Existing microscopic traffic models have often neglected departure time change as a possible response to congestion. In addition, they lack a formal model of how travellers base their daily travel decisions on the accumulated experience gathered from repetitively travelling through the transport network. This paper proposes an approach to account for these shortcomings. A micro-simulation approach is applied, in which individuals base their consecutive departure time decisions on a mental model. The mental model is the outcome of a continuous process of perception updating according to principles of reinforcement learning. Individuals’ daily travel decisions are linked to the traffic simulator SIAS-PARAMICS to create a simulation system in ...
As travellers are faced with an increasing portfolio of transportation options, researchers are simi...
Travel behavior lies at the core of analysis and evaluation of transportation related measures aimin...
This study introduces a model of individual belief updating of subjective travel times as a function...
Existing microscopic traffic models have often neglected departure time change as a possible respons...
Models of travel time perception and learning mechanisms in traffic networks are presented. Mechanis...
Traffic information is increasingly regarded as a tool to achieve a more efficient use of the road n...
Recent progress in activity-based analysis has witnessed the development of some dynamic models of a...
The simultaneous implementation of daily activity-travel schedules of individuals in a given spatial...
This paper develops a model, based on Bayesian beliefs networks, for representing mental maps and co...
Accurate prediction of travellers’ day-to-day departure time and route choice is critical in advance...
A modeling framework is presented for investigating the dynamic properties of a system of commuters ...
This paper proposes a microscopic traffic simulation that employs a continuous planning ap-proach to...
As travellers are faced with an increasing portfolio of transportation options, researchers are simi...
Travel behavior lies at the core of analysis and evaluation of transportation related measures aimin...
This study introduces a model of individual belief updating of subjective travel times as a function...
Existing microscopic traffic models have often neglected departure time change as a possible respons...
Models of travel time perception and learning mechanisms in traffic networks are presented. Mechanis...
Traffic information is increasingly regarded as a tool to achieve a more efficient use of the road n...
Recent progress in activity-based analysis has witnessed the development of some dynamic models of a...
The simultaneous implementation of daily activity-travel schedules of individuals in a given spatial...
This paper develops a model, based on Bayesian beliefs networks, for representing mental maps and co...
Accurate prediction of travellers’ day-to-day departure time and route choice is critical in advance...
A modeling framework is presented for investigating the dynamic properties of a system of commuters ...
This paper proposes a microscopic traffic simulation that employs a continuous planning ap-proach to...
As travellers are faced with an increasing portfolio of transportation options, researchers are simi...
Travel behavior lies at the core of analysis and evaluation of transportation related measures aimin...
This study introduces a model of individual belief updating of subjective travel times as a function...