An adjoint-free algorithm for conditional nonlinear optimal perturbations (CNOPs) via sampling
Bin Shi, Guodong Sun

TL;DR
This paper introduces an adjoint-free sampling algorithm for computing conditional nonlinear optimal perturbations (CNOPs), significantly reducing computational costs while maintaining accuracy, applicable to complex atmospheric and ocean models.
Contribution
The paper presents a novel sampling-based method for CNOPs that avoids adjoint models and gradient computations, enabling efficient analysis of complex nonlinear systems.
Findings
Sampling approach reduces computation time significantly.
CNOPs obtained are consistent with traditional methods.
Method applicable to large-scale atmospheric and ocean models.
Abstract
In this paper, we propose a sampling algorithm based on state-of-the-art statistical machine learning techniques to obtain conditional nonlinear optimal perturbations (CNOPs), which is different from traditional (deterministic) optimization methods.1 Specifically, the traditional approach is unavailable in practice, which requires numerically computing the gradient (first-order information) such that the computation cost is expensive, since it needs a large number of times to run numerical models. However, the sampling approach directly reduces the gradient to the objective function value (zeroth-order information), which also avoids using the adjoint technique that is unusable for many atmosphere and ocean models and requires large amounts of storage. We show an intuitive analysis for the sampling algorithm from the law of large numbers and further present a Chernoff-type concentration…
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Taxonomy
TopicsMeteorological Phenomena and Simulations · Fluid Dynamics and Turbulent Flows · Model Reduction and Neural Networks
