Truncating shortest path search for efficient map-matching
Takashi Imamichi, Takayuki Osogami, et al.
IJCAI 2016
Fluid simulation requires a significant amount of computational resources because of the complexity of solving Navier-Stokes equations. In recent work [Ladický et al., 2015], a machine learning technique has been applied to only approximate, but to also accelerate, this complex and time-consuming computation. However, the prior work has not fully taken into account the fact that fluid dynamics is time-varying and involves dynamic features. In this work, we use a time-series machine learning technique, specifically the dynamic Boltzmann machine (DyBM) [Osogami et al., 2015], to approximate fluid simulations. We also propose a learning algorithm for DyBM to better learn and generate an initial part of the time-series. The experimental results suggest the efficiency and accuracy of our proposed techniques.
Takashi Imamichi, Takayuki Osogami, et al.
IJCAI 2016
Takayuki Osogami, Rudy Raymond
AAAI 2019
Shohei Ohsawa, Yachiko Obara, et al.
IJCAI 2016
Takayuki Osogami, Makoto Otsuka
Scientific Reports