Learning-Assisted Multi-Operator Variable Neighborhood Search for Urban Cable Routing
Wei Liu, Tao Zhang, Chenhui Lin, Kaiwen Li, Rui Wang

TL;DR
This paper introduces a learning-assisted multi-operator variable neighborhood search algorithm for urban cable routing, significantly reducing construction costs by optimizing both connectivity and routing in complex city environments.
Contribution
It formulates urban cable routing as a co-optimization problem and develops a novel hybrid, learning-enhanced algorithm with a scalable benchmark suite for evaluation.
Findings
Reduces total construction cost by 30-50% compared to existing methods.
Demonstrates higher stability and effectiveness on large-scale instances.
Provides a scalable benchmark suite for future research.
Abstract
Urban underground cable construction is essential for enhancing the reliability of city power grids, yet its high construction costs make planning a worthwhile optimization task. In urban environments, road layouts tightly constrain cable routing. This, on the one hand, renders relation-only models (i.e., those without explicit routes) used in prior work overly simplistic, and on the other hand, dramatically enlarges the combinatorial search space, thereby imposing much higher demands on algorithm design. In this study, we formulate urban cable routing as a connectivity-path co-optimization problem and propose a learning-assisted multi-operator variable neighborhood search (L-MVNS) algorithm. The framework first introduces an auxiliary task to generate high-quality feasible initial solutions. A hybrid genetic search (HGS) and A* serve as the connectivity optimizer and the route-planning…
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Taxonomy
TopicsThermal Analysis in Power Transmission · Optimal Power Flow Distribution · Vehicle Routing Optimization Methods
