Distributed Source Seeking and Robust Obstacle Avoidance Through Hybrid Gradient Descent

This paper presents a method of source seeking for multi-agent unmanned aerial vehicle (UAV) systems in an environment with unknown obstacles. A distributed algorithm relies on localized measurements and neighbor-to-neighbor interactions to enable the group of UAVs to navigate to the location of the source. Each agent takes a scalar measurement of a signal emanating from the source, and the direction of motion is determined by estimating the gradient of the signal. The direction vector to the source is agreed upon by the agents in a coordinated manner to ensure aggregate motion toward the source of interest. Additionally, the agents avoid obstacles that are located between their initial position and the source without a priori knowledge of the number or positions of the obstacles. To ensure robust obstacle avoidance, a hybrid control method is used. The agents maintain a specified formation to improve observability during the gradient estimation process. Theoretical results for the algorithm are presented through simulation of the proposed source seeking method for a group of UAVs with single-integrator dynamics.

[1]  Murat Arcak,et al.  Gradient climbing in formation via extremum seeking and passivity-based coordination rules , 2007, 2007 46th IEEE Conference on Decision and Control.

[2]  Magnus Egerstedt,et al.  Graph Theoretic Methods in Multiagent Networks , 2010, Princeton Series in Applied Mathematics.

[3]  A.R. Teel,et al.  Robust source-seeking hybrid controllers for nonholonomic vehicles , 2008, 2008 American Control Conference.

[4]  Ricardo G. Sanfelice,et al.  A Hybrid Adaptive Feedback Law for Robust Obstacle Avoidance and Coordination in Multiple Vehicle Systems , 2018, 2018 Annual American Control Conference (ACC).

[5]  M.J. Messina,et al.  Robust hybrid controllers for continuous-time systems with applications to obstacle avoidance and regulation to disconnected set of points , 2006, 2006 American Control Conference.

[6]  Carlos Canudas-de-Wit,et al.  Collaborative estimation of gradient direction by a formation of AUVs under communication constraints , 2011, IEEE Conference on Decision and Control and European Control Conference.

[7]  Naomi Ehrich Leonard,et al.  Cooperative Filters and Control for Cooperative Exploration , 2010, IEEE Transactions on Automatic Control.

[8]  Miroslav Krstic,et al.  3-D Source Seeking for Underactuated Vehicles Without Position Measurement , 2009, IEEE Transactions on Robotics.

[9]  Miroslav Krstic,et al.  Nonholonomic Source Seeking With Tuning of Angular Velocity , 2009, IEEE Transactions on Automatic Control.

[10]  Herbert Werner,et al.  Cooperative source seeking via gradient estimation and formation control (Part 1) , 2014, 2014 UKACC International Conference on Control (CONTROL).

[11]  Herbert Werner,et al.  Using Particle Swarm Optimization for Source Seeking in Multi-Agent Systems , 2017 .

[12]  Milos S. Stankovic,et al.  Extremum seeking under stochastic noise and applications to mobile sensors , 2010, Autom..

[13]  Ricardo G. Sanfelice,et al.  Robust hybrid control systems , 2007 .

[14]  Andrey V. Savkin,et al.  Navigation of a unicycle-like mobile robot for environmental extremum seeking , 2011, Autom..

[15]  Miroslav Krstic,et al.  Stochastic source seeking for nonholonomic unicycle , 2010, Autom..