2023
DOI: 10.3390/app13020946
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Regenerative Braking Control Strategy Based on AI Algorithm to Improve Driving Comfort of Autonomous Vehicles

Abstract: Recent studies on autonomous vehicles focus on improving driving efficiency and ignore driving comfort. Because acceleration and jerk affect driving comfort, we propose a comfort regenerative braking system (CRBS) that uses artificial neural networks as a vehicle-control strategy for braking conditions. An autonomous vehicle driving comfort is mainly determined by the control algorithm of the vehicle. If the passenger’s comfort is initially predicted based on acceleration and deceleration limits, the control s… Show more

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Cited by 14 publications
(9 citation statements)
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References 27 publications
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“…M. H. Hwang et al [21] introduced a Comfort Regenerative Braking System (CRBS) utilizing neural networks to enhance driving comfort in autonomous vehicles. By predicting acceleration and deceleration limits based on passenger comfort criteria, the CRBS adjusts vehicle control strategies, reducing discomfort during braking.…”
Section: Review Of Existing Research and Use Casesmentioning
confidence: 99%
“…M. H. Hwang et al [21] introduced a Comfort Regenerative Braking System (CRBS) utilizing neural networks to enhance driving comfort in autonomous vehicles. By predicting acceleration and deceleration limits based on passenger comfort criteria, the CRBS adjusts vehicle control strategies, reducing discomfort during braking.…”
Section: Review Of Existing Research and Use Casesmentioning
confidence: 99%
“…The multi‐layer feedforward artificial neural network is a supervised learning technique that requires some training data. ANN is also used in [93] as a vehicle‐control strategy for braking conditions.…”
Section: Vehicle Control For Path Trackingmentioning
confidence: 99%
“…Consequently, regenerative braking proves to be a highly effective technology for enhancing the overall efficiency of electric vehicles. Numerous efforts to meet the control performance requirements for regenerative braking have been documented in the literature, such as rule-based strategies [13], PID control strategies [11][12][13][14], and ANN approaches [15]. In situations where regenerative braking is active, the DC-link voltage experiences a rise, prompting the RBS program, with the assistance of the ANN controller, to redirect the energy from braking towards storage in the SC.…”
Section: Introductionmentioning
confidence: 99%
“…In situations where regenerative braking is active, the DC-link voltage experiences a rise, prompting the RBS program, with the assistance of the ANN controller, to redirect the energy from braking towards storage in the SC. The SC has SCB-HESP-powered scenario density and high battery energy density, but there are still limitations in using high-power electronic interfaces as a bidirectional dc/dc chopper is required to connect the battery to the SC, which leads to higher costs [9][10][11][12][13][14] and high-power electronic systems. The interface causes energy dissipation, and regenerative braking performance decreases later.…”
Section: Introductionmentioning
confidence: 99%