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Stochastic Optimal Control of an Industrial Power-to-Heat System with High-Temperature Heat Pump and Thermal Energy Storage

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  • Eric Pilling
  • Martin Bahr
  • Ralf Wunderlich

Abstract

The optimal control of sustainable energy supply systems, including renewable energies and energy storages, takes a central role in the decarbonization of industrial systems. However, the use of fluctuating renewable energies leads to fluctuations in energy generation and requires a suitable control strategy for the complex systems in order to ensure energy supply. In this paper, we consider an electrified power-to-heat system which is designed to supply heat in form of superheated steam for industrial processes. The system consists of a high-temperature heat pump for heat supply, a wind turbine (WT) for power generation, a sensible thermal energy storage (TES) for storing excess heat and a steam generator for providing steam. If the system's energy demand cannot be covered by electricity from the WT, additional electricity must be purchased from the power grid. For this system, we investigate the cost-optimal operation aiming to minimize the electricity cost from the grid by a suitable system control depending on the available wind power and the amount of energy stored in the TES. This is a decision making problem under uncertainties about the future prices for electricity from the grid and the future generation of wind power. The resulting stochastic optimal control problem is treated as finite horizon Markov decision process (MDP) for a multi-dimensional controlled state process. We first consider the classical backward recursion techniques for solving the associated dynamic programming equation for the value function and compute the optimal decision rule. Since that approach suffers from the curse of dimensionality we also apply Q-learning techniques that are able to provide a good approximate solution to the MDP within a reasonable time.

Suggested Citation

  • Eric Pilling & Martin Bahr & Ralf Wunderlich, 2024. "Stochastic Optimal Control of an Industrial Power-to-Heat System with High-Temperature Heat Pump and Thermal Energy Storage," Papers 2411.02211, arXiv.org.
  • Handle: RePEc:arx:papers:2411.02211
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    References listed on IDEAS

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