An Antidote for Hawkmoths: On the prevalence of structural chaos in non-linear modeling

Abstract

This paper deals with the question of whether uncertainty regarding model structure, especially in climate modeling, exhibits a kind of ``chaos.'' Do small changes in model structure, in other words, lead to large variations in ensemble predictions? More specifically, does model error destroy forecast skill faster than the ordinary or ``classical" chaos inherent in the real-world attractor? In some cases, the answer to this question seems to be ``yes." But how common is this state of affairs? And are there precise mathematical results that can help us answer this question? We examine some efforts in the literature to answer this last question in the affirmative and find them to be unconvincing

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