Multi-objective AI planning suffers from a lack of benchmarks exhibiting known Pareto Fronts. In this work, we propose a tunable benchmark generator, together with a dedicated solver that provably computes the true Pareto front of the resulting instances. First, we prove a proposition allowing us to characterize the optimal plans for a constrained version of the problem, and then show how to reduce the general problem to the constrained one. Second, we provide a constructive way to find all the Pareto-optimal plans and discuss the complexity of the algorithm. We provide an implementation that allows the solver to handle realistic instances in a reasonable time. Finally, as a practical demonstration, we used this solver to find all Pareto-op...
The optimization of infrastructure planning in a multimodal passenger transportation network is form...
In many engineering problems, we face multi-objective optimization, with several objective functions...
This paper presents a biobjective multiple allocation p-hub median problem, discusses the properties...
International audienceMulti-objective AI planning suffers from a lack of bench-marks with known Pare...
International audienceA method to generate various size tunable benchmarks for multi-objective AI pl...
Spatial optimization problems, such as route selection, usually involve multiple, conflicting object...
International audienceReal-world problems generally involve several antagonistic objectives, like qu...
The travelling salesperson problem (TSP) is a classic resource allocation problem used to find an op...
Modern multiobjective algorithms can be computationally inefficient in producing good approximation ...
In multi-objective optimization problems, expensive high-fidelity simulations are commonly replaced ...
In this article, we propose novel strategies for the efficient determination of multiple solutions f...
Solving many-objective problems (MaOPs) is still a significant challenge in the multi-objective opti...
International audienceMost real-world Planning problems are multi-objective, trying to minimize both...
Integrated ground-air-space (IGAS) networks intrinsically amalgamate terrestrial and non-terrestrial...
Integrated ground-air-space (IGAS) networks intrinsically amalgamate terrestrial and non-terrestrial...
The optimization of infrastructure planning in a multimodal passenger transportation network is form...
In many engineering problems, we face multi-objective optimization, with several objective functions...
This paper presents a biobjective multiple allocation p-hub median problem, discusses the properties...
International audienceMulti-objective AI planning suffers from a lack of bench-marks with known Pare...
International audienceA method to generate various size tunable benchmarks for multi-objective AI pl...
Spatial optimization problems, such as route selection, usually involve multiple, conflicting object...
International audienceReal-world problems generally involve several antagonistic objectives, like qu...
The travelling salesperson problem (TSP) is a classic resource allocation problem used to find an op...
Modern multiobjective algorithms can be computationally inefficient in producing good approximation ...
In multi-objective optimization problems, expensive high-fidelity simulations are commonly replaced ...
In this article, we propose novel strategies for the efficient determination of multiple solutions f...
Solving many-objective problems (MaOPs) is still a significant challenge in the multi-objective opti...
International audienceMost real-world Planning problems are multi-objective, trying to minimize both...
Integrated ground-air-space (IGAS) networks intrinsically amalgamate terrestrial and non-terrestrial...
Integrated ground-air-space (IGAS) networks intrinsically amalgamate terrestrial and non-terrestrial...
The optimization of infrastructure planning in a multimodal passenger transportation network is form...
In many engineering problems, we face multi-objective optimization, with several objective functions...
This paper presents a biobjective multiple allocation p-hub median problem, discusses the properties...