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Predictive Control of District Heating System Using Multi-Stage Nonlinear Approximation with Selective Memory

Author

Listed:
  • Marius Reich

    (Centre of Innovative Energy Systems, University of Applied Sciences Duesseldorf, 40476 Duesseldorf, Germany)

  • Jonas Gottschald

    (Centre of Innovative Energy Systems, University of Applied Sciences Duesseldorf, 40476 Duesseldorf, Germany)

  • Philipp Riegebauer

    (Centre of Innovative Energy Systems, University of Applied Sciences Duesseldorf, 40476 Duesseldorf, Germany)

  • Mario Adam

    (Centre of Innovative Energy Systems, University of Applied Sciences Duesseldorf, 40476 Duesseldorf, Germany)

Abstract

Innovative heating networks with a hybrid generation park can make an important contribution to the energy turnaround. By integrating heat from several heat generators and a high proportion of different renewable energies, they also have a high degree of flexibility. Optimizing the operation of such systems is a complex task due to the diversity of producers, the use of storage systems with stratified charging and continuous changes in system properties. Besides, it is necessary to consider conflicting economic and ecological targets. Operational optimization of district heating systems using nonlinear models is underrepresented in practice and science. Considering ecological and economic targets, the current work focuses on developing a procedure for an operational optimization, which ensures a continuous optimal operation of the heat and power generators of a local heating network. The approach presented uses machine learning methods, including Gaussian process regressions for a repeatedly updated multi-stage approximation of the nonlinear system behavior. For the formation of the approximation models, a selection algorithm is utilized to choose only essential and current process data. By using a global optimization algorithm, a multi-objective optimal setting of the controllable variables of the system can be found in feasible time. Implemented in the control system of a dynamic simulation, significant improvements of the target variables (operating costs, CO 2 emissions) can be seen in comparison with a standard control system. The investigation of different scenarios illustrates the high relevance of the presented methodology.

Suggested Citation

  • Marius Reich & Jonas Gottschald & Philipp Riegebauer & Mario Adam, 2020. "Predictive Control of District Heating System Using Multi-Stage Nonlinear Approximation with Selective Memory," Energies, MDPI, vol. 13(24), pages 1-25, December.
  • Handle: RePEc:gam:jeners:v:13:y:2020:i:24:p:6714-:d:465093
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    References listed on IDEAS

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    1. Claudia Kemfert & Petra Opitz & Thure Traber & Lars Handrich, 2015. "Deep Decarbonization in Germany: A Macro-Analysis of Economic and Political Challenges of the 'Energiewende' (Energy Transition)," DIW Berlin: Politikberatung kompakt, DIW Berlin, German Institute for Economic Research, volume 93, number pbk93.
    2. Lund, Henrik & Werner, Sven & Wiltshire, Robin & Svendsen, Svend & Thorsen, Jan Eric & Hvelplund, Frede & Mathiesen, Brian Vad, 2014. "4th Generation District Heating (4GDH)," Energy, Elsevier, vol. 68(C), pages 1-11.
    3. Cox, Sam J. & Kim, Dongsu & Cho, Heejin & Mago, Pedro, 2019. "Real time optimal control of district cooling system with thermal energy storage using neural networks," Applied Energy, Elsevier, vol. 238(C), pages 466-480.
    4. Steen, David & Stadler, Michael & Cardoso, Gonçalo & Groissböck, Markus & DeForest, Nicholas & Marnay, Chris, 2015. "Modeling of thermal storage systems in MILP distributed energy resource models," Applied Energy, Elsevier, vol. 137(C), pages 782-792.
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    Cited by:

    1. Joanna Piotrowska-Woroniak & Tomasz Szul & Krzysztof Cieśliński & Jozef Krilek, 2022. "The Impact of Weather-Forecast-Based Regulation on Energy Savings for Heating in Multi-Family Buildings," Energies, MDPI, vol. 15(19), pages 1-30, October.
    2. Joanna Piotrowska-Woroniak & Krzysztof Cieśliński & Grzegorz Woroniak & Jonas Bielskus, 2022. "The Impact of Thermo-Modernization and Forecast Regulation on the Reduction of Thermal Energy Consumption and Reduction of Pollutant Emissions into the Atmosphere on the Example of Prefabricated Build," Energies, MDPI, vol. 15(8), pages 1-32, April.

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