This work addresses the real-time optimization of train scheduling decisions at a complex railway network during congested traffic situations. The problem of effectively managing train operations is particularly challenging, since it is necessary to incorporate the safety regulations into the optimization model and to consider key performance indicators. This paper deals with the development of a multi-criteria decision support methodology to help dispatchers in taking more informed decisions when dealing with real-time disturbances. Optimal train scheduling solutions are computed with high level precision in the modeling of the safety regulations and with consideration of state-of-the-art performance indicators. Mixed-integer linear progra...
AbstractThis paper reports on the practical applicability of published techniques for real-time trai...
Traffic controllers monitor railway traffic sequencing train movements and setting routes with the a...
This paper presents a self-learning decision making procedure for robust real-time train reschedulin...
This work addresses the real-time optimization of train scheduling decisions at a complex railway ne...
Rescheduling train traffic in a busy and complex railway area is a challenging task, partly because ...
Train scheduling is a critical activity in rail traffic management, both off-line (timetabling) and ...
This paper investigates potential configuration challenges in the development of optimization-based ...
In the last years, real-time railway traffic optimization experienced an increasing interest due to ...
Railway is an important and sustainable transportation mode, which despite good potentials results i...
This paper investigates potential configuration challenges in the development of optimization-based ...
We study the integration of real-time traffic management and train control by using mixed-integer no...
We study the integration of real-time traffic management and train control by using mixed-integer no...
This paper reports on the practical applicability of published techniques for real-time train schedu...
Railway dispatchers are in charge of rescheduling trains during operations in order to limit propaga...
Optimization models for railway traffic rescheduling tackle the problem of determining, in real-time...
AbstractThis paper reports on the practical applicability of published techniques for real-time trai...
Traffic controllers monitor railway traffic sequencing train movements and setting routes with the a...
This paper presents a self-learning decision making procedure for robust real-time train reschedulin...
This work addresses the real-time optimization of train scheduling decisions at a complex railway ne...
Rescheduling train traffic in a busy and complex railway area is a challenging task, partly because ...
Train scheduling is a critical activity in rail traffic management, both off-line (timetabling) and ...
This paper investigates potential configuration challenges in the development of optimization-based ...
In the last years, real-time railway traffic optimization experienced an increasing interest due to ...
Railway is an important and sustainable transportation mode, which despite good potentials results i...
This paper investigates potential configuration challenges in the development of optimization-based ...
We study the integration of real-time traffic management and train control by using mixed-integer no...
We study the integration of real-time traffic management and train control by using mixed-integer no...
This paper reports on the practical applicability of published techniques for real-time train schedu...
Railway dispatchers are in charge of rescheduling trains during operations in order to limit propaga...
Optimization models for railway traffic rescheduling tackle the problem of determining, in real-time...
AbstractThis paper reports on the practical applicability of published techniques for real-time trai...
Traffic controllers monitor railway traffic sequencing train movements and setting routes with the a...
This paper presents a self-learning decision making procedure for robust real-time train reschedulin...