Consensus Seeking Gradient Descent Flows On Boundaries Of Convex Sets

2020 AMERICAN CONTROL CONFERENCE (ACC)(2020)

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摘要
Consensus on nonlinear spaces is of use in many control applications. This paper proposes a gradient descent flow algorithm for consensus on hypersurfaces. We show that if an inequality holds, then the system converges for almost all initial conditions and all connected graphs. The inequality involves the hypersurface Gauss map and the gradient and Hessian of the implicit equation. Moreover, for the inequality to hold, it is necessary that the manifold is the boundary of a convex set. The literature already contains an algorithm for consensus on hypersurfaces. That algorithm on any ellipsoid is equivalent to our algorithm on the unit sphere. In particular, that algorithm achieves almost global synchronization on ellipsoids. These findings suggest that strong convergence results for consensus seeking gradient descent flows may be established on manifolds that are the boundaries of convex sets.
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关键词
gradient descent flows,convex set,nonlinear spaces,control applications,gradient descent flow algorithm,hypersurfaces,hypersurface Gauss map
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