4.7 Article

Precise control of water and wastewater treatment systems with non-ideal heterogeneous mixing models and high-fidelity sensing

Journal

CHEMICAL ENGINEERING JOURNAL
Volume 430, Issue -, Pages -

Publisher

ELSEVIER SCIENCE SA
DOI: 10.1016/j.cej.2021.132819

Keywords

Non-ideal heterogeneous mixing models; Precise Control; Heterogeneity profiling; High-accuracy sensing; Global optimization; Water; Wastewater treatment systems

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Non-ideal heterogeneous mixing models are developed and incorporated into advanced closed-loop control strategies utilizing high-resolution sensing to maximize resiliency and minimize energy consumption in water treatment processes. The models are simple with few parameters, allowing for fast online prediction and regular recalibration. They outperform CFD and data-driven models, offering superior performance in water and wastewater treatment processes.
Non-ideal heterogeneous mixing models are developed and incorporated within advanced closed-loop control strategies utilizing high-resolution sensing to maximize the resiliency and minimize the energy consumption of water treatment processes with intelligent model-based decision-making approaches. The proposed non-ideal heterogeneous mixing models capture continuity (heat and mass conservation), yet are extremely simple with few parameters, so they lend themselves to fast online prediction (with extrapolation capabilities) and regular recalibration. Further, they are more accurate than computational fluid dynamics (CFD) (60% less error) and symbolic regression data-driven models (73% less error). Real-time high-resolution sensor data are collected for observing spatiotemporal responses of state variables (conductivity, pH, and temperature) to transient influent shocks. Deterministic global dynamic optimization is used for training and recalibration of the non-ideal heterogeneous mixing models to guarantee the best-possible fits to the sensor data. The models are then deployed within standard model-predictive control and two economic model-predictive control strategies to demonstrate model-based decision-making for disturbance rejection and optimal operation of aeration in a continuous flow nitrification system utilizing high-resolution sensor data from several spatial positions. The new technology platform, consisting of high-resolution sensors, non-ideal heterogeneous mixing modeling, deterministic global dynamic optimization, and model-predictive control, offers superior performance over current approaches in water and wastewater treatment processes.

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