TL;DR
This paper introduces a generalized safe Bayesian optimization algorithm that efficiently tunes robotic parameters while respecting multiple safety constraints, ensuring safety without sacrificing performance.
Contribution
It extends existing safe Bayesian optimization methods to handle multiple safety constraints separately and incorporates context variables for safe transfer learning.
Findings
Algorithm guarantees safety during optimization.
Demonstrated fast, automatic parameter tuning on a quadrotor.
Effectively handles multiple safety constraints.
Abstract
Robotic algorithms typically depend on various parameters, the choice of which significantly affects the robot's performance. While an initial guess for the parameters may be obtained from dynamic models of the robot, parameters are usually tuned manually on the real system to achieve the best performance. Optimization algorithms, such as Bayesian optimization, have been used to automate this process. However, these methods may evaluate unsafe parameters during the optimization process that lead to safety-critical system failures. Recently, a safe Bayesian optimization algorithm, called SafeOpt, has been developed, which guarantees that the performance of the system never falls below a critical value; that is, safety is defined based on the performance function. However, coupling performance and safety is often not desirable in robotics. For example, high-gain controllers might achieve…
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Taxonomy
MethodsGaussian Process
