In this paper we propose a Deep Reinforcement Learning approach to solve a multimodal transportation planning problem, in which containers must be assigned to a truck or to trains that will transport them to their destination. While traditional planning methods work "offline" (i.e., they take decisions for a batch of containers before the transportation starts), the proposed approach is "online", in that it can take decisions for individual containers, while transportation is being executed. Planning transportation online helps to effectively respond to unforeseen events that may affect the original transportation plan, thus supporting companies in lowering transportation costs. We implemented different container selection heuristics within...
The real-time railway rescheduling problem is a crucial challenge for human operators since many fac...
Sea freight is one of the most important ways for the transportation and distribution of coal and ot...
Traffic congestion has become one of the most serious contemporary city issues as it leads to unnece...
In this paper we propose a Deep Reinforcement Learning approach to solve a multimodal transportation...
In this paper we tackle the container allocation problem in multimodal transportation planning under...
Applying and adapting deep reinforcement learning (DRL) to tackle transportation problems is an emer...
The growth in online goods delivery is causing a dramatic surge in urban vehicle traffic from last-m...
Many ports worldwide continue to expand their capacity by developing a multiterminal system to catch...
With the increasing global demand for logistics, supply chains have grown a lot in volume over the l...
This thesis has provided insight into how machine learning can be beneficial to path planning in con...
Loading and unloading rolling cargo in roll-on/roll-off are important and very recurrent operations ...
This paper presents a combinatorial problem called a pick-up routing problem with a three-dimensiona...
This paper presents a cooperative object transportation technique using deep reinforcement learning ...
Artificial Intelligence has in the recent years become a popular subject, many thanks to the recent ...
The vehicle dispatching system is one of the most critical problems in online ride-hailing platforms...
The real-time railway rescheduling problem is a crucial challenge for human operators since many fac...
Sea freight is one of the most important ways for the transportation and distribution of coal and ot...
Traffic congestion has become one of the most serious contemporary city issues as it leads to unnece...
In this paper we propose a Deep Reinforcement Learning approach to solve a multimodal transportation...
In this paper we tackle the container allocation problem in multimodal transportation planning under...
Applying and adapting deep reinforcement learning (DRL) to tackle transportation problems is an emer...
The growth in online goods delivery is causing a dramatic surge in urban vehicle traffic from last-m...
Many ports worldwide continue to expand their capacity by developing a multiterminal system to catch...
With the increasing global demand for logistics, supply chains have grown a lot in volume over the l...
This thesis has provided insight into how machine learning can be beneficial to path planning in con...
Loading and unloading rolling cargo in roll-on/roll-off are important and very recurrent operations ...
This paper presents a combinatorial problem called a pick-up routing problem with a three-dimensiona...
This paper presents a cooperative object transportation technique using deep reinforcement learning ...
Artificial Intelligence has in the recent years become a popular subject, many thanks to the recent ...
The vehicle dispatching system is one of the most critical problems in online ride-hailing platforms...
The real-time railway rescheduling problem is a crucial challenge for human operators since many fac...
Sea freight is one of the most important ways for the transportation and distribution of coal and ot...
Traffic congestion has become one of the most serious contemporary city issues as it leads to unnece...