A monotone semi-discrete policy iteration scheme with O(h) artificial viscosity for stationary discounted HJB equations converges geometrically for fixed h and achieves O(sqrt(h)) error to the viscosity solution.
Neural policy iteration for stochastic optimal control: A physics-informed approach
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A data-driven controller embeds steady-state economic optimality into district heating temperature dynamics for forecast-free convergence to optimal dispatch and temperature regulation.
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Policy Iteration for Stationary Discounted Hamilton--Jacobi--Bellman Equations: A Viscosity Approach
A monotone semi-discrete policy iteration scheme with O(h) artificial viscosity for stationary discounted HJB equations converges geometrically for fixed h and achieves O(sqrt(h)) error to the viscosity solution.
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Data-driven online control for real-time optimal economic dispatch and temperature regulation in district heating systems
A data-driven controller embeds steady-state economic optimality into district heating temperature dynamics for forecast-free convergence to optimal dispatch and temperature regulation.