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Improving Thermochemical Energy Storage Dynamics Forecast with Physics-Inspired Neural Network Architecture

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  • Timothy Praditia

    (Department of Stochastic Simulation and Safety Research for Hydrosystems, Institute for Modelling Hydraulic and Environmental Systems, Universität Stuttgart, Pfaffenwaldring 5a, 70569 Stuttgart, Germany)

  • Thilo Walser

    (Department of Stochastic Simulation and Safety Research for Hydrosystems, Institute for Modelling Hydraulic and Environmental Systems, Universität Stuttgart, Pfaffenwaldring 5a, 70569 Stuttgart, Germany)

  • Sergey Oladyshkin

    (Department of Stochastic Simulation and Safety Research for Hydrosystems, Institute for Modelling Hydraulic and Environmental Systems, Universität Stuttgart, Pfaffenwaldring 5a, 70569 Stuttgart, Germany)

  • Wolfgang Nowak

    (Department of Stochastic Simulation and Safety Research for Hydrosystems, Institute for Modelling Hydraulic and Environmental Systems, Universität Stuttgart, Pfaffenwaldring 5a, 70569 Stuttgart, Germany)

Abstract

Thermochemical Energy Storage (TCES), specifically the calcium oxide (CaO)/calcium hydroxide (Ca(OH) 2 ) system is a promising energy storage technology with relatively high energy density and low cost. However, the existing models available to predict the system’s internal states are computationally expensive. An accurate and real-time capable model is therefore still required to improve its operational control. In this work, we implement a Physics-Informed Neural Network (PINN) to predict the dynamics of the TCES internal state. Our proposed framework addresses three physical aspects to build the PINN: (1) we choose a Nonlinear Autoregressive Network with Exogeneous Inputs (NARX) with deeper recurrence to address the nonlinear latency; (2) we train the network in closed-loop to capture the long-term dynamics; and (3) we incorporate physical regularisation during its training, calculated based on discretized mole and energy balance equations. To train the network, we perform numerical simulations on an ensemble of system parameters to obtain synthetic data. Even though the suggested approach provides results with the error of 3.96 × 10 − 4 which is in the same range as the result without physical regularisation, it is superior compared to conventional Artificial Neural Network (ANN) strategies because it ensures physical plausibility of the predictions, even in a highly dynamic and nonlinear problem. Consequently, the suggested PINN can be further developed for more complicated analysis of the TCES system.

Suggested Citation

  • Timothy Praditia & Thilo Walser & Sergey Oladyshkin & Wolfgang Nowak, 2020. "Improving Thermochemical Energy Storage Dynamics Forecast with Physics-Inspired Neural Network Architecture," Energies, MDPI, vol. 13(15), pages 1-26, July.
  • Handle: RePEc:gam:jeners:v:13:y:2020:i:15:p:3873-:d:391364
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    References listed on IDEAS

    as
    1. Eduard Sariev & Guido Germano, 2020. "Bayesian regularized artificial neural networks for the estimation of the probability of default," Quantitative Finance, Taylor & Francis Journals, vol. 20(2), pages 311-328, February.
    2. Haas, J. & Cebulla, F. & Cao, K. & Nowak, W. & Palma-Behnke, R. & Rahmann, C. & Mancarella, P., 2017. "Challenges and trends of energy storage expansion planning for flexibility provision in low-carbon power systems – a review," Renewable and Sustainable Energy Reviews, Elsevier, vol. 80(C), pages 603-619.
    3. Bayon, Alicia & Bader, Roman & Jafarian, Mehdi & Fedunik-Hofman, Larissa & Sun, Yanping & Hinkley, Jim & Miller, Sarah & Lipiński, Wojciech, 2018. "Techno-economic assessment of solid–gas thermochemical energy storage systems for solar thermal power applications," Energy, Elsevier, vol. 149(C), pages 473-484.
    4. Yi Yuan & Yingjie Li & Jianli Zhao, 2018. "Development on Thermochemical Energy Storage Based on CaO-Based Materials: A Review," Sustainability, MDPI, vol. 10(8), pages 1-24, July.
    5. Seitz, Gabriele & Helmig, Rainer & Class, Holger, 2020. "A numerical modeling study on the influence of porosity changes during thermochemical heat storage," Applied Energy, Elsevier, vol. 259(C).
    6. Schmidt, Matthias & Gutierrez, Andrea & Linder, Marc, 2017. "Thermochemical energy storage with CaO/Ca(OH)2 – Experimental investigation of the thermal capability at low vapor pressures in a lab scale reactor," Applied Energy, Elsevier, vol. 188(C), pages 672-681.
    7. Michel, Benoit & Mazet, Nathalie & Neveu, Pierre, 2014. "Experimental investigation of an innovative thermochemical process operating with a hydrate salt and moist air for thermal storage of solar energy: Global performance," Applied Energy, Elsevier, vol. 129(C), pages 177-186.
    8. André, Laurie & Abanades, Stéphane & Flamant, Gilles, 2016. "Screening of thermochemical systems based on solid-gas reversible reactions for high temperature solar thermal energy storage," Renewable and Sustainable Energy Reviews, Elsevier, vol. 64(C), pages 703-715.
    9. Jaime Buitrago & Shihab Asfour, 2017. "Short-Term Forecasting of Electric Loads Using Nonlinear Autoregressive Artificial Neural Networks with Exogenous Vector Inputs," Energies, MDPI, vol. 10(1), pages 1-24, January.
    10. Zhang, Guoqiang & Eddy Patuwo, B. & Y. Hu, Michael, 1998. "Forecasting with artificial neural networks:: The state of the art," International Journal of Forecasting, Elsevier, vol. 14(1), pages 35-62, March.
    11. Scapino, Luca & Zondag, Herbert A. & Van Bael, Johan & Diriken, Jan & Rindt, Camilo C.M., 2017. "Energy density and storage capacity cost comparison of conceptual solid and liquid sorption seasonal heat storage systems for low-temperature space heating," Renewable and Sustainable Energy Reviews, Elsevier, vol. 76(C), pages 1314-1331.
    12. Yan, T. & Wang, R.Z. & Li, T.X. & Wang, L.W. & Fred, Ishugah T., 2015. "A review of promising candidate reactions for chemical heat storage," Renewable and Sustainable Energy Reviews, Elsevier, vol. 43(C), pages 13-31.
    13. Zina Boussaada & Octavian Curea & Ahmed Remaci & Haritza Camblong & Najiba Mrabet Bellaaj, 2018. "A Nonlinear Autoregressive Exogenous (NARX) Neural Network Model for the Prediction of the Daily Direct Solar Radiation," Energies, MDPI, vol. 11(3), pages 1-21, March.
    14. Nagel, T. & Shao, H. & Roßkopf, C. & Linder, M. & Wörner, A. & Kolditz, O., 2014. "The influence of gas–solid reaction kinetics in models of thermochemical heat storage under monotonic and cyclic loading," Applied Energy, Elsevier, vol. 136(C), pages 289-302.
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