GP-guided MPPI for Efficient Navigation in Complex Unknown Cluttered Environments

07/08/2023
by   Ihab S. Mohamed, et al.
0

Robotic navigation in unknown, cluttered environments with limited sensing capabilities poses significant challenges in robotics. Local trajectory optimization methods, such as Model Predictive Path Intergal (MPPI), are a promising solution to this challenge. However, global guidance is required to ensure effective navigation, especially when encountering challenging environmental conditions or navigating beyond the planning horizon. This study presents the GP-MPPI, an online learning-based control strategy that integrates MPPI with a local perception model based on Sparse Gaussian Process (SGP). The key idea is to leverage the learning capability of SGP to construct a variance (uncertainty) surface, which enables the robot to learn about the navigable space surrounding it, identify a set of suggested subgoals, and ultimately recommend the optimal subgoal that minimizes a predefined cost function to the local MPPI planner. Afterward, MPPI computes the optimal control sequence that satisfies the robot and collision avoidance constraints. Such an approach eliminates the necessity of a global map of the environment or an offline training process. We validate the efficiency and robustness of our proposed control strategy through both simulated and real-world experiments of 2D autonomous navigation tasks in complex unknown environments, demonstrating its superiority in guiding the robot safely towards its desired goal while avoiding obstacles and escaping entrapment in local minima. The GPU implementation of GP-MPPI, including the supplementary video, is available at https://github.com/IhabMohamed/GP-MPPI.

READ FULL TEXT

page 1

page 4

page 6

page 7

research
07/21/2023

GP-Frontier for Local Mapless Navigation

We propose a new frontier concept called the Gaussian Process Frontier (...
research
03/30/2022

Autonomous Navigation of AGVs in Unknown Cluttered Environments: log-MPPI Control Strategy

Sampling-based model predictive control (MPC) optimization methods, such...
research
03/06/2019

Combining Optimal Control and Learning for Visual Navigation in Novel Environments

Model-based control is a popular paradigm for robot navigation because i...
research
10/20/2020

Model Predictive Contouring Control for Collision Avoidance in Unstructured Dynamic Environments

This paper presents a method for local motion planning in unstructured e...
research
07/15/2019

Energy-efficient Path Planning for Ground Robots by Combining Air and Ground Measurements

As mobile robots find increasing use in outdoor applications, designing ...
research
09/28/2022

On the Generalization of Deep Reinforcement Learning Methods in the Problem of Local Navigation

In this paper, we study the application of DRL algorithms in the context...
research
09/11/2023

CARE: Confidence-rich Autonomous Robot Exploration using Bayesian Kernel Inference and Optimization

In this paper, we consider improving the efficiency of information-based...

Please sign up or login with your details

Forgot password? Click here to reset