Deep generative models for vehicle speed trajectories
F Behnia, D Karbowski… - Applied Stochastic Models …, 2023 - Wiley Online Library
Applied Stochastic Models in Business and Industry, 2023•Wiley Online Library
Generating realistic vehicle speed trajectories is a crucial component in evaluating vehicle
fuel economy and in predictive control of self‐driving cars. Traditional generative models
rely on Markov chain methods and can produce accurate synthetic trajectories but are
subject to the curse of dimensionality. They do not allow to include conditional input
variables into the generation process. In this paper, we show how extensions to deep
generative models allow accurate and scalable generation. Proposed architectures involve …
fuel economy and in predictive control of self‐driving cars. Traditional generative models
rely on Markov chain methods and can produce accurate synthetic trajectories but are
subject to the curse of dimensionality. They do not allow to include conditional input
variables into the generation process. In this paper, we show how extensions to deep
generative models allow accurate and scalable generation. Proposed architectures involve …
Abstract
Generating realistic vehicle speed trajectories is a crucial component in evaluating vehicle fuel economy and in predictive control of self‐driving cars. Traditional generative models rely on Markov chain methods and can produce accurate synthetic trajectories but are subject to the curse of dimensionality. They do not allow to include conditional input variables into the generation process. In this paper, we show how extensions to deep generative models allow accurate and scalable generation. Proposed architectures involve recurrent and feed‐forward layers and are trained using adversarial techniques. Our models are shown to perform well on generating vehicle trajectories using a model trained on GPS data from Chicago metropolitan area.
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