Evolved Control of Natural Plants

Author:

Hofstadler Daniel Nicolas1ORCID,Wahby Mostafa2,Heinrich Mary Katherine3,Hamann Heiko2,Zahadat Payam1,Ayres Phil3,Schmickl Thomas1

Affiliation:

1. University of Graz, Graz, Austria

2. Paderborn University and University of Lübeck, Lübeck, Germany

3. Centre for IT and Architecture, Denmark

Abstract

Mixing societies of natural and artificial systems can provide interesting and potentially fruitful research targets. Here we mix robotic setups and natural plants in order to steer the motion behavior of plants while growing. The robotic setup uses a camera to observe the plant and uses a pair of light sources to trigger phototropic response, steering the plant to user-defined targets. An evolutionary robotic approach is used to design a controller for the setup. Initially, preliminary experiments are performed with a simple predetermined controller and a growing bean plant. The plant behavior in response to the simple controller is captured by image processing, and a model of the plant tip dynamics is developed. The model is used in simulation to evolve a robot controller that steers the plant tip such that it follows a number of randomly generated target points. Finally, we test the simulation-evolved controller in the real setup controlling a natural bean plant. The results demonstrate a successful crossing of the reality gap in the setup. The success of the approach allows for future extensions to more complex tasks including control of the shape of plants and pattern formation in multiple plant setups.

Funder

European Union's Horizon 2020 research and innovation program

Publisher

Association for Computing Machinery (ACM)

Subject

Software,Computer Science (miscellaneous),Control and Systems Engineering

Reference28 articles.

1. A Unified Model of Shoot Tropism in Plants: Photo-, Gravi- and Propio-ception

2. Evolutionary robotics

3. Mapping QTL for climbing ability and component traits in common bean (Phaseolus vulgaris L.)

4. Peter Chervenski and Shane Ryan. 2017. MultiNEAT project website. Retrieved from http://www.multineat.com/. Peter Chervenski and Shane Ryan. 2017. MultiNEAT project website. Retrieved from http://www.multineat.com/.

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