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Solar Field Output Temperature Optimization Using a MILP Algorithm and a 0D Model in the Case of a Hybrid Concentrated Solar Thermal Power Plant for SHIP Applications

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  • Simon Kamerling

    (Université Grenoble Alpes, CEA, LITEN, INES, L2TS, 50 av. du Lac Léman, 73375 Le-Bourget-du-Lac, France
    Université Savoie Mont-Blanc, USMB, 27 Rue Marcoz, 73000 Chambéry, France)

  • Valéry Vuillerme

    (Université Grenoble Alpes, CEA, LITEN, INES, L2TS, 50 av. du Lac Léman, 73375 Le-Bourget-du-Lac, France)

  • Sylvain Rodat

    (CNRS-PROMES, 7 Rue du Four Solaire, 66120 Odeillo, France)

Abstract

Using solar power for industrial process heat is an increasing trend to fight against climate change thanks to renewable heat. Process heat demand and solar flux can both present intermittency issues in industrial systems, therefore solar systems with storage introduce a degree of freedom on which optimization, on a mathematical basis, can be performed. As the efficiency of solar thermal receivers varies as a function of temperature and solar flux, it seems natural to consider an optimization on the operating temperature of the solar field. In this paper, a Mixed Integer Linear Programming (MILP) algorithm is developed to optimize the operating temperature in a system consisting of a concentrated solar thermal field with storage, hybridized with a boiler. The MILP algorithm optimizes the control trajectory on a time horizon of 48 h in order to minimize boiler use. Objective function corresponds to the boiler use, for completion of the heat from the solar field, whereas the linear constraints are a simplified representation of the system. The solar field mass flow rate is the optimization variable which is directly linked to the outlet temperature of the solar field. The control trajectory consists of the solar field mass flow rate and outlet temperature, along with the auxiliary mass flow rate going directly to the boiler. The control trajectory is then injected in a 0D model of the plant which performs more detailed calculations. For the purpose of the study, a Linear Fresnel system is investigated, with generic heat demand curves and constant temperature demand. The value of the developed algorithm is compared with two other control approaches: one operating at the nominal solar field output temperature, and the other one operating at the actual demand mass flow rate. Finally, a case study and a sensitivity analysis are presented. The MILP’s control shows to be more performant, up to a relative increase of the annual solar fraction of 4% at 350 °C process temperature. Novelty of this work resides in the MILP optimization of temperature levels presenting high non-linearities, applied to a solar thermal system with storage for process heat applications.

Suggested Citation

  • Simon Kamerling & Valéry Vuillerme & Sylvain Rodat, 2021. "Solar Field Output Temperature Optimization Using a MILP Algorithm and a 0D Model in the Case of a Hybrid Concentrated Solar Thermal Power Plant for SHIP Applications," Energies, MDPI, vol. 14(13), pages 1-22, June.
  • Handle: RePEc:gam:jeners:v:14:y:2021:i:13:p:3731-:d:579981
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    References listed on IDEAS

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