A framework for safe online exploration of nonlinear processes uses Gaussian process learning of residuals combined with Lyapunov-derived probabilistic control-invariant sets to guarantee high-probability stability while maximizing information gain.
Probabilistic invariance for gaussian process state–space models
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Safe Exploration for Nonlinear Processes Using Online Gaussian Process Learning
A framework for safe online exploration of nonlinear processes uses Gaussian process learning of residuals combined with Lyapunov-derived probabilistic control-invariant sets to guarantee high-probability stability while maximizing information gain.