Uncertain demand prediction for guaranteed automated vehicle fleet performance
Licentiate thesis, 2023
In this thesis, we present a stochastic model predictive controller (SMPC) that accounts for uncertainties in travel demand predictions. Our method make use of Gaussian Process Regression (GPR) to estimate passenger travel demand and predict time patterns with uncertainty bounds. The SMPC integrates these demand predictions into a receding horizon MoD optimization and uses a probabilistic constraining method with a user-defined confidence interval to guarantee constraint satisfaction. This result in a Chance Constrained Model Predictive Control (CCMPC) solution. Our approach has two benefits: incorporating travel demand uncertainty into the MoD optimization and the ability to relax the solution into a simpler Mixed-Integer Linear Program (MILP). Our simulation results demonstrate that this method reduces median customer wait time by 4% compared to using only the mean prediction from GPR. By adjusting the confidence bound, near-optimal performance can be achieved.
Mobility-on-Demand
Travel Demand Uncertainty
Energy Efficiency
Chance Constraint Optimization
Gaussian Process Regression
Stochastic Model Predictive Control
Fleet Opti- mization
Author
Sten Elling Tingstad Jacobsen
Chalmers, Electrical Engineering, Systems and control
Areas of Advance
Transport
Subject Categories
Transport Systems and Logistics
Control Engineering
Publisher
Chalmers
Room EA, Hörsalsvägen 11
Opponent: Prof. Jonas Mårtensson