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An Information-Theoretic Framework for Improving Imperfect Dynamical Predictions Via Multi-Model Ensemble Forecasts

机译:通过多模型集合预测改进不完善动力预测的信息理论框架

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This work focuses on elucidating issues related to an increasingly common technique of multi-model ensemble (MME) forecasting. The MME approach is aimed at improving the statistical accuracy of imperfect time-dependent predictions by combining information from a collection of reduced-order dynamical models. Despite some operational evidence in support of the MME strategy for mitigating the prediction error, the mathematical framework justifying this approach has been lacking. Here, this problem is considered within a probabilistic/stochastic framework which exploits tools from information theory to derive a set of criteria for improving probabilistic MME predictions relative to single-model predictions. The emphasis is on a systematic understanding of the benefits and limitations associated with the MME approach, on uncertainty quantification, and on the development of practical design principles for constructing an MME with improved predictive performance. The conditions for prediction improvement via the MME approach stem from the convexity of the relative entropy which is used here as a measure of the lack of information in the imperfect models relative to the resolved characteristics of the truth dynamics. It is also shown how practical guidelines for MME prediction improvement can be implemented in the context of forced response predictions from equilibrium with the help of the linear response theory utilizing the fluctuation-dissipation formulas at the unperturbed equilibrium. The general theoretical results are illustrated using exactly solvable stochastic non-Gaussian test models.
机译:这项工作的重点是阐明与越来越多的多模型集合(MME)预测的通用技术有关的问题。 MME方法旨在通过结合来自降阶动态模型集合的信息来提高不完全依赖时间的预测的统计准确性。尽管有一些操作证据支持MME减轻预测误差的策略,但仍缺乏证明这种方法的数学框架。在这里,这个问题是在概率/随机框架内考虑的,该框架利用信息理论中的工具来推导一组标准,以相对于单模型预测来改善概率MME预测。重点在于系统地理解与MME方法相关的好处和局限性,不确定性量化以及开发实用的设计原理以构建具有改进的预测性能的MME。通过MME方法进行预测改进的条件源于相对熵的凸度,在此将其用于衡量不完全模型中相对于真实动力学的解析特征的信息不足。还显示了如何在线性响应理论的帮助下,在平衡状态的强迫响应预测的背景下,利用无扰动平衡下的波动耗散公式,实施MME预测改进的实用指南。使用精确可解的随机非高斯检验模型说明了一般的理论结果。

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