Research on Optimization Method of Evaporation Duct Prediction Model
Abstract
:1. Introduction
2. Related Theories and Models
2.1. Monin Obukhov’s Similarity Theory
2.2. Sea Surface Roughness
- The COARE3.0 sea surface roughness parameterization scheme serves is the foundational parameterization scheme for the COARE model and can be represented as [11]
- The TY01 sea surface roughness parameterization scheme is a dimensionless roughness parameterization scheme based on a wave slope, in which the sea surface roughness is closely related to wave height [28]:
- The Oost sea surface roughness parameterization scheme considers both wave age and friction velocity, and its roughness can be expressed as a function of wave age and friction velocity [29]:
- The COARE 3.5 sea surface roughness parameterization scheme is based on the COARE 3.0 sea surface roughness parameterization scheme which modifies the wind speed dependence of the Charnock parameter; it extends the limited range of the parameterization scheme wind speed to 0~20 m/s [12]:
- The Edson sea surface roughness parameterization scheme subdivides the water depth [30]:In deep sea,In shallow sea,
- The Porchetta sea surface roughness parameterization scheme finds that the roughness length is related to the angle between the wind direction and the wave direction; the functional form is [31]
2.3. Universal Stability Function
- BH91 is a summary of the work of Beljaars and Holtslag [13] on surface flux observations and modelling of the MESOGERS-84 experiment in Cabauwin, the Netherlands and the south of France, which offers a new functional form under stable conditions:
- CB05 was studied on the performance of the Monin–Obukhov similarity theory under the stable condition by Cheng and Brutsaert [14], during the Cooperative Atmosphere-Surface Exchange Study-99 (CASES-99) and the following expression was obtained:
- G07 is a dataset collected by Grachev [15] during the SHEBA for a wide range under the stable conditions. It includes strongly stable conditions. New and functions are derived from this dataset, covering the full range of :
- The BYC model improves the validity of the Monin–Obukhov similarity theory under the low wind speed conditions. The function is [3]
- The COARE 3.0 model, COARE 3.5 model and MM5REV model functions are
- The BYC function is [3]
2.4. Evaporation Duct Prediction Model
3. Evaporation Duct Prediction Model Based on Optimization Algorithm
3.1. The Optimization Algorithm
3.2. Particle Swarm Optimization Algorithm
3.3. Simulated Annealing Algorithm
3.4. Optimization Algorithm for Evaporation Duct Prediction Model
4. Experiment
4.1. Shipboard Data Acquisition Experiment
4.2. Shipboard Data
4.3. Evaporation Duct Prediction Model Selection
4.4. Parameters to Be Optimized
4.5. Optimization Results
5. Summary
6. Discussion
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Sensor | Model | Specification | Location | Quantity |
---|---|---|---|---|
Humidity and Temperature sensor | Vaisala HMP155 | RH: ±1% (15–25 °C, 0–90%RH); ±1.7% (20–40 °C, 90–100%RH) | Mast 3rd level | |
Mast 1st level | ||||
Compass deck | 5 | |||
AT: ±(0.055–0.0057 × AT °C) | Accommodation deck | |||
Forecastle deck | ||||
Barometer | Young 61302L | ±0.2 hPa (25 °C, ±0.3 hPa (–40–60 °C) | Compass deck | 1 |
Weather station | AIRMAR 150WXS | 5% (10 m/s) | Compass deck | 2 |
Infrared thermometers | Optris CTLT20 | ±1 °C | Compass deck | 5 |
Parameter to Optimize | Numeric Range | Parameter to Optimize | Numeric Range |
---|---|---|---|
a in | [800–1500] | b in | [4–5] |
c in | [3.5–7.5] | d in | [0.3–1] |
in | [1–10] | in | [0.1–0.5] |
in | [1–10] | in | [3–10] |
in and | [1–30] | in and | [0.1–0.5] |
Function | Improvement for Stable Conditions | Improvement for Unstable Conditions | ||
---|---|---|---|---|
PSO | SA | PSO | SA | |
only | 0.51% | 0.51% | 0.70% | 0.70% |
only | 0.69% | 0.69% | 0.65% | 0.65% |
only | 2.46% | 2.46% | 2.81% | 2.81% |
only | 2.66% | 2.66% | 9.74% | 9.74% |
3.00% | 2.97% | 2.97% | 2.96% | |
3.11% | 3.09% | 9.84% | 9.84% | |
5.09% | 4.75% | 9.97% | 9.89% |
Function | Improvement for Stable Conditions | Improvement for Unstable Conditions | ||
---|---|---|---|---|
PSO | SA | PSO | SA | |
only | 0.95% | 0.95% | 0.74% | 0.74% |
only | 2.24% | 2.24% | 0.47% | 0.47% |
only | 2.46% | 2.46% | 4.27% | 4.27% |
only | 0.38% | 0.38% | 11.18% | 11.20% |
3.58% | 3.53% | 4.04% | 4.28% | |
2.20% | 1.43% | 11.15% | 11.15% | |
13.40% | 14.11% | 11.37% | 11.08% |
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Cui, Y.; Hu, T.; Qi, K.; Qiu, Z.; Zou, J.; Li, Z.; Wang, B. Research on Optimization Method of Evaporation Duct Prediction Model. Mathematics 2024, 12, 205. https://doi.org/10.3390/math12020205
Cui Y, Hu T, Qi K, Qiu Z, Zou J, Li Z, Wang B. Research on Optimization Method of Evaporation Duct Prediction Model. Mathematics. 2024; 12(2):205. https://doi.org/10.3390/math12020205
Chicago/Turabian StyleCui, Yingxue, Tong Hu, Ke Qi, Zhijin Qiu, Jing Zou, Zhiqian Li, and Bo Wang. 2024. "Research on Optimization Method of Evaporation Duct Prediction Model" Mathematics 12, no. 2: 205. https://doi.org/10.3390/math12020205
APA StyleCui, Y., Hu, T., Qi, K., Qiu, Z., Zou, J., Li, Z., & Wang, B. (2024). Research on Optimization Method of Evaporation Duct Prediction Model. Mathematics, 12(2), 205. https://doi.org/10.3390/math12020205