Identification of Key Risk Hotspots in Mega-Airport Surface Based on Monte Carlo Simulation
Abstract
:1. Introduction
2. Airport Surface Network Topology Modeling and Hybrid Traffic Simulation
2.1. Characterization of the Physical Structure of the Airport Surface and Network Topology Modeling
2.2. Simulation of Airport Surface Traffic Operations Based on Monte Carlo Method
- (1)
- Randomized generation of “traffic individuals” for airport surfaces based on statistical properties
- (2)
- Hybrid simulation of airport surface heterogeneous “traffic flow” based on rule constraints
- ①
- “Tail flow interval” rule: mainly for runway takeoff and landing aircraft. Between approaching aircraft, departing aircraft, and between approaching and departing aircraft, the tail flow interval is maintained according to the front and rear aircraft types. In this paper, the interval is set to 5 min.
- ②
- “Airport surface taxiing interval” rule: mainly for the aircraft that has entered the taxiing process. For between approaching aircraft, between departing aircraft, and between approaching and departing aircraft, the corresponding airport surface taxiing interval is maintained according to the front and rear aircraft types. In this paper, the interval is set to 40 s.
- ③
- “Shortest Path” Rule: mainly for the aircraft before entering the taxiway. For the approaching aircraft arriving at the runway entrance and the randomly generated departing aircraft, the shortest approaching and departing taxi paths are configured for them. The shortest path between two points is calculated using Dijkstra’s algorithm. For support vehicles, the shortest paths are also followed to enter and exit specific areas of the airport surface.
- ④
- The “first-come–first-served” rule: mainly for the following two types of situations. The first one is the case of not meeting the runway wake interval if the time slot assigned to the former aircraft is , and when the wake interval between the former aircraft and the latter aircraft cannot be met, the time slot assigned to the latter aircraft is , as shown in Figure 2. The second is the case of not meeting the crossing interval, if two or more aircraft or support vehicles arriving at a taxiway node do not meet the safety interval, the subsequent aircraft or support vehicles need to bypass the node and re-plan the shortest path to continue to complete the movement process.
3. Multidimensional Feature Classification and Identification of Mixed Traffic Flows on Airport Surfaces
3.1. Topology Characterization Identification
- (1)
- Degree centrality index
- (2)
- Betweenness centrality index
- (3)
- Closeness centrality index
- (4)
- Eigenvector centrality index
3.2. Network Vulnerability Identification
- (1)
- Network efficiency loss index
- (2)
- Maximum subgraph loss index
3.3. Traffic Complexity Identification
- (1)
- Conflict number ratio index
- (2)
- Peak hour flow index
- (3)
- Peak hour duration index
4. Comprehensive Evaluation of Operational Risk of Mixed Traffic Flows on Airport Surfaces
4.1. Assignment of Feature Indicators Based on CRITIC–Entropy Weight Method
4.2. Operational Risk Evaluation Based on TOPSIS–Gray Correlation Analysis
- (1)
- Indicator pre-processing
- (2)
- Calculate the weighting matrix
- (3)
- Calculate the ideal solution
- (4)
- Calculate the comprehensive proximity
5. Case Study
5.1. Simulation Environment Setting
- -
- Generating 500 approaching aircraft, and the approaching time obeys Poisson distribution;
- -
- Setting the aircraft wake interval as 5 min and the airport surface taxi interval as 40 s;
- -
- Setting three approaching aircraft intervals, i.e., 1.5 min, 2 min, and 3 min, respectively;
- -
- Set three runway operation modes, i.e., segregated parallel operation mode, correlated approach/independent departure mode, and independent approach/independent departure mode.
5.2. Identification of Risk Hotspots for Mixed Traffic Flow on Airport Surfaces
- ①
- Under any runway operation mode, the distribution of occupancy frequency corresponding to each node is approximately the same for different arrival strengths, indicating that the arrival strength of traffic flow has no significant effect on the occupancy frequency of nodes, which shows that the results of the simulation experiments are reliable.
- ②
- The occupancy frequencies of the nodes differ in different runway operation modes. The peak occupancy frequencies of nodes in the related/independent parallel approach mode and independent parallel departure mode are significantly higher compared with the isolated parallel operation mode, indicating that there are relatively more conflict-prone nodes in these two operation modes, which is in line with the actual situation.
- ③
- Under different runway operating modes, there is overlap in nodes with higher occupancy frequencies, indicating that certain potential risk hotspot areas are consistent in different operation modes, which verifies the applicability of the simulation experiment.
5.3. Operational Risk Evaluation of Mixed Traffic Flows on Airport Surfaces
- ①
- The conflict number ratios and peak hourly flow rates of the nodes in the correlated approach/separated departure mode are higher relative to the peak of the other two modes of operation, indicating an increase in the number of critical nodes with a higher likelihood of conflict in this mode of operation.
- ②
- Under the isolated parallel operation mode, some nodes have relatively higher values of peak hourly flow and are more likely to have conflicts; under the other two operation modes, the distribution of peak hourly flow at nodes is relatively stable, with no obvious peaks and valleys.
- ③
- Since the traffic complexity index takes into account the overall operation of the airport surface under the mixed operation of aircraft and support vehicles, it can reflect the traffic operation pressure on the airport surface to a certain extent. There are obvious peaks and valleys in the conflict number ratio and peak hourly flow distribution, which indicates that some nodes in the network have higher traffic pressure, and it can provide a decision-making basis for airport surface operation and safety management.
- ①
- In terms of nodes’ topological structure indexes, betweenness centrality and eigenvector centrality have more peaks and valleys characteristics compared to the other two indexes, which indicates that there is a part of nodes in the network with higher importance, which are more affected by other nodes, and also indicates the necessity of analyzing the structural characteristics of the airport surface network.
- ②
- In terms of the network vulnerability index of nodes, the distribution of network efficiency loss degree is relatively chaotic, with more peaks. This indicates that there are some nodes in the network that have a greater impact on the overall operational efficiency of the airport surface, with poorer network robustness, and that we need to pay attention to these types of nodes in the actual operation of the airport surface.
- ①
- Blue nodes (numbered 1–10, 89–96, 155–178) are runway and parking nodes. Since such nodes are bound to be occupied by aircraft or supporting vehicles, their risk index values obtained after comprehensive evaluation are higher. Since the determination of risk hotspots mainly focuses on taxiway nodes, such nodes are excluded.
- ②
- Red nodes are risk hotspots. The 25 nodes with higher risk indexes are classified as risk hotspots, and the specific distribution is shown in Figure 22. Among them, the three nodes numbered 124, 135, and 143 are taxiway and service lane intersections, which indicate a higher risk of conflict between aircraft and support vehicles; node 194 is a service lane node, which indicates a higher risk of conflict between support vehicles; nodes numbered 20, 23, 27, 40, 43, 58–59, 61–65, 69–70, 72, 78, 98, 106, 108–109, and 111 are 21 nodes are taxiway nodes, indicating a high risk of taxiing conflicts between aircraft.
- ③
- The gray nodes are general nodes. They account for the majority of the airport surface network structure and their risk index is relatively low.
6. Conclusions
- (1)
- Aiming at the problem that the current research mainly focuses on aircraft micro-collision conflicts, but less on aircraft–vehicle cooperative operation conflicts, the Monte Carlo simulation method was used to construct the cooperative operation environment of “aircraft–vehicle” mixed traffic flows on the airport surface, comprehensively considering the operational resources such as runways, taxiways, parking spaces, and the activity targets of aircraft and support vehicles, which realized the operation simulation of the mixed traffic flows formed by aircraft and vehicles on the airport surface. The proposed method has high simulation accuracy, and 73% of the identified risk hotspots on the airport surface are consistent with the actual risk hotspots, which can provide the basic environment for accurately analyzing the risk of conflict between aircraft, between aircraft and support vehicles, and between support vehicles and support vehicles in the airport surface system.
- (2)
- Aiming at the current research on the number of conflicts, conflict duration, conflict probability, and other indicators of the airport surface operation, but less consideration of the complex network characteristics inherent in the airport surface skidding system and its impact on the potential conflicts of the traffic operation, facing the multi-dimensional perspectives of the topology structure characteristics, network vulnerability, and traffic complexity, systematically and comprehensively constructed the risk hotspot characteristic index system and its measurement of mixed traffic flows on airport surface, and adopted the combination weighting method and the improved TOPSIS method to comprehensively evaluate the risk index of any node in the topological network of airport surface. The result shows that 93% of the identified risk hotspots are consistent with the actual hotspot areas, which improves the accuracy rate of directly identifying the risk hotspots by 20% compared with that of the simulation experiments. Therefore, the proposed method can provide a decision-making basis for accurately identifying the risk hotspots of airport surface operation, reducing the potential conflicts of airport surface operation, and improving the safety level of airport surface operation.
- (3)
- The research results of this paper have certain guiding significance for enhancing the cooperative operational safety capability of heterogeneous activity targets in complex airport surface, and future research work will further focus on the temporal and spatial evolution characteristics of the operational risk hotspots in airport surface, as well as the mechanism of the role of the evolution of the conflict risk on the effectiveness of the operational management of airport surface.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
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Node Mode | 1 | 2 | 3 | 4 | 5 | … | 225 | 226 | 227 | 228 | 229 | |
---|---|---|---|---|---|---|---|---|---|---|---|---|
Segregated Parallel Operation | 0 | 0 | 0 | 0.027 | 0.023 | … | 0 | 0 | 0 | 0 | 0 | |
0 | 0 | 1 | 3 | 3 | … | 0 | 0 | 2 | 0 | 0 | ||
0 | 0 | 13 | 16 | 43 | … | 0 | 0 | 5 | 0 | 0 | ||
Related Approaches/Independent Departures | 0 | 0 | 0.008 | 0.005 | 0.004 | … | 0 | 0 | 0.007 | 0 | 0 | |
3 | 3 | 1 | 2 | 1 | … | 0 | 0 | 4 | 0 | 0 | ||
38 | 38 | 52 | 65 | 156 | … | 0 | 0 | 4 | 0 | 0 | ||
Independent Approach/Independent Departing | 0 | 0 | 0 | 0 | 0.852 | … | 0 | 0 | 0 | 0 | 0 | |
3 | 3 | 3 | 2 | 3 | … | 0 | 0 | 2 | 0 | 0 | ||
33 | 33 | 47 | 62 | 99 | … | 0 | 0 | 7 | 0 | 0 |
Node | ||||||
---|---|---|---|---|---|---|
1 | 0.0088 | 0.0041 | 0.1062 | 0.0062 | 0.0071 | 0.0044 |
2 | 0.0132 | 0.0310 | 0.1186 | 0.0154 | 0.0118 | 0.0044 |
3 | 0.0175 | 0.0842 | 0.1311 | 0.0358 | 0.0188 | 0.0044 |
4 | 0.0175 | 0.1103 | 0.1391 | 0.0534 | 0.0220 | 0.0044 |
5 | 0.0175 | 0.1377 | 0.1455 | 0.0719 | 0.0253 | 0.0044 |
… | … | … | … | … | … | … |
225 | 0.0088 | 0.0014 | 0.1031 | 0.0038 | 0.0075 | 0.0044 |
226 | 0.0088 | 0.0040 | 0.1059 | 0.0069 | 0.0081 | 0.0044 |
227 | 0.0132 | 0.0202 | 0.1197 | 0.0183 | 0.0115 | 0.0044 |
228 | 0.0088 | 0.0055 | 0.1179 | 0.0126 | 0.0091 | 0.0044 |
229 | 0.0088 | 0.0028 | 0.1135 | 0.0098 | 0.0083 | 0.0044 |
Index | Amplitude of Change in Risk Index/% | |||
---|---|---|---|---|
Decrease by 10% | Decrease by 20% | Increase by 10% | Increase by 20% | |
0 | 0 | 0 | 0 | |
0 | 0 | 0 | 0 | |
0 | 0 | 0 | 0 | |
0 | −0.02 | 0 | 0.02 | |
0 | 0 | 0 | 0 | |
0 | 0 | 0 | 0 | |
−0.12 | −0.23 | 0.12 | 0.23 | |
−0.17 | −0.33 | 0.17 | 0.33 | |
−9.70 | −19.41 | 9.70 | 19.41 |
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Tian, W.; Zhou, X.; Yin, J.; Li, Y.; Zhang, Y. Identification of Key Risk Hotspots in Mega-Airport Surface Based on Monte Carlo Simulation. Aerospace 2024, 11, 254. https://doi.org/10.3390/aerospace11040254
Tian W, Zhou X, Yin J, Li Y, Zhang Y. Identification of Key Risk Hotspots in Mega-Airport Surface Based on Monte Carlo Simulation. Aerospace. 2024; 11(4):254. https://doi.org/10.3390/aerospace11040254
Chicago/Turabian StyleTian, Wen, Xuefang Zhou, Jianan Yin, Yuchen Li, and Yining Zhang. 2024. "Identification of Key Risk Hotspots in Mega-Airport Surface Based on Monte Carlo Simulation" Aerospace 11, no. 4: 254. https://doi.org/10.3390/aerospace11040254
APA StyleTian, W., Zhou, X., Yin, J., Li, Y., & Zhang, Y. (2024). Identification of Key Risk Hotspots in Mega-Airport Surface Based on Monte Carlo Simulation. Aerospace, 11(4), 254. https://doi.org/10.3390/aerospace11040254