A Digital Twin for Visualizing, Evaluating and Maintaining Multimodal Transportation
- 1. University of Araknsas
- 2. University of Arkansas
Description
To continue operations of the inland waterway transportation system (IWTS), the interconnected infrastructure, such
as locks and dam systems, must remain in good operating condition. However, as the IWTS ages, unexpected
disruptions increase, causing significant transportation delays and economic losses. To evaluate the impacts of
IWTS disruptions, a Python-enhanced NetLogo simulation tool is developed, where extreme natural events are also
considered and characterized by a spatiotemporal model. Utilizing this tool, optimal maintenance strategies that
maximize cargo throughput on the IWTS are determined via deep reinforcement learning. A case study of the lower
Mississippi River system and the McClellan-Kerr Arkansas River Navigation System is conducted to illustrate the
capability of the developed simulation and machine learning-based method for IWTS maintenance optimization.