Economic Linear Parameter Varying Model Predictive Control of the Aeration System of a Wastewater Treatment Plant †
Abstract
:1. Introduction
2. WWTP Description and Modeling
2.1. WWTP Description
2.2. WWTP Modeling
- The soluble () and particulate () organic compounds are aggregated as a single variable , the chemical oxigen demand (COD).
- Through reduction by time scale from the theory of singular pertubation, the slow dynamics of the variables , and together with the soluble inert organic compounds are excluded.
- Finally, simplification of complicated kinetic process, assumption of no alkalinity and separation of aerobic and anoxic conditions are considered.
2.3. LPV Representation of the WWTP
3. EMPC of a WWTP
3.1. Operational Goals
- Economic costs. The main economic costs associated with WWTP are primarily due to treatment and electricity costs. Water through the WWTP involves important electricity costs in pumping stations in charge of internal and external water recirculations as well as aeration in the aerobic tanks. In our case, only the aeration energy is considered with an objective of minimizing the cost associated with supply of oxygen for controlled culture growth. The performance index is described as follows
- DO concentration control. In order to control the within some bounds in the EMPC during the aeration process, slack variables are introduced in the optimization problem, which seek to penalize the dissolved oxygen states, such that they are maintained in a range to maintain effluent quality. Selecting slack variables, and , additional terms of soft constraints (see (16c) and (16d)) and a quadratic objective index are introduced with as the selected DO concentration value. The introduction of the slack variables ensures that the DO concentration varies within a boundary around aided by the appropriate selection of weights in the objective function. The performance index is thus given as
- Smooth set points for equipment conservation. The operation of WWTP and main valves and pumps usually requires smooth flow set-point variations. To obtain such a smoothing effect, the proposed MPC controller includes a third term in the objective function to penalize the control signal variation between consecutive time intervals. This term is expressed asTherefore, the performance function J considering the aforementioned control objectives has the form
3.2. Control Strategy Computation
4. Moving Horizon Estimation
5. Simulation Results
5.1. LPV EMPC Implementation Details
- Qin (between 10,000–35,000 m/d);
- COD (between 400–650 mg/L);
- DBO (175–225 mg/L); and
- Nitrogen (between 40–65 mg/L).
5.2. First Scenario
5.3. Second Scenario
6. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Abbreviations
ASM | Active Sludge Model |
ASP | Active Sludge Process |
BSM | Benchmark Simulation Model |
COD | Chemical Oxygen Demand |
DO | Dissolved Oxygen |
EMPC | Economic Model Predictive Control |
qLPV | Quasi-Linear Parameter Varying |
LPV | Linear Parameter Varying |
MHE | Moving Horizon Estimator |
MPC | Model Predictive Control |
NEMPC | Nonlinear Economic Model Predictive Control |
NMPC | Nonlinear Model Predictive Control |
RTO | Real-Time Optimization |
SSTO | Steady-State Target Optimizator |
WWTP | Wastewater Treatment Plant |
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Nejjari, F.; Khoury, B.; Puig, V.; Quevedo, J.; Pascual, J.; de Campos, S. Economic Linear Parameter Varying Model Predictive Control of the Aeration System of a Wastewater Treatment Plant. Sensors 2022, 22, 6008. https://doi.org/10.3390/s22166008
Nejjari F, Khoury B, Puig V, Quevedo J, Pascual J, de Campos S. Economic Linear Parameter Varying Model Predictive Control of the Aeration System of a Wastewater Treatment Plant. Sensors. 2022; 22(16):6008. https://doi.org/10.3390/s22166008
Chicago/Turabian StyleNejjari, Fatiha, Boutrous Khoury, Vicenç Puig, Joseba Quevedo, Josep Pascual, and Sergi de Campos. 2022. "Economic Linear Parameter Varying Model Predictive Control of the Aeration System of a Wastewater Treatment Plant" Sensors 22, no. 16: 6008. https://doi.org/10.3390/s22166008
APA StyleNejjari, F., Khoury, B., Puig, V., Quevedo, J., Pascual, J., & de Campos, S. (2022). Economic Linear Parameter Varying Model Predictive Control of the Aeration System of a Wastewater Treatment Plant. Sensors, 22(16), 6008. https://doi.org/10.3390/s22166008