Bilevel Late Acceptance Hill Climbing for the Electric Capacitated Vehicle Routing Problem
Yinghao Qin, Mosab Bazargani, Edmund K. Burke, Carlos A. Coello Coello, Zhongmin Song + 1 more
TLDR
This paper introduces b-LAHC, a bilevel optimization algorithm for E-CVRP, achieving SOTA results by separating routing and charging decisions.
Key contributions
- Proposes b-LAHC, a bilevel Late Acceptance Hill Climbing algorithm for E-CVRP.
- Uses a bilevel framework to handle routing and charging decisions separately or jointly.
- Introduces a surrogate objective to guide search and accelerate convergence.
- Achieves SOTA or competitive results, setting 9/10 new best-known records on large E-CVRP instances.
Why it matters
This paper tackles the complex Electric Capacitated Vehicle Routing Problem, crucial for sustainable logistics. The b-LAHC algorithm offers a novel, efficient approach by intelligently separating and joining routing and charging decisions. Achieving new SOTA results on large-scale instances with fixed parameters, it's highly practical for real-world applications.
Original Abstract
This paper tackles the Electric Capacitated Vehicle Routing Problem (E-CVRP) through a bilevel optimization framework that handles routing and charging decisions separately or jointly depending on the search stage. By analyzing their interaction, we introduce a surrogate objective at the upper level to guide the search and accelerate convergence. A bilevel Late Acceptance Hill Climbing algorithm (b-LAHC) is introduced that operates through three phases: greedy descent, neighborhood exploration, and final solution refinement. b-LAHC operates with fixed parameters, eliminating the need for complex adaptation while remaining lightweight and effective. Extensive experiments on the IEEE WCCI-2020 benchmark show that b-LAHC achieves superior or competitive performance against eight state-of-the-art algorithms. Under a fixed evaluation budget, it attains near-optimal solutions on small-scale instances and sets 9/10 new best-known results on large-scale benchmarks, improving existing records by an average of 1.07%. Moreover, the strong correlation (though not universal) observed between the surrogate objective and the complete cost justifies the use of the surrogate objective while still necessitating a joint solution of both levels, thereby validating the effectiveness of the proposed bilevel framework and highlighting its potential for efficiently solving large-scale routing problems with a hierarchical structure.
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