的量化和缓解气候变化的框架错误概率拉格朗日(即基于路径)预测得到动力系统所产生的不确定性欧拉向量场。通过改进拉格朗日预测的欲望在复杂动力系统的基础上分析简化或数据驱动模型。获得一般信息的层次结构在估计的统计不确定性可见E ~ v (f),评估的轨迹近似动力系统,相对于“真正的”可见E ~ v (f)的某些ψ分歧,D_ψ(μ为v),量化差异概率措施μ与原始的动力学及其相关近似诉我们得到两种截然不同的界限D_ψ(μ为v)本身的欧拉字段。

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