Optimization model for trunk-regional-general hierarchical air transportation network with stratified demand
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摘要: 以干支通多层航空运输网络为研究对象,进行符合其运行的建模,以构建分层需求多层级枢纽选址模型并求解为目标;通过需求层区分不同类别的需求,以包括运输成本、枢纽建设固定成本、航线连接固定成本在内的总成本最小为目标,构建了允许非枢纽直接连接和普通枢纽直接连接的r分配多层级枢纽选址模型;根据航空网络的拓扑结构特点,结合变邻域搜索(VNS)算法和遗传算法(GA)的优势,设计了基于交替机制的VNS-GA混合启发式算法,通过变邻域搜索优化枢纽选择和需求点分配,利用遗传算法优化直接连接关系;针对CAB、AP两个经典数据集和中国长三角区域机场数据进行建模求解,对比现有模型和分层需求模型,验证了算法有效性,并分析了参数灵敏度。研究结果表明:在15个点的小规模案例中,分层需求模型降低了9.23%的总成本;在25个点的小规模案例中,交替式VNS-GA算法在多种参数配置下与最优解差距均不超过2.56%,且平均求解时间仅为商业求解软件的10.78%;在100个点的中大规模案例中,灵敏度分析表明,分层权重系数的设置对优化结果影响最大,r分配策略能够降低总成本但存在明显的边际效益递减;在长三角区域半实例试验中,模型能够在增加50条直连航线的同时实现成本降低2.75%,验证了模型在干支通多层航空运输网络优化的可行性和效果。
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关键词:
- 航空运输 /
- 干支通多层航空运输网络 /
- 分层需求 /
- 多层级枢纽选址模型 /
- 交替式VNS-GA混合启发式算法 /
- 基于成本的网络优化 /
- 多规模试验 /
- 长三角区域
Abstract: The trunk-regional-general hierarchical air transportation network was taken as the research object, and modeling consistent with its operational characteristics was conducted to construct and solve a hierarchical hub location model with stratified demand. The demand layer was employed to distinguish various demands. To minimize the total cost, including transportation costs, hub construction fixed costs, and fixed costs for establishing flight connections, an r-allocation hierarchical hub location model permitting non-hub direct connections and regular hub direct connections was built. According to the topological characteristics of air transportation networks, a VNS-GA hybrid heuristic algorithm based on an alternating mechanism was designed by combining the advantages of the VNS algorithm and the genetic algorithm (GA). Hub selection and demand node allocation were optimized by VNS, while direct connections were optimized by GA. The modeling and solution were carried out for the two classical datasets, namely, Civil Aeronautics Board (CAB) and Australia Post (AP), as well as the Yangtze River Delta regional airport data in China. The existing model and the stratified demand model were compared to verify the effectiveness of the algorithm and analyze the parameter sensitivity. According to the research results, in the small-scale case of 15 nodes, the stratified demand model reduces the total cost by 9.23%. In the small-scale case of 25 nodes, the alternating VNS-GA algorithm has a gap with the optimum solution of no more than 2.56% under various parameter configurations, with the average solution time only 10.78% of that of the commercial solver. In the medium and large-scale case of 100 nodes, sensitivity analysis shows that the setting of stratified weight coefficients has a great impact on the optimization results. The r-allocation strategy can reduce the total cost but with obvious diminishing marginal benefits. In the semi-empirical experiment of the Yangtze River Delta region, the model can reduce the cost by 2.75% while adding 50 direct connections. This verifies the feasibility and effectiveness of the model in optimizing trunk-regional-general hierarchical air transportation networks. -
表 1 算法超参数
Table 1. Algorithm hyperparameters
组件 参数 默认值 区间 说明 数据构建 随机种子 42 固定 用于分层需求对的矩阵生成 外层算法 交替次数 5 [5, 10] 算法外层停止准则 外层算法 最大时间/s 500 [500, 1 000] 算法外层停止准则 VNS 最大代数 50 [30, 200] 最大迭代次数 VNS 邻域族 N1~N6 固定 分别对应非枢纽重分配、枢纽互换等 GA 种群规模 50 [50, 120] 迭代效率与解质量平衡 GA 最大代数 10 [10, 50] 收敛控制 GA 交叉率 1.0 [0.7, 1.0] 常规设定 GA 变异率 0.1 [0.05, 0.20] 常规设定 表 2 不同模型的总成本对比
Table 2. Comparison of total cost performances across optimization models
模型 {λ1, λ2, λ3} 总成本 分层需求模型 {0.6, 0.3, 0.1} 2 110 179 029.67 单独考虑经济舱 {0.6, 0.0, 0.0} 1 568 129 660.54 单独考虑商务舱 {0.0, 0.3, 0.0} 536 224 445.89 单独考虑头等舱 {0.0, 0.0, 0.1} 233 098 455.07 表 3 算法性能对比
Table 3. Comparison of algorithm performances
n n1 n2 r 平均时间/s 平均差值百分比/% Gurobi VNS-GA GA VNS Gurobi VNS-GA GA VNS 15 5 1 1 4.80 5.63 7.48 8.02 0 0.19 1.75 2.93 5 2 1 7.40 5.59 8.20 7.88 0 0.28 1.75 0.77 5 2 2 6.73 6.32 8.52 7.62 0 0.23 2.40 0.72 7 3 1 3.43 5.88 9.91 8.81 0 0.22 0.29 0.65 7 3 2 4.73 6.05 8.20 8.64 0 0.62 1.28 0.70 7 3 3 5.40 12.96 8.23 8.99 0 0.40 2.50 1.06 20 5 1 1 20.99 24.55 13.65 21.84 0 3.62 0.65 4.99 5 2 1 15.23 20.91 19.31 26.78 0 2.41 7.00 6.43 5 2 2 16.53 16.91 14.11 23.68 0 1.49 7.25 5.48 7 3 1 10.52 18.94 13.74 33.27 0 1.37 3.90 3.37 7 3 2 10.54 17.97 14.43 33.32 0 1.47 5.20 3.86 7 3 3 11.28 16.89 14.31 33.60 0 1.80 4.40 3.87 25 5 1 1 311.60 34.00 47.03 94.06 0 2.30 3.26 4.21 5 2 1 337.99 34.51 44.10 102.77 0 2.69 2.82 2.50 5 2 2 254.58 37.40 56.58 100.02 0 2.45 3.58 7.12 7 3 1 361.51 35.09 80.11 116.86 0 1.13 1.41 4.77 7 3 2 407.77 38.64 85.56 97.88 0 0.50 0.82 3.29 7 3 3 395.99 43.47 61.53 101.06 0 0.55 1.18 2.48 表 4 参数灵敏度分析结果
Table 4. Sensitive analysis result of parameters
参数 标定依据 默认值 灵敏度分析取值 目标值 运输成本 固定成本 中心枢纽编号 普通枢纽编号 默认配置 1 255 829.93 1 206 173.53 49 656.41 19, 42 20, 35, 59 α1 票价比例运输效率 0.6 0.5 1 233 068.23 1 183 082.22 49 986.01 19, 42 20, 35, 66 0.7 1 267 246.60 1 222 046.80 45 199.79 35, 42 27, 39, 59 α2 0.8 0.7 1 213 952.24 1 169 280.04 44 672.20 35, 42 27, 39, 66 0.9 1 289 006.41 1 260 029.34 28 977.06 19, 42 20, 35, 66 β1 参考文献开辟成本 3.0 2.0 1 259 874.22 1 208 388.08 51 486.14 19, 42 20, 35, 59 4.0 1 253 317.44 1 200 960.75 52 356.68 19, 42 20, 35, 59 β2 2.0 1.0 1 248 200.52 1 199 614.24 48 586.28 19, 42 20, 35, 66 1.5 1 254 287.29 1 205 987.97 48 299.32 19, 42 20, 35, 59 δ 中心枢纽规模差异 5.0 2.5 1 246 269.92 1 203 373.07 42 896.85 19, 42 20, 35, 59 10.0 1 264 591.94 1 199 781.43 64 810.51 19, 42 20, 35, 66 F0 量纲对齐 1 000 2 000 1 267 569.29 1 200 780.75 66 788.54 19, 42 20, 35, 59 3 000 1 283 456.31 1 201 111.35 82 344.96 19, 42 20, 35, 59 G0 0.1 0.2 1 271 627.96 1 230 470.24 41 157.72 19, 42 20, 35, 59 0.3 1 281 242.28 1 229 485.53 51 756.75 27, 42 35, 39, 66 λs 分层假设 {0.6, 0.3, 0.1} {0.34, 0.33, 0.33} 1 009 764.85 980 841.52 28 923.32 19, 42 20, 35, 66 {0.1, 0.3, 0.6} 776 647.90 747 175.58 29 472.32 27, 42 20, 35, 59 -
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