Methodology for Energy Optimization in Wastewater Treatment Plants. Phase III: Implementation of an Integral Control System for the Aeration Stage in the Biological Process of Activated Sludge and the Membrane Biological Reactor
Abstract
:1. Introduction
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- Ensure the correct functioning of the different components involved in the operation of the WWTP, maximize the performance of the available equipment, coordinate the operation of the different process units in order to get the most out of them and reduce the impact of the disturbances on the final recipients of the treated water.
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- Guarantee the quality of the effluent.
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- Save energy by automatic control and by using the tariff system, by making possible the displacement of part of the energy consumption in aeration to the most economic tariffs.
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2. Initial Operating Conditions of the Control Systems Regulating the Biological Aeration Stage
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- Operation with time-based start-stop aeration cycles, regardless of the oxygen values achieved
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- Cycle operation with start-stop aeration according to pre-established oxygen settings in oxic chamber No. 3, regardless of the real oxygen requirements of the system
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- For water flows below 300 m3/h, one membrane train with a 75-kW aeration blower was in operation. This blower provided a unit air flow of approximately 3650 Nm3/h at 3.72 m.w.c. distributed through two cyclic valves with a 10”/10” actuation mode. One of the valves would be open for 10 s, ventilating one part of the membrane cassette, and closed for 10 s, ventilating the other part of the cassette by alternating operation of the other valve, thus uninterruptedly (Figure 2).
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- For water flows of 300–600 m3/h, two membrane trains and a 75-kW aeration unit were in operation. The air distribution was done by four cyclic valves with a 10”/30” aeration mode. These valves would act sequentially; they would open for 10 s and remain closed for 30 s, with the actuation sequence being repeated indefinitely while the trains were in operation (Figure 2).
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- For water flows of 600–900 m3/h, three membrane trains would come into operation, and, for flows of 900–1200 m3/h, four membrane trains would be required to be in operation. In both cases, two 75-kW blowers were operated following the same valve actuation sequence mentioned above for one or two trains.
3. Method for the Design of the Aeration Control System
3.1. Design of the Aeration Control System of the Activated Sludge Biological Reactor
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- Installation of a sensor for continuous measurement of ammonium and nitrate in each line of the reactor, located at the end of oxic chamber No. 3, formed by a combined sensor for continuous measurement, by selective electrode, of the ammonium and nitrate ions, with a measurement range of 0.5–1000 mg/L NH4+-N and 0.5–1000 mg/L NO3-N.
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- Installation of additional sensors for the measurement of dissolved oxygen (DO) in oxic chamber Nos. 1 and 2 of both biological reactors. This, together with the sensors in oxic chamber No. 3, allowed the dissolved oxygen concentration to be determined by luminescence in each of the chambers, with a measurement range of 0–20 mg/L.
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- Installation of a dissolved oxygen (DO) sensor in the MBR, specifically in the sludge recirculation channel common to all the membrane trains. This made it possible to determine the dissolved oxygen concentration by luminescence in the mixed liquor, with a measurement range of 0–20 mg/L O2/0–50 °C.
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- Installation of motorized guillotine valves in each downpipe to regulate the air flow in the oxic chambers with variable dimensions depending on the density of diffusers in each chamber with WAFER connections, and a cast iron body. An AUMA MATIC electric actuator was also installed, with regulation by means of a 0–20-mA signal.
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- Installation of pressure sensors in each airline to control the pressure, with a measurement range of 0–1 bar.
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- Programming in the PLC of the new control loop according to the measured parameters (NH4+-N, NO3−-N and DO) and the pressure in the manifold, as well as implementation in the plant Supervisory Control and Data Acquisition (SCADA) system.
3.1.1. Criteria for Establishing Aeration Cycles Based on the N-NH4+/N-NO3− Content in the Water
3.1.2. Criteria for Establishing Oxygen Set Points in Aerated Areas
3.1.3. Criteria for Establishing Working Pressure Setpoints
- Tests with constant pressure settings.
- 2.
- Tests with variable pressure set points.
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- When in one of the zones, the control system requests that the position of the corresponding valve in one of the chambers is above the maximum opening threshold set (80%, value configurable from the SCADA system) as the oxygen setpoint is not reached in the zone and is lower than the setpoint by a certain value (setpoint + 0.01). This situation is maintained for a certain time (5 min), and then the setpoint of the PID pressure controller is increased by a certain amount (0.002 bar). The resulting increase in pressure in the main line has the effect of increasing the measured oxygen value in the tank in question, bringing it back to the setpoint. This reduces the opening of the corresponding valve, positioning it in a more desirable range for control purposes.
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- If, on the other hand, the control system requires the position of the corresponding valve in one of the chambers to be below the minimum opening threshold set (50%, value configurable from the SCADA system), because the oxygen measurement is higher than its setpoint by a certain value (setpoint−0.01), and this situation is maintained for a certain time (5 min), the PID pressure controller setpoint is decreased by a certain value (0.002 bar). The resulting decrease in pressure in the main line has the effect of decreasing the measured oxygen value in the area in question, reducing it to its set point, and increasing the opening of the corresponding valve, positioning it in a more desirable range for control purposes.
3.2. Design of the Aeration Control System for the Membrane Bioreactor
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- Reduce the air flow supplied to the membrane system.
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- Set a fixed blower operating speed
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- Set two different speeds with a settable time so they follow each other cyclically
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- Separate the aeration shared between membrane trains.
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- Reduce the aeration flow rate of one of the installed equipment to 50%.To do this, an economic study was carried out, considering the possibilities:
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- Replacing an existing 75-kW aeration unit with a new unit with an installed power of 30 kW, with a normal air flow rate of approximately 1825 Nm3/h at 300 mbar.
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- Mechanical modification of the transmission system of one of the existing blowers to achieve the reduction in operating speed required to obtain the desired flow rate, no less than 1825 Nm3/h at 300 mbar.
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- Modify the air supply line to isolate the aeration between trains.The intervention was made to two trains, identified as No. 2 and No. 3. For each modified train, it was necessary to install:
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- Two new pneumatically operated cyclic valves with 1/4” BSP connection actuator and a maximum pressure of 8 bar.
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- A new pneumatic panel, where all the electric and pneumatic control elements were included: electrovalves, pressure regulator, etc.
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- A manual butterfly valve type WAFER Butterfly DN-300 and manual reducer to facilitate the maintenance of the cyclic valves.
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- Pressure sensors in each airline to control the pressure, with a measurement range of 0–1 bar.
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- Program PLC and SCADA with a new control strategy based on the number of trains running:
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- When the demand for water treatment requires the startup of a single train (single-train mode), train No. 2 or train No. 3 is activated according to its availability in the SCADA system with actuation of both the blower with a 30 kW motor and the four cyclic valves located in the same train with 10/30” opening and closing (Figure 8.)
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- When the demand for water treatment requires the start-up of two trains (two-train mode) there is an option to start up trains Nos. 1 and 2 or trains Nos. 3 and 4, depending on their availability in the SCADA with a 75-kW blower motor. The operation criterion followed will be the same as up to now (10/30” opening and closing) but it is necessary to set up four cyclic valves (Figure 9).
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- When the demand for water treatment requires the implementation of three trains, the operation is a combination of the two previous cases, in which a 75-kW blower for two-train operation (two-train mode) with 10”/30” aeration and a 30-kW blower for single-train operation (single-train mode) with 10/30” aeration would come into operation (Figure 8 and Figure 9).
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- When the demand for water treatment requires the operation of four trains, all available trains with two 75-kW blowers and the performance criterion developed for the two-train mode are put into operation (Figure 9).
4. Results and Discussion
4.1. Design of the Aeration Control System of the Activated Sludge Biological Reactor
4.2. Design of the Aeration Control System for the Membrane Bioreactor
4.3. Overall Results on Energy Consumption at the WWTP
5. Conclusions
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- It offers important operational advantages since it is possible to work with both lines of the reactor. This offers a greater capacity for action in the event of an unforeseen event.
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- It increases efficiency in oxygen transfer and minimizes air requirements and therefore energy demand, with the correct selection of oxygen concentration and pressure set points.
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- It improves process control and provides stability.
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- It ensures values in the WWTP outlet water below 1.5 mg/L NH4+-N and between 1 and 3 mg/L NO3−N. Ammonium and nitrate removal performance in the effluent water is considerably higher than that required by current regulations.
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- It guarantees energy savings of more than 20% in the aeration process of the AS system, by means of exhaustive control of the nitrification and denitrification processes and by adjusting the higher air demand to the most economical electricity rates. Results are in line with those obtained in Phase II of optimization [9].
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- Increased control of the aeration of the MBR system reduces the energy consumption of the plant by more than 9.3%.
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- It completes a methodology to optimize operating costs in wastewater treatment plants, compatible with European energy policies that promote energy savings and sustainable development through the 17 Sustainable Development Goals. It allows for the consolidation of reductions of more than 40% in the energy ratio expressed in kWh/m3.
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- The re-engineering of the processes carried out is based on the principles of the circular economy and represents the previous step to digitalization of the installation.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Lozano Avilés, A.B.; Del Cerro Velázquez, F.; Lloréns Pascual del Riquelme, M. Methodology for Energy Optimization in Wastewater Treatment Plants. Phase III: Implementation of an Integral Control System for the Aeration Stage in the Biological Process of Activated Sludge and the Membrane Biological Reactor. Sensors 2020, 20, 4342. https://doi.org/10.3390/s20154342
Lozano Avilés AB, Del Cerro Velázquez F, Lloréns Pascual del Riquelme M. Methodology for Energy Optimization in Wastewater Treatment Plants. Phase III: Implementation of an Integral Control System for the Aeration Stage in the Biological Process of Activated Sludge and the Membrane Biological Reactor. Sensors. 2020; 20(15):4342. https://doi.org/10.3390/s20154342
Chicago/Turabian StyleLozano Avilés, Ana Belén, Francisco Del Cerro Velázquez, and Mercedes Lloréns Pascual del Riquelme. 2020. "Methodology for Energy Optimization in Wastewater Treatment Plants. Phase III: Implementation of an Integral Control System for the Aeration Stage in the Biological Process of Activated Sludge and the Membrane Biological Reactor" Sensors 20, no. 15: 4342. https://doi.org/10.3390/s20154342
APA StyleLozano Avilés, A. B., Del Cerro Velázquez, F., & Lloréns Pascual del Riquelme, M. (2020). Methodology for Energy Optimization in Wastewater Treatment Plants. Phase III: Implementation of an Integral Control System for the Aeration Stage in the Biological Process of Activated Sludge and the Membrane Biological Reactor. Sensors, 20(15), 4342. https://doi.org/10.3390/s20154342