Economic Model Predictive Control for Optimal Operation of Combined Heat and Power Systems

Jenny Lorena Diaz Castañeda1, Thomas Weber2, Niklas Panten3, Carlos Ocampo-martinez4, Eberhard Abele3

  • 1Institut de Robòtica i Informàtica Industrial, CSIC-UPC
  • 2PTW TU-Darmstadt
  • 3Technische Universität Darmstadt, Institute of Production Manage
  • 4Universitat Politècnica de Catalunya - BarcelonaTECH (UPC)

Details

12:06 - 12:28 | Wed 28 Aug | 016 | WeAT7.4

Session: Lean Manufacturing and Quality Management - I

Abstract

The use of decentralized Combined Heat and Power (CHP) plants is increasing since the high levels of efficiency they can achieve. Hence, to determine the optimal operation of these systems in the changing energy market, the time-varying price profiles for both electricity as well as the required resources and the energy-market constraints should be considered into the design of the control strategies. To solve these issues and maximize the profit during the operation of the CHP plant, this paper proposes an optimization-based controller, which will be designed according to the Economic Model Predictive Control (EMPC) approach. The proposed controller is designed considering a non-constant time step to get a high sampling frequency for the near instants and a lower resolution for the far instants. Besides, a soft constraint to met the market constraints for the sale of electric power is proposed. The proposed controller is developed based on a real CHP plant installed in the ETA research factory in Darmstadt, Germany. Simulation results show that lower computational time can be achieved if a non-constant step time is implemented while the market constraints are satisfied.