Scientific Results

  • ID:
    publications-5251
  • Type:
    Conference paper
  • Year:
    2022
  • Authors:
    Salazar W.C.; Machado D.O.; Len A.J.G.; Gonzalez J.M.E.; Alba C.B.; De Andrade G.A.; Normey-Rico J.E.
  • Title:
    Neuro-Fuzzy Digital Twin of a High Temperature Generator
  • Venue/Journal:
    IFAC-PapersOnLine
  • DOI:
    10.1016/j.ifacol.2022.07.081
  • Research type:
  • Water System:
  • Technical Focus:
  • Abstract:
    Solar absorption plants are renewable energy systems with a special advantage: the cooling demand follows the solar energy source. The problem is that this plant presents solar intermittency, phenomenological complexity, and nonlinearities. That results in a challenge for control and energy management. In this context, this paper develops a Digital Twin of an absorption chiller High Temperature Generator (HTG) seeking accuracy and low computational efort for control and management purposes. A neuro-fuzzy technique is applied to describe HTG, internal Lithium-Bromide temperature, and water outlet temperature. Two Adaptative Neuro-Fuzzy Inference Systems (ANFIS) are trained considering real data of eight days of operation. Then, the obtained model is validated considering two days of real data. The validation shows a RMSE of 1.65e-2for the internal normalized temperature, and 2.05e-2for the outlet normalized temperature. Therefore, the obtained Digital Twin presents a good performance capturing the dynamics of the HTG with adaptive capabilities considering that each day can update the learning step. Β© 2022 Elsevier B.V.. All rights reserved.
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