基于 GPT-4V、联合强化学习和区块链的自动驾驶汽车决策模型

Tanweer Alam, Ruchi Gupta, N. Nasurudeen Ahamed, Arif Ullah
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引用次数: 0

摘要

决策对于完全自动驾驶车辆的运行至关重要,预计将极大地影响未来的交通系统。观察自动驾驶车辆当前的行驶状态对其决策过程至关重要。道路上的自动互联车辆会向服务器发送有关其运动的重要数据,以保持持续训练。区块链技术通过权力证明(PoA)共识过程,提供了一种有效、分散和安全的选择,以提高交易吞吐量并最大限度地减少延迟。在训练自动驾驶算法时,车辆有限的计算能力对实现高精度和低延迟提出了挑战。GPT-4V 在场景解读和因果思维方面超越了具有挑战性的自动驾驶系统。GPT-4V 有能力在无法访问数据库的情况下进行导航,解读意图,并在实际驾驶场景中做出正确决策。奖励功能和不同的驾驶条件被组织起来,以实现最优搜索,在确保安全的前提下找到最有效的驾驶方式。基于区块链的自动驾驶汽车(SDV)决策模型(DMM)主要以 GPT-4V 和联合强化学习(FRL)为基础,其结果可能会提升 SDV 的决策准确性、操作性能、统计完整性,并有可能增强 SDV 的学习技能。将区块链技术、GPT-4V 高级语言建模和 FRL 相结合,可能会成倍提高 SDV 的安全性、可靠性和决策能力。本研究利用城市交通能力仿真(SUMO)模拟器,评估了 SDV 在高速公路环境中使用建议的 DMM 持续、安全地保持所需速度的能力。研究表明,建议的 DMM 采用 SDV 驾驶状态评估方法,可帮助这些车辆安全有效地运行。建议模型的性能,如 CPU 利用率、带宽和延迟,均通过多项测试进行了评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A decision-making model for self-driving vehicles based on GPT-4V, federated reinforcement learning, and blockchain

A decision-making model for self-driving vehicles based on GPT-4V, federated reinforcement learning, and blockchain

Decision-making is crucial in fully autonomous vehicle operations and is expected to greatly influence future transportation systems. Observing the current driving status of autonomous vehicles is vital for its decision-making process. The autonomous connected vehicles on the road send significant data about their movements to the server to maintain continuous training. With the Proof of Authority (PoA) consensus process, blockchain technology provides a valid, decentralised and secure option to improve transactions throughput and minimise delay. The limited computational capacity of vehicles poses a challenge in achieving high accuracy and low latency while training self-driving algorithms. GPT-4V surpassed challenging autonomous systems in scene interpretation and causal thinking. GPT-4V has ability to navigate circumstances without access to database, interpret intentions, and make sound decisions in real-world driving scenarios. The reward function and different driving conditions are organised to allow an optimal search to find the most efficient driving style while ensuring safety. The consequences of the Blockchain-enabled decision-making model (DMM) for Self-Driving Vehicles (SDV) primarily based on GPT-4V and Federated Reinforcement Learning (FRL) would, likely, upgrades in decision-making accuracy, operational performance, statistics integrity, and potentially enhanced learning skills in SDV. Integrating blockchain technology, superior language modelling GPT-4V and FRL may lead to multiplied safety, reliability, and decision-making ability in SDV. This study utilised the Simulation of Urban MObility (SUMO) simulator to assess the ability of SDV to maintain its desired speed consistently and securely in a highway setting using proposed DMM. This study indicates that the suggested DMM, utilising the driving state evaluation approach for SDV, can help these vehicles operate safely and effectively. The performance of the proposed model, such as CPU utilisation, bandwidth and latency, are evaluated through multiple tests.

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