Abstract
This paper presents a clustering-based model predictive controller for optimizing the heat transfer fluid (HTF) flow rates circulating through every loop in solar parabolic trough plants. In particular, we present a hierarchical approach consisting of two layers: a bottom layer, composed of a set of model predictive control (MPC) agents; and a top layer, which dynamically partitions the set of loops into clusters. Likewise, the top layer allocates a certain share of the total available HTF to each cluster, which is then distributed among the loops by the bottom layer in response to the varying conditions of the solar field, e.g., to deal with passing clouds. The dynamic clustering of the system reduces the number of variables to be coordinated in comparison with centralized MPC, thereby speeding up the computations. Moreover, the loops efficiencies and the heat losses coefficients, which influence the loops control model, are also estimated at the bottom layer. Numerical results on a 10-loop and an 80-loop plant are provided.
Original language | English |
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Article number | 118978 |
Number of pages | 10 |
Journal | Renewable Energy |
Volume | 216 |
DOIs | |
Publication status | Published - Nov 2023 |
Funding
This work is supported by the European Research Council Advanced Grant OCONTSOLAR under Grant SI-1838/24/2018 , and by the Spanish MCIN/AEI/10.13039/501100011033 Project C3PO-R2D2 under Grant PID2020-119476RB-I00 .
Funders | Funder number |
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H2020 European Research Council | SI-1838/24/2018, C3PO-R2D2, PID2020-119476RB-I00 |
Keywords
- Coalitional control
- Control by clustering
- Hierarchical control
- Model predictive control
- Parabolic trough collectors
- Solar thermal power plants