Seamless shifting and suppressing clutch judder of 2-speed DCT for EV by deep reinforcement learning
Kazuki Ogawa,
Tatsuhito Aihara,
Gaku Minorikawa
Abstract:One of the challenges facing widespread adoption of electric vehicles (EVs) is their short driving range. To address this challenge, the development of various EV transmissions is underway. In transmissions, clutches are used for disconnection from the drive source, and a phenomenon called judder, which is a violent vibration, may occur when the clutch slides on a frictional surface. To resolve this problem, the use of deep reinforcement learning, which is being used and advanced in areas such as machine contr… Show more
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