Maity, R., Hübl, M., Lemmel, J., Hartl, B., & Kahl, G. (2025). Training of a “smart” triangular swimmer with the help of genetic algorithms. In International Conference on Engineering for Life Sciences : ENROL 2025 : Book of Abstracts (pp. 18–18).
Various microorganisms in nature use diverse non-reciprocal swimming gaits in search of nutrition or
prey or to escape predators. A very common strategy comprises non-reciprocal deformation of the shape,
ensuring propulsion in the medium. Inspired by natural swimmers, efforts have been made to design
artificial swimmers to perform specific tasks, such as targeted drug delivery in the case of nanomedical
applications. In this work, we train a two-dimensional, triangular swimmer [1] to move in a desired
direction using different propulsion gaits (see Fig.1). This training is achieved with adaptive neural
networks (which connect the degrees of freedom and the forces acting on the swimmer), involving
thereby the NEAT algorithm [2] which optimizes the internal architecture of these networks. While in
the previous work a simple one-dimensional, linear three-bead swimmer was trained to swim in a
chemical landscape [3], here we focus on the considerably more challenging case of the triangular
swimmer (see Fig. 1(a)-(c)): flapping, chiral and walking respectively are three emergent non-reciprocal
propulsion modes. Since in two dimensions, a simple reward, for example, displacement, cannot induce
motility in the swimmer, and in the absence of a well-defined reward scheme, the swimmer either stays
stationary or rotates in a circular path with no net displacement, it is important to introduce a complex
reward scheme which is a function of instantaneous displacement, average displacement, angular
displacement, shape factor. We also demonstrate that in this setup, the swimmer can be trained to
propagate in a desired direction and to develop swimming gaits that allows to find nutrient in a chemical
landscape. Similar as in Ref. [1], we are able to extract valuable information about the swimmer’s
strategies by analyzing the internal structure of the emerging networks. Notably, the former emergent
networks are simple in nature though visibly different for different swimming gaits.
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Project title:
Technik für Biowissenschaften Doktoratsstudium: 101034277 (European Commission)
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Research Areas:
Computer Engineering and Software-Intensive Systems: 100%