Master of Science, The Ohio State University, 2020, Mechanical Engineering
With the on-going electrification and data-intelligence trends in logistics industries,
enabled by the advances in powertrain electrification, and connected and autonomous
vehicle technologies, the traditional ways vehicles are designed by engineering experience
and sales data are to be updated with a design for operation notion that relies intensively
on operational data collection and large scale simulations. In this work, this design for
operation notion is revisited with a specific combination of optimization and control
techniques that promises accurate results with relatively fast computational time. The
specific application that is explored here is a Class 6 pick-up and delivery truck that is
limited to a given driving mission. A Gaussian Process (GP) based statistical learning
approach is used to refine the search for the most accurate, optimal designs. Five hybrid
powertrain architectures are explored, and a set of Pareto-optimal designs are found for a
specific driving mission that represents the variations in a hypothetical operational
scenario. A cross-architecture performance and cost comparison is performed and the
selected architecture is developed further in the form of a forward simulator with a
dedicated ECMS controller. In the end, a traffic-in-the-loop simulation is performed by
integrating the selected powertrain architecture with a SUMO traffic simulator to evaluate
the performance of the developed controller against varying driving conditions.
Committee: Giorgio Rizzoni (Advisor); Qadeer Ahmed (Committee Member)
Subjects: Automotive Engineering; Engineering; Mechanical Engineering; Sustainability; Systems Design; Transportation