Dataset: Dynamic mode structure of active turbulence
Data Citation:
Henshaw, R. J. (2022) Dynamic Mode Structure of Active Turbulence Modeling Results from 2019-2022 (VIC project). Biological and Chemical Oceanography Data Management Office (BCO-DMO). (Version 1) Version Date 2022-12-28 [if applicable, indicate subset used]. http://lod.bco-dmo.org/id/dataset/885923 [access date]
Terms of Use
This dataset is licensed under Creative Commons Attribution 4.0.
If you wish to use this dataset, it is highly recommended that you contact the original principal investigators (PI). Should the relevant PI be unavailable, please contact BCO-DMO (info@bco-dmo.org) for additional guidance. For general guidance please see the BCO-DMO Terms of Use document.
Temporal Extent: 2019-09-30 - 2022-05-01
Principal Investigator:
Jeffrey Guasto (Tufts University)
Scientist:
Richard J. Henshaw (Tufts University)
Contact:
Richard J. Henshaw (Tufts University)
BCO-DMO Data Manager:
Sawyer Newman (Woods Hole Oceanographic Institution, WHOI BCO-DMO)
Version:
1
Version Date:
2022-12-28
Restricted:
No
Validated:
Yes
Current State:
Final no updates expected
Dynamic Mode Structure of Active Turbulence Modeling Results from 2019-2022 (VIC project)
Abstract:
Dense suspensions of swimming bacteria exhibit chaotic flow patterns that promote the mixing and transport of resources and signalling chemicals within cell colonies. While the importance of active turbulence is widely recognized, the structure and dynamics of the resulting collective flows are the subject of intense investigation. Here, we combine microfluidic experiments with proper orthogonal decomposition (POD) analysis to quantify the dynamical flow structure of this model active matter system under a variety of conditions. In isotropic bulk turbulence, the modal representation shows that the most energetic flow structures dictate the spatio-temporal dynamics across a range of suspension activity levels. In confined geometries, POD analysis illustrates the role of boundary interactions for the transition to bacterial turbulence, and it quantifies the evolution of coherent active structures in externally applied flows. Beyond establishing the physical flow structures underpinning the complex dynamics of bacterial turbulence, the low-dimensional representation afforded by this modal analysis offers a potential path toward data-driven modelling of active turbulence