Characteristics Study of In-Situ Capacitive Sensor for Monitoring Lubrication Oil Debris
<p>Schematic diagram of conventional capacitive sensor structure: (<b>a</b>) Variation in the distance between the plates; (<b>b</b>) Variation of the common surface; and (<b>c</b>) Change in the dielectric element.</p> "> Figure 2
<p>Schematic diagram of the presented capacitive sensor model: (<b>a</b>) Coaxial capacitive sensor model; (<b>b</b>) Integration scheme of the coaxial capacitive sensor and lubricant oil pipeline.</p> "> Figure 3
<p>Setting up a coordinate system in a debris.</p> "> Figure 4
<p>Experimental set-up: (<b>a</b>) experimental flow chart; (<b>b</b>) experimental platform.</p> "> Figure 5
<p>Digital signals output of a 1000 pF capacitor.</p> "> Figure 6
<p>The value of capacitance change with debris quantity in water or oil: (<b>a</b>) water; (<b>b</b>) oil.</p> "> Figure 7
<p>The value of capacitance change with temperature in water or oil: (<b>a</b>) water; (<b>b</b>) oil.</p> "> Figure 8
<p>The value of capacitance change with flow rates in water or oil: (<b>a</b>) water; (<b>b</b>) oil.</p> ">
Abstract
:1. Introduction
2. Sensing Principle and Sensor Model
2.1. Cylinder Capacitive and Their Sensing Principle
2.2. A Mathematical Model
3. Experiment
3.1. Experimental Setup
3.2. Measurement System
4. Results and Discussion
4.1. Relationship between the Capacitance and the Debris Quantity
4.2. Relationship between the Capacitance and the Oil Temperature
4.3. Relationship between the Capacitance and the Flow Rate
5. Compensation Method
6. Conclusions
Acknowledgments
Author Contributions
Conflicts of Interest
Nomenclature
EHM | Engine health monitoring |
Q | Quantity of electric charge |
V0 | Additional voltage |
θ | Angle between A and electric dipole |
r | Distance between A and electric dipole |
p | Particle’s electric dipole moment |
q | Quantity of electric charge induced in the debris |
r0 | Distance between two electric dipole |
r1 | Distance between debris position and origin coordinates |
V | Original voltage at point A |
R | Radius of sensor inner core |
R1 | Radius of sensor outer core |
C | Capacitance of sensor |
C0 | Additional capacitance |
l | Length of sensor |
ε | Dielectric permittivity |
F | Resonance frequency |
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Debris Types | Size in Direction of Long Axis/μm | Form Factor (Length:Thickness) |
---|---|---|
Debris of normal wear | <15 | 10:1 |
<5 | not considered | |
Debris of serious wear | >15 | >5:1 but <30:1 |
Peeling piece | >5 | <5:1 |
Laminar particle | >15 | >30:1 |
Number | Component | Type |
---|---|---|
1 | Cylinder capacitive sensor | φ30 mm × φ25 mm × 150 mm |
2 | Flow sensor | YF-S201C |
3 | Temperature detecting circuit | × |
4 | Capacitance detecting circuit | × |
5 | Transparent tube | × |
6 | Valve | × |
7 | Computer | × |
8 | Temperature sensor probe | DS18B20 |
9 | Pump | CB-B32 |
10 | Three-phase motor | YE2-90L-4 |
11 | Converter | KZ100 |
12 | PVC tube | DN15, DN20 |
13 | Reservoir | × |
Debris Quantity (g) | Capacitance (pF)/Water | Capacitance (pF)/Oil |
---|---|---|
0.00 | 15,412.13 | 7.81 |
0.15 | 17,028.28 | 9.38 |
0.25 | 17,351.50 | 10.41 |
0.40 | 19,791.48 | 10.80 |
Temperature (°C) | Capacitance (pF)/Water | Capacitance (pF)/Oil |
---|---|---|
40.0 | 28,043.91 | 0.15 |
38.0 | 28,793.69 | 0.40 |
36.0 | 30,034.88 | 0.59 |
34.0 | 32,391.91 | 2.23 |
32.0 | 35,733.86 | 3.60 |
Flow Rate (L/min) | Capacitance (pF)/Water | Capacitance (pF)/Oil |
---|---|---|
0.00 | 20,097.82 | 2.51 |
4.21 | 30,934.81 | 3.68 |
5.49 | 36,710.99 | 4.21 |
6.86 | 36,344.96 | 5.47 |
8.23 | 42,695.96 | 7.69 |
9.61 | 45,007.76 | 10.11 |
Group | Flow (L/min) | Temperature (°C) | Debris Quantity (g) | Capacitance (pF) | ΔCv (pF) | ΔCt (pF) | ΔC (pF) | ΔCm (pF) |
---|---|---|---|---|---|---|---|---|
Baseline | 4.21 | 36.0 | 0.00 | 0.59 | 6.43 | 3.01 | 12.77 | 3.33 |
Experiment | 9.61 | 40.0 | 0.40 | 13.36 |
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Han, Z.; Wang, Y.; Qing, X. Characteristics Study of In-Situ Capacitive Sensor for Monitoring Lubrication Oil Debris. Sensors 2017, 17, 2851. https://doi.org/10.3390/s17122851
Han Z, Wang Y, Qing X. Characteristics Study of In-Situ Capacitive Sensor for Monitoring Lubrication Oil Debris. Sensors. 2017; 17(12):2851. https://doi.org/10.3390/s17122851
Chicago/Turabian StyleHan, Zhibin, Yishou Wang, and Xinlin Qing. 2017. "Characteristics Study of In-Situ Capacitive Sensor for Monitoring Lubrication Oil Debris" Sensors 17, no. 12: 2851. https://doi.org/10.3390/s17122851