Nested Rollout Policy Adaptation for optimizing vehicle selection in complex VRPs
Abdo, Ashraf (2016)
Diplomityö
Abdo, Ashraf
2016
Julkaisun pysyvä osoite on
https://urn.fi/URN:NBN:fi-fe2016082422961
https://urn.fi/URN:NBN:fi-fe2016082422961
Tiivistelmä
The goal of Vehicle Routing Problems (VRP) and their variations is to transport a set of orders with the minimum number of vehicles at least cost. Most approaches are designed to solve specific problem variations independently, whereas in real world applications, different constraints are handled concurrently.
This research extends solutions obtained for the traveling salesman problem with time windows to a much wider class of route planning problems in logistics. The work describes a novel approach that:
supports a heterogeneous fleet of vehicles
dynamically reduces the number of vehicles
respects individual capacity restrictions
satisfies pickup and delivery constraints
takes Hamiltonian paths (rather than cycles)
The proposed approach uses Monte-Carlo Tree Search and in particular Nested Rollout Policy Adaptation. For the evaluation of the work, real data from the industry was obtained and tested and the results are reported.
This research extends solutions obtained for the traveling salesman problem with time windows to a much wider class of route planning problems in logistics. The work describes a novel approach that:
supports a heterogeneous fleet of vehicles
dynamically reduces the number of vehicles
respects individual capacity restrictions
satisfies pickup and delivery constraints
takes Hamiltonian paths (rather than cycles)
The proposed approach uses Monte-Carlo Tree Search and in particular Nested Rollout Policy Adaptation. For the evaluation of the work, real data from the industry was obtained and tested and the results are reported.