Dynamic Characteristic Analysis of the Multi-Stage Centrifugal Pump Rotor System with Uncertain Sliding Bearing Structural Parameters
Abstract
:1. Introduction
2. Dynamic Modeling of the Bearing-Rotor System of a Multi-Stage Centrifugal Pump
2.1. Calculation of the Dynamic Characteristic Coefficients of the Sliding Bearing
2.2. The Finite Element Modeling of the Multi-Stage Centrifugal Pump Rotor System
- The centrosymmetric pump shaft is simplified as a circular section beam element, and the parameters such as the element density, elastic modulus and Poisson’s ratio are defined.
- The multiple impellers are equivalent to the centralized mass points by applying the Mass 21 units at their positions. The translational mass and moment of inertia for a Mass 21 unit are set through its six real constants as MASSX, MASSY, MASSZ, IXX, IYY and IZZ.
- The spring-damping element COMBI214 is adopted to simulate the dynamic characteristics of the sliding bearing. The stiffness and damping coefficients identified through the method presented in Section 2.1 are set in the COMBI214 to simulate the support of the rotating pump shaft. The COMBI214 unit has two nodes, and the four stiffness coefficients and four damping coefficients of the sliding bearing are set through K11, K22, K12, K21, C11, C22, C12 and C2. K11 and K22 are the main stiffness values, K12 and K21 are the cross stiffness values, C11 and C22 are the main damping values, and C12 and C21 are the cross damping values.
3. Dynamic Characteristic Analysis of the Multi-Stage Centrifugal Pump Rotor System with Uncertain Sliding Bearing Structural Parameters
3.1. Establishing an Optimization Model Based on the Critical Speed of the Rotor System
3.1.1. The Design Variables
3.1.2. The Optimization Objective
3.2. The Improved PSO Algorithm for Solving the Optimization Model
- The basic parameters for carrying out the optimization are initialized, including the number of particles, the maximum iteration number, the position and velocity vectors for each particle, the learning factors and the extreme values of the inertial weights.
- In each iteration, the critical speeds corresponding to the position vector of each particle are calculated with the co-simulations of the MATLAB and ANSYS software, and then the individual optimal position for each particle and the global optimal position among all the particles can be determined by comparing the critical speeds.
- After each iteration, the position and velocity vectors for each particle are updated by Equation (12), and these updated vectors are utilized to find better individual and globe optimal positions by repeating the step 2.
- The iteration terminates when the convergence condition is met or the iteration number reaches its maximum value. Then, the fitness value corresponding to the global optimal position is the extreme critical speed within the variation ranges of the sliding bearing structural parameters.
3.3. The Monte Carlo Algorithm for the Validation
- Taking the sliding bearing structural parameters Lb, φ, λ and η as the random variables, and M random combinations of the structural parameters are generated to calculate the dynamic characteristic coefficients of the sliding bearing.
- These calculated stiffness and damping coefficients are written into the finite element model of the multi-stage centrifugal pump rotor system to predict the corresponding critical speeds.
- The obtained critical speeds of the multiple samples are compared to determine the maximum and minimum values, which are further compared with those calculated by solving the optimization models with the improved PSO algorithm.
4. Case Study and Results Discussion
4.1. Effects of the Structural Parameters on the Dynamic Characteristics of the Sliding Bearing
4.2. Dynamic Characteristic Analysis of the Multi-Stage Centrifugal Pump Rotor System
4.3. Robust Dynamic Characteristic Analysis of the Rotor System Considering Uncertain Sliding Bearing Structural Parameters
5. Conclusions
- The oil film pressure distribution of the sliding bearing was first solved by combing the finite difference method and the successive over-relaxation method. Then, the small parameter method was used to compute the dynamic characteristic coefficients of the sliding bearing in the virtual environment of the MATLAB. On that basis, effects of the variations of the sliding bearing structural parameters Lb, φ, λ and η on the stiffness and damping coefficients were investigated.
- The beam elements, spring-damping elements and concentrated mass elements were combined to construct the finite element model of the multi-stage centrifugal pump rotor system in the virtual environment of ANSYS. The computed dynamic characteristic coefficients of the sliding bearing were assigned to the spring-damping elements. Moreover, the MATLAB and ANSYS were combined to investigate the effects of the variations of each structural parameter on the first three critical speeds of the rotor system.
- Six optimization models for obtaining the extreme values of the first three critical speeds were established, where the sliding bearing structural parameters Lb, φ, λ and η were taken as the independent variables. These optimization models were solved by the improved PSO algorithm within the variation ranges of the structural parameters, and the maximum and minimum values of each critical speed were obtained. These extreme values were close to those calculated with the 106 random samples generated by the Monte Carlo method. The deviation between the maximum and minimum values of the first-order critical speed is 54.5 rpm, showing the necessity for considering the effects of the manufacturing errors on the dynamic characteristics of the rotor system. Moreover, the actual operational speed is away from the variation range of the first-order critical speed, indicating that the proposed method is promising in selecting robust operational speed of a multi-stage centrifugal pump.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Nomenclature
P | the oil film pressure |
H | the thickness of oil film |
Lb | the length of the sliding bearing |
Rb | the bearing radius |
η | the oil film viscosity coefficient |
φ, z | the circumferential and axial coordinates of the sliding bearing respectively |
vj, vb | the linear velocities of the journal and bearing respectively |
the dimensionless axial coordinate | |
ε | the eccentricity |
ϕ | the dimensionless clearance ratio |
λ | the dimensionless ratio of length to diameter |
, | the displacements of the oil film pressure in x and y directions |
the velocities of the oil film pressure in x and y directions | |
the thickness of the oil film in a static equilibrium condition | |
the pressure of the oil film pressure in a static equilibrium condition | |
kxx, kxy, kyx, kyy | the stiffness coefficients |
cxx, cxy, cyx, cyy | the damping coefficients |
n | the critical speed(rpm) |
Xi, Vi | the position vector and velocity vector of the ith particle |
, | the dth element in the position vector and the velocity vector of the ith particle respectively |
, | the dth element in the individual and global optimal position vector of the ith particle |
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Stiffness Coefficients (×107 N/m) | Damping Coefficients (×105 N·s/m) | ||||||
---|---|---|---|---|---|---|---|
Kxx | Kxy | Kyx | Kyy | Cxx | Cxy | Cyx | Cyy |
1.09 | −2.18 | 2.30 | 1.23 | 7.13 | 3.38 | −3.75 | 8.87 |
Impeller Series | Axial Coordinate(m) | Mass(kg) | Polar Moment of Inertia (kg·m2) | The Moment of Inertia about a Diameter (kg·m2) |
---|---|---|---|---|
1 | 0.37 | 13 | 0.1 | 0.19 |
2 | 0.47 | 12 | 0.09 | 0.18 |
3 | 0.57 | 14 | 0.1 | 0.19 |
4 | 0.97 | 13 | 0.1 | 0.19 |
5 | 1.07 | 12 | 0.09 | 0.18 |
6 | 1.17 | 13 | 0.09 | 0.19 |
Order Number | Start-Point Coordinate (m) | End-Point Coordinate (m) | Outer Diameter (m) |
---|---|---|---|
1 | 0 | 0.25 | 0.016 |
2 | 0.25 | 0.37 | 0.028 |
3 | 0.37 | 1.17 | 0.036 |
4 | 1.17 | 1.29 | 0.028 |
5 | 1.29 | 2.04 | 0.016 |
Different Methods | Critical Speeds(rpm) | ||
---|---|---|---|
The First Order | The Second Order | The Third Order | |
The improved PSO algorithm | [2451.3,2505.7] | [4137.6,4177.3] | [11,527.8,11,541.6] |
The Monte Carlo method | [2449.9,2509.5] | [4132.1,4183.4] | [11,525.1,11,544.8] |
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Lin, L.; He, M.; Ma, W.; Wang, Q.; Zhai, H.; Deng, C. Dynamic Characteristic Analysis of the Multi-Stage Centrifugal Pump Rotor System with Uncertain Sliding Bearing Structural Parameters. Machines 2022, 10, 473. https://doi.org/10.3390/machines10060473
Lin L, He M, Ma W, Wang Q, Zhai H, Deng C. Dynamic Characteristic Analysis of the Multi-Stage Centrifugal Pump Rotor System with Uncertain Sliding Bearing Structural Parameters. Machines. 2022; 10(6):473. https://doi.org/10.3390/machines10060473
Chicago/Turabian StyleLin, Lijun, Mingge He, Wensheng Ma, Qingyuan Wang, Haiyan Zhai, and Congying Deng. 2022. "Dynamic Characteristic Analysis of the Multi-Stage Centrifugal Pump Rotor System with Uncertain Sliding Bearing Structural Parameters" Machines 10, no. 6: 473. https://doi.org/10.3390/machines10060473
APA StyleLin, L., He, M., Ma, W., Wang, Q., Zhai, H., & Deng, C. (2022). Dynamic Characteristic Analysis of the Multi-Stage Centrifugal Pump Rotor System with Uncertain Sliding Bearing Structural Parameters. Machines, 10(6), 473. https://doi.org/10.3390/machines10060473