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comparative analysis of double deep q-network and proximal policy optimization for lane-keeping in autonomous driving
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نویسنده
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sabbir ariful islam
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منبع
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problems of information society - 2025 - دوره : 16 - شماره : 1 - صفحه:12 -25
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چکیده
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Lane-keeping is a vital function in autonomous driving, important for vehicle safety, stability, and adherence to traffic flow. the intricacy of lane-keeping control resides in balancing precision and responsiveness across varied driving circumstances. this article gives a comparative examination of two reinforcement learning (rl) algorithms—double deep q-network and proximal policy optimization—for lane-keeping across discrete and continuous action spaces. double dqn, an upgrade of standard deep q-networks, eliminates overestimation bias in q-values, demonstrating its usefulness in discrete action spaces. this method shines in low-dimensional environments like highways, where lane-keeping requires frequent, discrete modifications. in contrast, ppo, a strong policy-gradient method built for continuous control, performs well in high-dimensional situations, such as urban roadways and curved highways, where continual, accurate steering changes are necessary. the methods were tested in matlab/simulink simulations that simulate both highway and urban driving circumstances. each model integrates vehicle dynamics and neural network topologies to build control techniques. results demonstrate that double dqn consistently maintains lane position in highway settings, exploiting its ability to minimize overestimations in q-values, thereby attaining stable lane centering. ppo outshines in dynamic and unpredictable settings, managing continual control adjustments well, especially under difficult traffic conditions and on curving roadways. this study underscores the importance of matching rl algorithms to the action-space requirements of specific driving environments, with double dqn excelling in discrete tasks and ppo in continuous adaptive control, contributing valuable insights toward enhancing the flexibility and safety of autonomous vehicles.
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کلیدواژه
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autonomous driving lane-keeping ,reinforcement learning ,double deep ,q-network proximal policy ,optimization ,action space ,proximal policy optimization
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آدرس
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shanghai university of engineering science, school of electronic and electrical engineering, china
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پست الکترونیکی
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027121125@sues.edu.cn
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Authors
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