Experimental Study of Vibration Characteristics Under Multiple Operating Conditions of the Pump as Turbine in Energy Micro-Grids
Abstract
1. Introduction
1.1. Research Status of Experimental Studies
1.2. Research Status of Vibration
1.3. Outstanding Problems and Research Aims
2. Study Subject and Experimental Equipment
2.1. Pump Parameters
2.2. Experimental Equipment
2.2.1. Experimental Circuit
2.2.2. Data Acquisition System
3. Experimental Program Design
3.1. Experimental Procedure for PATs in Pump Mode
- Data acquisition was conducted using a system for reversible centrifugal pump performance characterization and signal monitoring developed for this study.
- The outlet valve was opened to 100%, the centrifugal pump was started, and the motor speed was adjusted to 1450 rpm with the frequency converter. Under stable operating conditions, the flow value, inlet and outlet pressure sensor readings, head, efficiency, and other relevant data were simultaneously recorded using LabVIEW 2019 monitoring software on the host computer. To minimize measurement errors, data were repeatedly sampled on the test cloud platform, and the averages were taken as the effective values for the operating condition. Additionally, signals were collected with the three-axis vibration sensor and pressure pulsation sensors at the monitoring points for a flow rate range of 0 to 1.2Qd.
- The motor speed was set to 1000 rpm, and step (2) was repeated.
- The experimental data were exported from the MySQL database.
- The “End Experiment” button was pressed to turn off the centrifugal pump and disconnect the power supply.
3.2. Experimental Procedure for PATs in Turbine Mode
- The inlet valve was opened to allow water to gradually fill the pump body and the inlet and outlet pipelines. Simultaneously, the changes in the pressure sensor readings were checked to ensure that no air remained in the pipeline.
- The motor was started to operate the centrifugal pump in turbine mode, and the frequency converter was used to adjust the motor speed to 750 rpm for stable operation. Simultaneously, the flow value, inlet pressure, outlet pressure, head, efficiency, and other sensor readings were monitored with LabVIEW 2022 software on the host computer, and the data were accurately recorded on the pre-designed experimental data sheet. To minimize measurement errors, the data sampling process was repeated on the test platform, and the averages were taken as the valid values for the operating condition. Additionally, the three-axis vibration sensor and pressure pulsation sensors at the monitoring points were used to collect signals for flow rates of 1.0 to 1.8Qd.
- The experimental data were exported from the MySQL database.
- The “End Experiment” button was pressed to turn off the centrifugal pump and disconnect the power supply, and the sensors and monitoring terminals were removed.
3.3. Experimental External Characteristic Curve and Uncertainty Analysis
4. Results and Discussion
4.1. Signal Time–Frequency-Domain Analysis in Pump Mode
4.1.1. Time-Domain Analysis of Vibration Signals in Pump Mode
- Standard Deviation:
- 2.
- Skewness:
- 3.
- Kurtosis:
- 4.
- Root Mean Square (RMS):
4.1.2. Frequency-Domain Analysis of Vibration Signals in Pump Mode
4.1.3. Time-Domain Analysis of Pressure Pulsation Signals in Pump Mode
4.1.4. Frequency-Domain Analysis of Pressure Pulsation Signals in Pump Mode
4.2. Signal Time–Frequency-Domain Analysis in Turbine Mode
4.2.1. Time-Domain Analysis of Vibration Signals in Turbine Mode
4.2.2. Frequency-Domain Analysis of Vibration Signals in Turbine Mode
4.2.3. Time-Domain Analysis of Pressure Pulsation Signals in Turbine Mode
4.2.4. Frequency-Domain Analysis of Pressure Pulsation Signals in Turbine Mode
4.3. Comparison of Pump and Turbine Mode Results
5. Conclusions and Directions for Future Work
5.1. Conclusions
- In pump mode at 1450 rpm, the time- and frequency-domain analyses of the vibration signals reveal that skewness and kurtosis exhibit significant but irregular variations with the increase in the flow rate, making it difficult to use these time-domain features to determine the operating conditions. However, the standard deviation and RMS values in the Z direction gradually decrease with the increase in the flow rate; since the RMS reflects the overall energy of the signal, it can serve as a criterion for vibration classification. Vibration intensity increases with the flow rate, with energy being primarily concentrated at fBFP and its harmonics.
- In pump mode at 1450 rpm, the time- and frequency-domain analyses of the pressure pulsation signals indicate that inlet pressure pulsations intensify significantly under high-flow conditions. Meanwhile, pressure pulsations in the volute tongue region gradually increase with the increase in the flow rate, whereas those at the outlet diminish. As the flow rate increases, pressure pulsation strength becomes significantly large at fn, fBFP, and the latter’s harmonics.
- In turbine mode at 750 rpm, the time- and frequency-domain analyses of the vibration signals show that the standard deviation and RMS values increase progressively with the flow rate in the X, Y, and Z directions, making the RMS a viable indicator for determining the operating conditions. The vibration amplitudes exhibit an upward trend with the increase in the flow rate, with particularly pronounced vibrations near 3fBFP.
- In turbine mode at 750 rpm, the time- and frequency-domain analyses of the pressure pulsation signals demonstrate that dimensionless pressure pulsation amplitudes at all monitoring points increase with the increase in the flow rate, with a 37–52% increment in pulsation intensity at 1.8Qd compared with the design condition. A strong coherence coefficient between P2 and P4 in high-pressure pulsation components confirms a mechanism of excitation transfer from inlet pulsations to the tongue region via fluid inertial forces. Notably, at 4fBFP, P2 exhibits energy concentration, and P4 displays significant pressure pulsation signals.
5.2. Directions for Future Work
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Nomenclature
Design flow rate, m3/h | |
Head, m | |
Rotational speed, rpm | |
Specific rotational speed | |
Impeller inlet diameter, mm | |
Impeller outlet diameter, mm | |
Volute outlet diameter, mm | |
Inlet blade angle, ° | |
Outlet blade angle, ° | |
Blade outlet width, mm | |
Blade Number | |
Standard Deviation | |
Skewness | |
Kurtosis | |
Shaft Frequency | |
Blade Passing Frequency | |
Sampling Frequency | |
RMS | Root Mean Square |
PAT | Pump as turbine |
CFD | Computational Fluid Dynamics |
BEP | Best Efficiency Point |
CNN | Convolutional Neural Network |
LSTM | Long Short Term Memory Network |
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Parameter | Value |
---|---|
Impeller inlet diameter, D1 (mm) | 128 |
Blade inlet angle, β1 (°) | 13.5 |
Blade outlet width, b2 (mm) | 46.5 |
Volute outlet diameter, D3 (mm) | 100 |
Impeller outlet diameter, D2 (mm) | 198 |
Blade outlet angle, β2 (°) | 22.5 |
Blade number, Z | 6 |
Sensor | Range and Unit | Accuracy |
---|---|---|
Electromagnetic flowmeter | 0~140 m3/h | Level 0.5 |
Inlet pressure transmitter | −100 kPa~100 kPa | Level 0.1 |
Outlet pressure transmitter | 0~700 kPa | Level 0.1 |
High-frequency dynamic pressure sensor | 0~700 kPa | Level 0.1 |
Torque speed measuring instrument | 0 ± 30N·m | Level 0.05 |
Speed sensor | 0 ± 3000 rpm | Level 0.1 |
Times | Q (m3/h) | H (m) | P (kW) | (%) |
---|---|---|---|---|
1 | 99.13 | 9.71 | 3.41 | 76.14 |
2 | 98.93 | 9.71 | 3.41 | 75.90 |
3 | 98.97 | 9.70 | 3.41 | 75.89 |
4 | 98.94 | 9.69 | 3.40 | 75.99 |
5 | 98.74 | 9.71 | 3.40 | 76.03 |
6 | 99.11 | 9.69 | 3.40 | 76.01 |
7 | 98.76 | 9.71 | 3.40 | 76.03 |
8 | 99.01 | 9.70 | 3.41 | 75.93 |
Er | 0.33% | 0.25% | 0.31% | 0.26% |
Parameter | Pump Mode | Turbine Mode |
---|---|---|
RMS | ||
Dominant Frequency | fn and fBFP | fn, fBFP, 3fBFP, and 4fBFP |
Pressure Pulsation Amplitude | Overall low-pressure pulsation amplitude, except for high values at fBFP. | Higher at blade and harmonic frequencies due to unsteady flow and shocks. |
Flow Stability | Designed for stable flow, with less turbulence and separation. | Flow is reversed and less stable and is prone to separation and vortex shedding. |
Resonance Risk | Lower risk if design avoids natural frequencies near operating range. | Higher risk due to harmonic excitation near natural frequencies. |
Signal Sensitivity | Vibration and pressure signals are regular and easy to predict and analyze. | Signal fluctuations are large and significantly affected by flow instability, requiring higher resolution and analysis capabilities for monitoring. |
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Zhang, M.; Hu, Q.; Wang, Y.; Wang, J.; Xiong, J.; Wei, J.; Zhu, H.; Wang, W.; Pei, J. Experimental Study of Vibration Characteristics Under Multiple Operating Conditions of the Pump as Turbine in Energy Micro-Grids. Processes 2025, 13, 2541. https://doi.org/10.3390/pr13082541
Zhang M, Hu Q, Wang Y, Wang J, Xiong J, Wei J, Zhu H, Wang W, Pei J. Experimental Study of Vibration Characteristics Under Multiple Operating Conditions of the Pump as Turbine in Energy Micro-Grids. Processes. 2025; 13(8):2541. https://doi.org/10.3390/pr13082541
Chicago/Turabian StyleZhang, Meng, Qin Hu, Yang Wang, Jianbao Wang, Jing Xiong, Jixuan Wei, Hailin Zhu, Wenjie Wang, and Ji Pei. 2025. "Experimental Study of Vibration Characteristics Under Multiple Operating Conditions of the Pump as Turbine in Energy Micro-Grids" Processes 13, no. 8: 2541. https://doi.org/10.3390/pr13082541
APA StyleZhang, M., Hu, Q., Wang, Y., Wang, J., Xiong, J., Wei, J., Zhu, H., Wang, W., & Pei, J. (2025). Experimental Study of Vibration Characteristics Under Multiple Operating Conditions of the Pump as Turbine in Energy Micro-Grids. Processes, 13(8), 2541. https://doi.org/10.3390/pr13082541