SYSYDSOCMar 28, 2018

On merging constraint and optimal control-Lyapunov functions

arXiv:1803.106893 citationsh-index: 40
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For control engineers, it provides a method to combine constraint satisfaction and optimality in CLFs, addressing a known bottleneck in merging such functions.

The paper proposes a technique to merge constraint-shaped Control Lyapunov Functions (CLFs) with optimal ones by enforcing partial control-sharing, formulated as a convex optimization problem. This yields a bounded-complexity CLF that solves constrained linear-quadratic stabilization with local optimality.

Merging two Control Lyapunov Functions (CLFs) means creating a single "new-born" CLF by starting from two parents functions. Specifically, given a "father" function, shaped by the state constraints, and a "mother" function, designed with some optimality criterion, the merging CLF should be similar to the father close to the constraints and similar to the mother close to the origin. To successfully merge two CLFs, the control-sharing condition is crucial: the two functions must have a common control law that makes both Lyapunov derivatives simultaneously negative. Unfortunately, it is difficult to guarantee this property a-priori, i.e., while computing the two parents functions. In this paper, we propose a technique to create a constraint-shaped "father" function that has the control-sharing property with the "mother" function. To this end, we introduce a partial control-sharing, namely, the control-sharing only in the regions where the constraints are active. We show that imposing partial control-sharing is a convex optimization problem. Finally, we show how to apply the partial control-sharing for merging constraint-shaped functions and the Riccati-optimal functions, thus generating a CLF with bounded complexity that solves the constrained linear-quadratic stabilization problem with local optimality.

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