Flow Channel Optimization to Improve the Performance of a Liquid–Gas Ejector for an Intelligent Toilet Spray Bar
Abstract
:1. Introduction
2. Methods of Calculation and Simulation Validation
2.1. Structure and Working Principle of the Cleaning Spray Bar
2.2. Geometry and Mesh
2.3. Mathematical Model
2.4. Validation of Computational Schemes
3. Calculated Analysis of Prototype Clean Spray Bar
3.1. Performance of the Spray Bar Channel
3.2. Flow Analysis of the Spray Bar Channel
4. Optimization of the Spray Bar
4.1. Development of the Optimization Scheme
- (1)
- Figure 12a involves the placement of a small block at the end of the 90° bend in the channel. The specific location of the block is shown in Figure 12a, with a block width (D) of 0.5 mm. The block length (L) is set at four different values: 0.5, 1, 1.5, and 2 mm for the four different simulations corresponding to the four programs.
- (2)
- Figure 12b is an extension of Figure 12a, where the optimal block length determined from Figure 12a is selected. This optimal length is then used to place blocks at four distinct positions, namely (2), (3), (4), and (5), as shown in Figure 12b. Subsequently, simulations are conducted for each of these four schemes.
4.2. Calculation Results and Analysis of the Optimization Schemes
5. Conclusions
- (1)
- The optimization presented in this study for the cleaning spray model of intelligent toilets effectively reduces the swirl number, increases the air intake, and minimizes the pressure loss. These substantial enhancements significantly improve the overall user comfort of intelligent toilets. With the same inlet flow rate, the block width (D) in optimization Figure 12a is 0.5 mm, and the optimal block length (L) is determined to be 1.5 mm (L = 1.5 mm). At these settings, the swirl number reaches 14.8% of the prototype, while the air intake increases to 133% of the prototype. In optimization Figure 12b, among the five block positions, the optimal position is identified as position (4). The number of swirls of this optimized scheme is 8.3% of the prototype, with an air intake reaching 131% of the prototype. Overall, Figure 12b, with the optimal block position (4), represents the optimal solution derived in this study.
- (2)
- Among the optimization schemes evaluated in this study, the optimized model with the highest air intake corresponds to block position (5) in optimization Figure 12b. The achieved air intake and swirl number achieved by this optimized model are 147% and 57.4% of the prototype, respectively. Compared to the optimized model with block position (4) in optimization Figure 12b, this model exhibits a 16% increase in air intake and a 49.1% increase in swirl number. Hence, we conclude that there is no direct correlation between the swirl number and the air intake, and it is incorrect to assume that lower swirl numbers result in higher air intake. Facing different scenario requirements, different models are used.
- (3)
- The optimization models employed in this study reveal that the β value associated with Figure 12b is generally lower in comparison to Figure 12a. Notably, the position (4) model within Figure 12b exhibits the lowest β value. The findings suggest that altering the block position is more effective in reducing pressure loss in the cleaning spray bar compared to adjusting the block length.
- (4)
- The simulation calculations and results of this paper can not only be used to improve the structural performance of the intelligent toilet cleaning spray bar channel and enhance the competitiveness of the product but also can be applied to the structure of fire water cannons with similar flow channels, pumping station inlet channels, and liquid–gas ejectors by applying the optimized structure and simulation calculations of this paper to improve the strength of their swirling, the eccentricity of the ejectors, and the air intake, as well as other problems.
- (5)
- Based on this study’s findings, several recommendations can be proposed for future research. New simulation calculations should be performed by modifying the block’s shape or altering the overall structure of the spray in intelligent toilets. Further research is warranted to strive for a solution design that maximizes air intake, minimizes pressure loss, and effectively suppresses the swirling effect.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Nomenclature
CFD | Computational fluid dynamics |
q | Flow ratio of the liquid–gas ejector |
Qp | Inflow rate at the liquid–gas ejector water inlet |
Qs | Inflow rate at the liquid–gas ejector suction port |
h | Pressure ratio of the liquid–gas ejector |
Po | Outlet pressure of the liquid–gas ejector |
Ps | Pressure at the liquid–gas ejector water inlet |
Pp | Pressure at the liquid–gas ejector suction port |
η | Efficiency of the liquid–gas ejector |
S | Outlet swirl number |
uz | Average value of axial velocity on the cross-section |
uθ | Average value of tangential velocity on the cross-section |
R | Diameter of the cross-section |
r | Radius of the cross-section |
λ | Ratio of the suction volume of the optimized model of the clean spray bar to that of the prototype |
Qa−n | Suction volume of the optimized model (m3/h) |
Qa−o | Suction volume of the prototype (m3/h) |
β | Ratio of the static pressure at the inlet of the optimized model of the clean spray bar to that of the prototype |
Pw−n | Static pressure at the inlet of the optimized model (Pa) |
Pw−o | Static pressure at the inlet of the prototype (Pa) |
M | Mass flow ratio of the liquid–gas ejector |
η | Efficiency of the liquid–gas ejector |
k | Turbulent kinetic energy |
ε | Turbulent kinetic energy dissipation rate |
Pk | Turbulent kinetic energy generated by the velocity gradient |
Pb | Turbulent kinetic energy generated by buoyancy |
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Zhou, Q.; Zhu, C.; Yang, X.; Chen, J.; Mou, J. Flow Channel Optimization to Improve the Performance of a Liquid–Gas Ejector for an Intelligent Toilet Spray Bar. Atmosphere 2024, 15, 58. https://doi.org/10.3390/atmos15010058
Zhou Q, Zhu C, Yang X, Chen J, Mou J. Flow Channel Optimization to Improve the Performance of a Liquid–Gas Ejector for an Intelligent Toilet Spray Bar. Atmosphere. 2024; 15(1):58. https://doi.org/10.3390/atmos15010058
Chicago/Turabian StyleZhou, Qiwei, Chenbing Zhu, Xuelong Yang, Jianchong Chen, and Jiegang Mou. 2024. "Flow Channel Optimization to Improve the Performance of a Liquid–Gas Ejector for an Intelligent Toilet Spray Bar" Atmosphere 15, no. 1: 58. https://doi.org/10.3390/atmos15010058
APA StyleZhou, Q., Zhu, C., Yang, X., Chen, J., & Mou, J. (2024). Flow Channel Optimization to Improve the Performance of a Liquid–Gas Ejector for an Intelligent Toilet Spray Bar. Atmosphere, 15(1), 58. https://doi.org/10.3390/atmos15010058