2021
DOI: 10.1177/14680874211019345
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Deep reinforcement learning for dynamic control of fuel injection timing in multi-pulse compression ignition engines

Abstract: Conventional compression-ignition (CI) engines have long offered high thermal efficiencies and torque across a wide range of loads, but often require extensive exhaust gas treatment that decreases efficiency to meet ever-increasing emissions regulations. One strategy to decrease emissions is to split the fuel injection into a series of smaller injections. In this paper, we explore a new way of discovering optimal control strategies for the next generation of CI engines using deep reinforcement learning (DRL). … Show more

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Cited by 12 publications
(18 citation statements)
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“…Furthermore, DRL has been applied to a number of other control tasks, ranging from simple onedimensional falling-fluid instabilities [40], convection problems [41], chaotic turbulent combustion systems [42] to a variety of engineering cases [43][44][45][46].…”
Section: Reinforcement Learning In Fluid Mechanicsmentioning
confidence: 99%
“…Furthermore, DRL has been applied to a number of other control tasks, ranging from simple onedimensional falling-fluid instabilities [40], convection problems [41], chaotic turbulent combustion systems [42] to a variety of engineering cases [43][44][45][46].…”
Section: Reinforcement Learning In Fluid Mechanicsmentioning
confidence: 99%
“…Furthermore, DRL has been applied to a number of other control tasks, ranging from simple one-dimensional falling-fluid instabilities [34], convection problems [35], chaotic turbulent combustion systems [36] to a variety of engineering cases [37][38][39][40].…”
Section: Reinforcement Learning In Fluid Mechanicsmentioning
confidence: 99%
“…The control policy of the agent would be iteratively optimized by trial and error using feedback from its actions and experiences. Motivated by the feature of RL, the authors in Henry de Frahan et al 125 developed a new control strategy based on RL to reduce the N O x emission for diesel engines. Similarly, RL was also used for emission and energy management in diesel HEV.…”
Section: Applications Of Data-driven Approaches In Diesel Enginesmentioning
confidence: 99%
“…Henry de Frahan et al, 125 Hofstetter et al, 126 Hu et al, 127 Hu and Li, 128 Xu and Li 129 SVM Liu et al, 94 Wong et al 103 Liu et al 112 Niu et al 130…”
Section: Rl / /mentioning
confidence: 99%