GMU:Flagelates, Nematodes, and I/F.Z.Ayguler: Difference between revisions

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What is special about  C. elegans is that they are among the best understood animal. Its whole genome was sequenced and it is the only creature to have had its neural system completely simulated. It has 302 neurons hard wired with around 8000 connections. We have a complete map of C-Elegan's admittedly simple, neural circuit created by  [https://http://openworm.org/ Open Worm Project] .This model has been used to implement the worm's brain in a number of ways  including building an artificial version of the worm's brain and building devices seem to behave like the worm. The researchs concerning how the neural system of C. elegans uploaded to a computer, could solve a problem and mimiking digital evolutionary process of C-Elegans using deep reinforcement learning in  in a nature-like simulation are the main inspiration for my project.
What is special about  C. elegans is that they are among the best understood animal. Its whole genome was sequenced and it is the only creature to have had its neural system completely simulated. It has 302 neurons hard wired with around 8000 connections. We have a complete map of C-Elegan's admittedly simple, neural circuit created by  [https://http://openworm.org/ Open Worm Project] .This model has been used to implement the worm's brain in a number of ways  including building an artificial version of the worm's brain and building devices seem to behave like the worm. The researchs concerning how the neural system of C. elegans uploaded to a computer, could solve a problem and mimiking digital evolutionary process of C-Elegans using deep reinforcement learning in  in a nature-like simulation are the main inspiration for my project.
{{#ev:youtube|SaovWiZJUWY|700}}
https://www.youtube.com/watch?v=SaovWiZJUWY&feature=emb_title&ab_channel=MikeVella

Revision as of 17:47, 28 January 2021

WORM ROBOT

Screen Shot 2021-01-28 at 6.20.44 PM.png

Worm Robot is a bio inspired robot that simulates the neuromuscular function of a C. elegans as closely as possible. It is a bio-inspired agent to live in a simplified bio-inspired environment. The robot is trained with deep reinforcement learning which an area of machine learning concerned with how intelligent agents learn to achieve a goal in a potentially complex environment with trial and error and come up with a solution to the problem. To do this the artificial intelligence gets either rewards or penalties for the actions it performs. Its goal is to maximize the total reward.

My robot is equipped with wheels, on board processor, voltage regulator, batteries, distance sensor, color sensor, thermo sensor which allows it to locomote in a snakelike manner, find food sources (bacteria) and avoid heat. My agent wants to achieve staying alive as long as possible. Finding bacteria and avoiding heat helps it to stay alive.

The nematode worm C. elegans is a very simple organism with some moderately complex behavior. Its primitive behaviors are feeding, reproduction and locomotion and it exhibits complex behavior such as smell/taste, touch, slight response to light, sensing temperature, robust escape responses and rudimentary learning.

Here are some microscopy images and videos I took. (will be updated shortly)



What is special about C. elegans is that they are among the best understood animal. Its whole genome was sequenced and it is the only creature to have had its neural system completely simulated. It has 302 neurons hard wired with around 8000 connections. We have a complete map of C-Elegan's admittedly simple, neural circuit created by Open Worm Project .This model has been used to implement the worm's brain in a number of ways including building an artificial version of the worm's brain and building devices seem to behave like the worm. The researchs concerning how the neural system of C. elegans uploaded to a computer, could solve a problem and mimiking digital evolutionary process of C-Elegans using deep reinforcement learning in in a nature-like simulation are the main inspiration for my project.

https://www.youtube.com/watch?v=SaovWiZJUWY&feature=emb_title&ab_channel=MikeVella