Publication | Closed Access
Robust Reinforcement Learning Control Using Integral Quadratic Constraints for Recurrent Neural Networks
42
Citations
13
References
2007
Year
Artificial IntelligenceNonlinear ControlEngineeringMachine LearningRobust ControlMathematical Control TheoryIntelligent ControlProcess ControlAdaptive ControlSystems EngineeringRecurrent Neural NetworksBusinessStability GuaranteesRecurrent NnRobot LearningLearning ControlDynamic OptimizationStability
The applicability of machine learning techniques for feedback control systems is limited by a lack of stability guarantees. Robust control theory offers a framework for analyzing the stability of feedback control loops, but for the integral quadratic constraint (IQC) framework used here, all components are required to be represented as linear, time-invariant systems plus uncertainties with, for IQCs used here, bounded gain. In this paper, the stability of a control loop including a recurrent neural network (NN) is analyzed by replacing the nonlinear and time-varying components of the NN with IQCs on their gain. As a result, a range of the NN's weights is found within which stability is guaranteed. An algorithm is demonstrated for training the recurrent NN using reinforcement learning and guaranteeing stability while learning.
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