Quasi-Active Thermal Imaging of Large Floating Covers Using Ambient Solar Energy
Abstract
:1. Introduction
- Scumbergs block the pathway of biogas and produce “whaleback” regions on the surface of the cover, affecting the movement and collection of biogases by the covers. Whaleback regions will generate regional strain and stress on the HDPE geomembrane material.
- The existence of scumbergs causes a vertical displacement of the membrane surface. When the wind blows over the cover, the cover will then be exposed to an increased lateral drag force, which can affect the structural integrity of the cover.
- If the scum has developed a hard crust, this may scratch the under-surface of the cover, if the scum moves horizontally and has not yet attached itself to the cover, and potentially result in the development of highly localized non-through cracks which have the potential to become a through-crack.
- Scumbergs can deform the covers in a vertical direction and have an impact on its structural integrity which might then be made even worse when the accumulated scum move under the cover, as any horizontal movement will also exert lateral drag on the covers if the scum has attached itself to the underside of the cover material.
2. Quasi-Active Thermographic Method
2.1. Preliminary Concept of Quasi-Active Thermography
2.2. Newton’s Law of Cooling for Quasi-Active Thermography
3. Proof of Concept (Quasi-Active Thermography)
3.1. Experiment Setup
3.2. Cooling Constant Estimation Using Newton’s Law of Cooling
- (1)
- (2)
- the HDPE cover can absorb the heat radiated by the block of soil and air, and a portion of the absorbed heat can be re-emitted back to the soil and the air. The cover material acts like a reflective layer which partially reflects the heat back to the soil and air (absorb from soil and air and re-emitted back to soil and air). The thermal wave reflection coefficient [18] of air interface and soil interface is different, leading to efficiency of heat exchange different between the air/geomembrane medium and the soil/geomembrane medium.
3.3. Experiments to Verify the Consistency of the Quasi-Active Thermography Measurements
4. Quasi-Active Thermography Monitoring of Accumulation of Soil Buildup under the HDPE Membrane
5. Conclusions
- Solar radiation can be employed as the external heat source in thermography since the solar energy is economical and is uniformly applied over a large surface area. By monitoring the solar intensity via pyranometer, full transient cooling events can be determined starting when the solar intensity begins to decrease and ending at the time when solar intensity increases from zero.
- Single frame of thermal imaging can be used to show the thermal contrast at some particular time, however, it is influenced by other factors which include condition of the monitoring surface, angle of view of the camera and presence of wrinkles. By monitoring the entire cooling history of the cover, a map of cooling constant can be constructed which enhances the identification and definition of the objects attached underneath the HDPE covers. The results show that the map of cooling constants is more reliable than only relying on the thermal contrast based on a single frame of the thermal image.
- The cooling constants in different transient cooling events can be varied day to day, due to the weather conditions, ambient temperature, wind strength, cloud conditions and solar intensity. This is causing the temperature changes and lengths of cooling events of each day to be different. A multiple-day experiment was conducted to compare results in different days, and the result showed that the cooling constant (rate of cooling) is noted to be significantly different between the no-soil region and soil region in the map of cooling constants. The measurement consistency was verified by normalizing the cooling constant in two transient events. The results have evidence that the proposed monitoring technique is repeatable and reliable.
- The proposed quasi-active thermography inspection is also further examined to monitor the growth of the under-surface objects. The outcomes have demonstrated its potential for field trial to inspect the accumulation of scum at the anaerobic lagoon at the WTP and evaluate the extent and location of scum.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Region | Highest Temperature(°C) | Lowest Temperature(°C) | Fitted Cooling Constant, k | R-Squared | RMSE |
---|---|---|---|---|---|
No-soil region | 26.1 | 4.3 | 0.00925 | 0.9748 | 0.8675 |
Soil region | 22.5 | 4.3 | 0.00484 | 0.9973 | 0.2608 |
Region | Transient Events Start Points | Transient Events End Points | Initial Geomembrane Temperatures (°C) | Final Geomembrane Temperatures (°C) | |
---|---|---|---|---|---|
No-soil region | Day 1 | 16:32:15 | 07:07:55 | 17.84 | 0.31 |
Day 2 | 16:14:35 | 06:30:17 | 19.29 | 3.57 | |
Soil region | Day 1 | 16:32:15 | 07:07:55 | 13.72 | 1.60 |
Day 2 | 16:14:15 | 06:30:17 | 16.41 | 2.81 |
Day | Region | Fitted Cooling Constants | R-Squared | RMSE |
---|---|---|---|---|
1 | No-Soil region | 0.01813 | 0.9004 | 0.9871 |
1 | Soil region | 0.00763 | 0.9888 | 0.3534 |
2 | No-soil region | 0.02163 | 0.8851 | 0.8283 |
2 | Soil region | 0.01081 | 0.9104 | 0.7507 |
Day | No-Soil Region | Soil Region |
---|---|---|
1 | 0.01813 | 0.00763 |
2 | 0.02163 | 0.01081 |
Threshold | Geomembrane Condition (%) | |||||
---|---|---|---|---|---|---|
Soil Region | No-Soil Region | |||||
Day 1 | Day 2 | Difference | Day 1 | Day 2 | Difference | |
0–0.75 | 27.13 | 29.09 | 1.96 | 72.87 | 70.91 | 1.96 |
0–0.7 | 24.03 | 25.14 | 1.11 | 75.97 | 74.86 | 1.11 |
0–0.65 | 20.97 | 20.71 | 0.26 | 79.03 | 79.29 | 0.26 |
0–0.6 | 17.17 | 11.99 | 5.18 | 82.83 | 88.01 | 5.18 |
0–0.55 | 11.21 | 5.00 | 6.21 | 88.79 | 95.00 | 6.21 |
Mean | 20.10 | 18.39 | 2.94 | 79.90 | 81.61 | 2.94 |
Standard deviation | 5.54 | 8.78 | 2.33 | 5.54 | 8.78 | 2.33 |
Transient Events Start Points | Transient Events end Points | Initial Geomembrane Temperatures (°C) | Final Geomembrane Temperatures (°C) | |
---|---|---|---|---|
Day 1 | 13:31:05 | 6:48:00 | 17.84 | 9.07 |
Day 2 | 11:59:33 | 6:30:17 | 19.29 | 2.97 |
Day 3 | 15:43:00 | 6:14:24 | 13.72 | 7.23 |
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Ma, Y.; Wong, L.; Vien, B.S.; Kuen, T.; Kodikara, J.; Chiu, W.K. Quasi-Active Thermal Imaging of Large Floating Covers Using Ambient Solar Energy. Remote Sens. 2020, 12, 3455. https://doi.org/10.3390/rs12203455
Ma Y, Wong L, Vien BS, Kuen T, Kodikara J, Chiu WK. Quasi-Active Thermal Imaging of Large Floating Covers Using Ambient Solar Energy. Remote Sensing. 2020; 12(20):3455. https://doi.org/10.3390/rs12203455
Chicago/Turabian StyleMa, Yue, Leslie Wong, Benjamin Steven Vien, Thomas Kuen, Jayantha Kodikara, and Wing Kong Chiu. 2020. "Quasi-Active Thermal Imaging of Large Floating Covers Using Ambient Solar Energy" Remote Sensing 12, no. 20: 3455. https://doi.org/10.3390/rs12203455
APA StyleMa, Y., Wong, L., Vien, B. S., Kuen, T., Kodikara, J., & Chiu, W. K. (2020). Quasi-Active Thermal Imaging of Large Floating Covers Using Ambient Solar Energy. Remote Sensing, 12(20), 3455. https://doi.org/10.3390/rs12203455