Litcius/Paper detail

State-Following-Kernel-Based Online Reinforcement Learning Guidance Law Against Maneuvering Target

Chi Peng, Hanwen Zhang, Yongxiang He, Jianjun Ma

2022IEEE Transactions on Aerospace and Electronic Systems31 citationsDOI

Abstract

In this article, a state-following-kernel-based reinforcement learning method with an extended disturbance observer is proposed, whose application to a missile-target interception system is considered. First, the missile-target engagement is formulated as a vertical planar pursuit–evasion problem. The target maneuver is then estimated by an extended disturbance observer in real time, which leads to an infinite-horizon optimal regulation problem. Next, utilizing the local state approximation ability of state-following kernels, the critic neural network (NN) and actor NN for synchronous iteration are constructed to calculate the approximate optimal guidance policy. The states and NN weights are proven to be uniformly ultimately bounded using the Lyapunov method. Finally, numerical simulations against different types of nonstationary targets are effectively tested, and the results highlight the role of state-following kernels in the value function and policy approximation.

Topics & Concepts

Reinforcement learningMissileControl theory (sociology)Missile guidanceKernel (algebra)State (computer science)Bounded functionComputer scienceArtificial neural networkFunction approximationBellman equationLyapunov functionState observerOptimal controlMathematical optimizationProportional navigationObserver (physics)MathematicsLawArtificial intelligenceEngineeringNonlinear systemAlgorithmControl (management)CombinatoricsPhysicsAerospace engineeringMathematical analysisPolitical scienceQuantum mechanicsGuidance and Control SystemsAdaptive Dynamic Programming ControlAdaptive Control of Nonlinear Systems