A minimalistic stochastic dynamics model of cluttered obstacle traversal

12/15/2021
by   Bokun Zheng, et al.
0

Robots are still poor at traversing cluttered large obstacles required for important applications like search and rescue. By contrast, animals are excellent at doing so, often using direct physical interaction with obstacles rather than avoiding them. Here, towards understanding the dynamics of cluttered obstacle traversal, we developed a minimalistic stochastic dynamics simulation inspired by our recent study of insects traversing grass-like beams. The 2-D model system consists of a forward self-propelled circular locomotor translating on a frictionless level plane with a lateral random force and interacting with two adjacent horizontal beams that form a gate. We found that traversal probability increases monotonically with propulsive force, but first increases then decreases with random force magnitude. For asymmetric beams with different stiffness, traversal is more likely towards the side of the less stiff beam. These observations are in accord with those expected from a potential energy landscape approach. Furthermore, we extended the single gate in a lattice configuration to form a large cluttered obstacle field. A Markov chain Monte Carlo method was applied to predict traversal in the large field, using the input-output probability map obtained from single gate simulations. This method achieved high accuracy in predicting the statistical distribution of the final location of the body within the obstacle field, while saving computation time by a factor of 10^5.

READ FULL TEXT

page 1

page 6

page 8

research
12/15/2021

Environmental force sensing enables robots to traverse cluttered obstacles with interaction

Many applications require robots to move through terrain with large obst...
research
03/15/2021

Shape-induced obstacle attraction and repulsion during dynamic locomotion

Robots still struggle to dynamically traverse complex 3-D terrain with m...
research
11/30/2020

Deep reinforcement learning with a particle dynamics environment applied to emergency evacuation of a room with obstacles

A very successful model for simulating emergency evacuation is the socia...
research
08/09/2022

Sampling algorithms in statistical physics: a guide for statistics and machine learning

We discuss several algorithms for sampling from unnormalized probability...
research
11/16/2020

Lambda-Field: A Continuous Counterpart Of The Bayesian Occupancy Grid For Risk Assessment And Safe Navigation

In the context of autonomous robots, one of the most important tasks is ...
research
10/04/2022

Perspective Aware Road Obstacle Detection

While road obstacle detection techniques have become increasingly effect...
research
09/02/2021

Application of Monte Carlo Stochastic Optimization (MOST) to Deep Learning

In this paper, we apply the Monte Carlo stochastic optimization (MOST) p...

Please sign up or login with your details

Forgot password? Click here to reset