Turbulence, the erratic and intricate swirling of fluids, is a cornerstone phenomenon encountered in a myriad of natural and engineered systems. From the gentle stirring of tea to the vast atmospheric currents governing climate, turbulence embodies one of the most complex challenges in physics. At the heart of this complexity lie the Navier–Stokes equations, which have been pivotal in describing fluid motion for nearly two centuries. However, despite intense investigation, these equations still resist complete analytical solutions, especially regarding the predictive modeling of turbulent flows due to their chaotic, multi-scale nature where small initial uncertainties amplifiy rapidly. Scientists can only observe partial features of turbulence in practical situations, primarily capturing the largest and slowest scales of motion, which raises a fundamental question: can we reconstruct the entire turbulent flow from such incomplete, large-scale observations?
Over the past several decades, significant strides were made in understanding this challenge, particularly within the context of three-dimensional turbulence, which typifies smoke plumes, ocean waves, or airflow around vehicles. These studies revealed that if one continuously monitors the flow down to microscopic scales, it is theoretically possible to reconstruct all smaller scale motions from the larger ones by exploiting the inherent connections embedded in the Navier–Stokes dynamics. However, this approach demands extraordinarily high resolution, often extending to dissipation scales where turbulence energy dissipates as heat, rendering it highly impractical for large systems like planetary atmospheres or oceans. The question of whether analogous principles hold for two-dimensional turbulence—a different regime altogether with fundamentally unique behaviors—remained largely unaddressed until now, with comparative analyses between these turbulence types notably absent.
Responding to this gap in understanding, a collaborative study led by Associate Professor Masanobu Inubushi from Tokyo University of Science and Professor Colm-Cille Patrick Caulfield from the University of Cambridge has unveiled fresh insights into how two-dimensional turbulence can be reconstructed from partial observations. Their research, published in the Journal of Fluid Mechanics and featured as the journal’s cover article, investigates whether observations limited to the largest scales of motion suffice for reconstructing the full turbulent field, utilizing state-of-the-art numerical simulations and advanced mathematical tools. By integrating data assimilation methods with chaos theory, their work fundamentally challenges the previously held assumptions drawn from three-dimensional studies.
Unlike their three-dimensional counterparts, two-dimensional turbulent flows demonstrate remarkable differences in how energy cascades through scales. While three-dimensional turbulence predominantly transfers energy from large scales down to ever smaller scales before it dissipates, two-dimensional turbulence exhibits a dual cascade. Energy can flow inversely, moving from small-scale eddies back up to larger ones, which profoundly influences phenomena observed in planetary atmospheres and oceans. This inverse energy cascade fosters large-scale coherent structures, such as cyclones and vortices, which shape weather and climate patterns fundamentally distinct from those seen in three-dimensional turbulence. Understanding how information propagates across scales in this regime is vital for refining predictive models of fluid motion.
To probe the feasibility of reconstructing two-dimensional turbulent flows from partial observations, the researchers employed a sophisticated technique called data assimilation, which cleverly fuses real-time observational data with the governing mathematical models. They started by assuming that the large-scale motions were fully known from observations, while the small-scale details were initially unknown. By allowing the Navier–Stokes equations to evolve this incomplete flow field, they assessed whether the missing smaller scales could dynamically synchronize with the true flow over time. Crucially, they utilized Lyapunov exponents—quantitative measures germane to chaos theory that describe how quickly small discrepancies between two dynamical states grow or diminish—to rigorously evaluate the synchronization’s robustness.
The findings of this study were both striking and unexpected. In two-dimensional turbulence, it proved sufficient to observe the flow down to just the scale where energy is injected into the system to reconstruct all smaller scales accurately. This dramatically contrasts with the three-dimensional case, where observations must penetrate deeply into the minutiae of turbulent motion, reaching dissipative scales to achieve comparable reconstruction. Dr. Inubushi emphasized the novelty of this discovery, highlighting that the “essential resolution” for flow field reconstruction in forced two-dimensional turbulence is appreciably lower than that required for three-dimensional turbulence. This revelation opens new avenues for observing and forecasting fluid flows in two-dimensional environments with significantly reduced data demands.
The explanation behind this difference lies in the nature of scale interactions peculiar to two-dimensional flows. The study elucidates that in two dimensions, the interplay between large-scale and small-scale motions is stronger and more direct, allowing large-scale structures to encapsulate sufficient information to infer the finer details. This enhanced cross-scale synchronization mechanism is absent or substantially weaker in three-dimensional flows, where energy cascades downward and information rapidly dissipates across scales. Thus, two-dimensional turbulence manifests an intrinsic “memory” encoded in its large structures, which can be exploited for efficient flow reconstruction.
Although rooted in theoretical and computational analyses, the implications of this study resonate profoundly beyond academic curiosity. Two-dimensional turbulence is foundational to simplified archetypes of atmospheric and oceanic flows used in climate science and meteorology. Pinpointing the minimal observational requirements for accurate reconstruction fosters the development of more effective climate models and improves the assimilation of satellite or remote sensing data in weather prediction frameworks. By demonstrating that large-scale measurements alone can unlock the full dynamics of two-dimensional turbulent flows, this research offers a pathway to overcome observational constraints inherent in environmental systems.
Dr. Inubushi stresses the practical significance, noting that “predicting fluid motion in the atmosphere and oceans is crucial for daily applications such as weather forecasting.” The ability to sync modeled flows with observational data at coarser resolutions while preserving smaller scale accuracy could revolutionize numerical weather prediction, enabling more timely and reliable forecasts despite incomplete data. Additionally, these insights help mitigate the notorious butterfly effect associated with turbulence, where minute uncertainties amplify unpredictably, by revealing how partial information at key scales suffices for comprehensive reconstruction.
The study also signifies a methodological advance by integrating Lyapunov analysis into fluid mechanics research, quantifying the synchronization dynamics in turbulent flows. This approach extends fluid dynamical research tools by embedding chaos theory frameworks, providing a rigorous metric to evaluate the stability and fidelity of flow reconstruction strategies. Such interdisciplinary synergy paves the way for future research that blends mathematical rigor with practical forecasting tools, enhancing predictive capabilities in fluid dynamics and related fields.
By revisiting the Navier–Stokes equations through the lens of data assimilation and chaos theory, this research reinforces the mathematical foundations underlying turbulence modeling. It offers robust evidence that in forced two-dimensional turbulence, the complexity and scale separation can be effectively managed via partial but strategically sufficient observational information. This breakthrough not only advances fundamental fluid physics but also impacts applied sciences by informing sensor deployment strategies and observational network designs optimized for maximal predictive return.
As climate variability and extreme weather events become pressing global concerns, the significance of accurately modeling and predicting turbulent atmospheric and oceanic processes cannot be overstated. This study’s implications for enhancing data-driven climate modeling and forecasting methodologies align with broader efforts to harness scientific advances in tackling environmental challenges. It underscores the transformative potential of combining theoretical innovation with practical computational techniques to decode the complexities of turbulent systems that govern natural phenomena.
In summary, the work by Associate Professor Masanobu Inubushi and colleagues illuminates a critical differentiation between two-dimensional and three-dimensional turbulence in terms of observational requirements for flow reconstruction. By showing that large-scale observations alone can suffice in two dimensions, it opens promising prospects for more efficient and reliable fluid dynamics modeling, with wide-reaching consequences for meteorology, oceanography, and beyond. This landmark study not only deepens our understanding of fundamental fluid mechanics but also charts a course towards improved predictive science in an increasingly data-limited world.
Subject of Research: Not applicable
Article Title: Synchronisation in two-dimensional damped-driven Navier–Stokes turbulence: insights from data assimilation and Lyapunov analysis
News Publication Date: 25-Jan-2026
References: DOI: 10.1017/jfm.2025.11057
Image Credits: Associate Professor Masanobu Inubushi from Tokyo University of Science, Japan
Keywords: Applied sciences and engineering, Atmospheric science, Physical sciences, Earth sciences, Fluid dynamics, Weather forecasting

