Performance Evaluation of Multiflight Ground Handling Process
Abstract
:1. Introduction
2. Materials and Methods
2.1. Frame of FGHP
- Certain synchronization and short-term continuity exist in the three operations of on/off block, bridge docking/withdrawal and opening/closing cabin (cargo) door. Thus, they are regarded as one node.
- The coupling effect is not considered, and the propagation effect of the guarantee resource allocation and scheduling is ignored generally because the initial moment of each ground handling node is greatly affected by external factors and cannot directly reflect the evolution of the entire process.
- The adjustment and correction of the FGHP of the dynamic queue sequencing of the ATC tower flight arrival/departure are not considered.
2.2. Time Prediction of FGHP Node
Algorithm 1: Time prediction of FGHP nodes | |
Input: Historical sample space , total number of samples , attribute set of pending FGHP node time prediction | |
Output: FGHP node time prediction | |
1 | Initialize the sample space and the number of samples for the predicting FGHP; |
2 | , ; |
3 | While do |
4 | ; /*assign the attribute of sample in to */ |
5 | if |
6 | ;/*select same attributes samples */ |
7 | ; |
8 | end if |
9 | return ; |
10 | end while /*generate the probabilistic inference sample space*/ |
11 | for /*loop for each node*/ |
12 | for |
13 | /*extract sample set of each node*/ |
14 | /*updating node probability model*/ |
15 | end for |
16 | Probabilistic reasoning based on Bayesian network of FGHP; |
17 | /*maximize the conditional probability node of FGHP as predicted result*/ |
18 | |
19 | end for |
20 | return |
3. Dynamic Performance Evaluation Methods
3.1. Structure of Performance Evaluation System for Multi-FGHP
- Flight landings must be taxied to the designated stands strictly in accordance with the assigned path.
- The handover time or waiting time of the same piece of equipment in the same ground handling node is not considered in the performance evaluation method of multi-FGHP.
- Airport ground handling resource allocation, routing and scheduling are idealized.
3.2. Performance Evaluation of Single FGHP
3.3. Multi-FGHP Performance Evaluation Methods
4. Experimental Results
4.1. Dataset and Settings
- Fields with many vacancies and illogical and duplicate datasets are deleted, and datasets with one or two missing fields are complemented according to the time expectations of FGHP nodes.
- Inbound, ground and outbound handling datasets are linked and merged, and shared flight datasets are integrated according to the assigned airline.
4.2. Results
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Parameters | A320 Series | B737 Series |
---|---|---|
0.1952 | 0.1876 | |
0.0056 | 0.0059 | |
23.9430 | 25.7765 | |
25.9954 | 27.3665 |
Attributes | |
---|---|
flight number | MU2836 |
date | 1 June 2019 |
aircraft type | A320 |
nature of airline | domestic short-haul routes |
boarding | 244 |
sorting of inbound | 6 |
sorting of departure | 5 |
Node | Actual Time | Converted Result (min) |
---|---|---|
11:28 | 0.00 | |
11:37 | 9.00 | |
11:44 | 16.00 | |
11:56 | 28.00 | |
11:58 | 30.00 | |
11:45 | 17.00 | |
11:52 | 24.00 | |
12:03 | 35.00 | |
11:58 | 30.00 | |
11:51 | 23.00 | |
12:14 | 46.00 | |
12:20 | 50.00 |
Attributes | |||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|
A1 | 7.62 | 21.36 | 31.48 | 41.25 | 35.54 | 79.93 | 88.82 | 90.13 | 47.80 | 103.72 | 105.02 |
A2 | 6.03 | 13.38 | 22.67 | 26.01 | 15.57 | 26.34 | 30.35 | 31.39 | 25.35 | 50.10 | 54.54 |
A3 | 5.31 | 14.17 | 24.20 | 26.81 | 18.33 | 31.40 | 35.26 | 36.62 | 26.09 | 50.84 | 56.07 |
A4 | 6.92 | 16.79 | 31.63 | 38.26 | 39.13 | 80.71 | 84.67 | 87.21 | 43.21 | 102.17 | 109.67 |
A5 | 6.36 | 14.84 | 25.79 | 27.46 | 30.69 | 28.64 | 43.71 | 47.97 | 26.14 | 66.16 | 70.56 |
A6 | 6.08 | 14.86 | 25.50 | 27.71 | 21.78 | 30.25 | 36.91 | 38.51 | 26.50 | 55.94 | 61.00 |
A7 | 8.87 | 17.10 | 46.65 | 52.78 | 49.73 | 91.13 | 91.57 | 93.31 | 54.08 | 110.14 | 120.39 |
A8 | 5.78 | 32.99 | 38.42 | 38.47 | 40.97 | 45.09 | 53.14 | 59.11 | 36.11 | 73.46 | 77.79 |
A9 | 8.93 | 32.33 | 45.33 | 63.67 | 50.33 | 50.86 | 77.33 | 77.03 | 41.33 | 96.37 | 103.33 |
A10 | 7.82 | 24.85 | 51.83 | 45.19 | 56.70 | 90.97 | 101.26 | 103.61 | 64.56 | 123.47 | 127.99 |
A11 | 8.67 | 16.54 | 27.83 | 33.67 | 74.33 | 43.29 | 88.33 | 91.33 | 30.36 | 110.88 | 120.83 |
A12 | 6.79 | 15.43 | 32.07 | 32.64 | 27.93 | 55.21 | 50.36 | 56.36 | 64.86 | 76.93 | 88.57 |
Evolution of FGHP | Occurred | Occurred | Occurred | Occurred | Occurred | Occurred |
---|---|---|---|---|---|---|
of MU2836 | 0.7472 | 0.7187 | 0.7347 | 0.7132 | 0.6844 | 0.6979 |
Flight | 3U8953 | HU7335 | MU2836 | MU2124 | FM9327 |
---|---|---|---|---|---|
for multi-FGHP | 0.6954 | 0.7582 | 0.6979 | 0.7235 | 0.5146 |
Singularity | Delayed/Total | Average Punctuality | |
---|---|---|---|
3 | 0.4738 | 1/5 | 0.8933 |
6 | 0.4256 | 1/7 | 0.8476 |
7 | 0.4766 | 1/6 | 0.8861 |
16 | 0.3721 | 2/6 | 0.8111 |
17 | 0.4801 | 1/4 | 0.8913 |
21 | 0.4998 | 0/6 | 1 |
22 | 0.4110 | 1/8 | 0.8833 |
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Li, B.; Wang, L.; Xing, Z.; Luo, Q. Performance Evaluation of Multiflight Ground Handling Process. Aerospace 2022, 9, 273. https://doi.org/10.3390/aerospace9050273
Li B, Wang L, Xing Z, Luo Q. Performance Evaluation of Multiflight Ground Handling Process. Aerospace. 2022; 9(5):273. https://doi.org/10.3390/aerospace9050273
Chicago/Turabian StyleLi, Biao, Liwen Wang, Zhiwei Xing, and Qian Luo. 2022. "Performance Evaluation of Multiflight Ground Handling Process" Aerospace 9, no. 5: 273. https://doi.org/10.3390/aerospace9050273
APA StyleLi, B., Wang, L., Xing, Z., & Luo, Q. (2022). Performance Evaluation of Multiflight Ground Handling Process. Aerospace, 9(5), 273. https://doi.org/10.3390/aerospace9050273