Published January 10, 2020 | Version v1
Dataset Open

A comparison between mouse, in silico, and robot odor plume navigation reveals advantages of mouse odor-tracking

Description

Localization of odors is essential to animal survival, and thus animals are adept at odor-navigation. In natural conditions animals encounter odor sources in which odor is carried by air flow varying in complexity. We sought to identify potential minimalist strategies that can effectively be used for odor-based navigation and asses their performance in an increasingly chaotic environment. To do so, we compared mouse, in silico model, and Arduino-based robot odor-localization behavior in a standardized odor landscape. Mouse performance remains robust in the presence of increased complexity, showing a shift in strategy towards faster movement with increased environmental complexity. Implementing simple binaral and temporal models of tropotaxis and klinotaxis, an in silico model and Arduino robot, in the same environment as the mice, are equally successful in locating the odor source within a plume of low complexity. However,  performance of these algorithms significantly drops when the chaotic nature of the plume is increased. Additionally, both algorithm-driven systems show more successful performance when using a strictly binaral model at a larger sensor separation distance and more successful performance when using a temporal and binaral model when using a smaller sensor separation distance. This suggests that with an increasingly chaotic odor environment, mice rely on complex strategies that allow for robust odor localization that cannot be resolved by minimal algorithms that display robust performance at low levels of complexity. Thus, highlighting that an animal's ability to modulate behavior with environmental complexity is beneficial for odor localization.

Notes

Four minutes of near-surface acetone planar laser-induced fluorescence (PLIF) plume data from Connor et al 2018 was used as input for these models ('11282017_10cms_bounded.h5','/dataset7').The above models are deterministic. If they are synchronized with the first frame of the plume dataset, they will always generate the same trajectory. To simulate "random" complexity, each model evaluation initialized the plume dataset at a randomly chosen frame between 1 and 3600; the four-minute dataset was then allowed to loop continuously until the simulation concluded (Movie 1, Movie 2).

Funding provided by: National Institute on Deafness and Other Communication Disorders
Crossref Funder Registry ID: http://dx.doi.org/10.13039/100000055
Award Number: DC011286

Funding provided by: National Institute on Deafness and Other Communication Disorders
Crossref Funder Registry ID: http://dx.doi.org/10.13039/100000055
Award Number: DC014723

Funding provided by: National Science Foundation
Crossref Funder Registry ID: http://dx.doi.org/10.13039/100000001
Award Number: 1555880

Funding provided by: National Science Foundation
Crossref Funder Registry ID: http://dx.doi.org/10.13039/100000001
Award Number: 1555916

Funding provided by: National Science Foundation
Crossref Funder Registry ID: http://dx.doi.org/10.13039/100000001
Award Number: 1555862

Files

Movie1.mp4

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