A Real-Time Vehicle Speed Prediction Method Based on a Lightweight Informer Driven by Big Temporal Data

IF 3.7 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Big Data and Cognitive Computing Pub Date : 2023-07-15 DOI:10.3390/bdcc7030131
Xinyu Tian, Qinghe Zheng, Zhiguo Yu, Mingqiang Yang, Yao Ding, Abdussalam Elhanashi, S. Saponara, K. Kpalma
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Abstract

At present, the design of modern vehicles requires improving driving performance while meeting emission standards, leading to increasingly complex power systems. In autonomous driving systems, accurate, real-time vehicle speed prediction is one of the key factors in achieving automated driving. Accurate prediction and optimal control based on future vehicle speeds are key strategies for dealing with ever-changing and complex actual driving environments. However, predicting driver behavior is uncertain and may be influenced by the surrounding driving environment, such as weather and road conditions. To overcome these limitations, we propose a real-time vehicle speed prediction method based on a lightweight deep learning model driven by big temporal data. Firstly, the temporal data collected by automotive sensors are decomposed into a feature matrix through empirical mode decomposition (EMD). Then, an informer model based on the attention mechanism is designed to extract key information for learning and prediction. During the iterative training process of the informer, redundant parameters are removed through importance measurement criteria to achieve real-time inference. Finally, experimental results demonstrate that the proposed method achieves superior speed prediction performance through comparing it with state-of-the-art statistical modelling methods and deep learning models. Tests on edge computing devices also confirmed that the designed model can meet the requirements of actual tasks.
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基于时间大数据驱动的轻型信息器的实时车速预测方法
目前,现代车辆的设计要求在满足排放标准的同时提高行驶性能,导致动力系统日益复杂。在自动驾驶系统中,准确、实时的车速预测是实现自动驾驶的关键因素之一。基于未来车速的准确预测和最优控制是应对不断变化和复杂的实际驾驶环境的关键策略。然而,预测驾驶员的行为是不确定的,并且可能受到周围驾驶环境的影响,例如天气和道路状况。为了克服这些限制,我们提出了一种基于大时间数据驱动的轻量级深度学习模型的实时车速预测方法。首先,通过经验模态分解(EMD)将汽车传感器采集的时间数据分解为特征矩阵;然后,设计了一个基于注意机制的信息者模型,提取关键信息进行学习和预测。在告密者的迭代训练过程中,通过重要性度量准则去除冗余参数,实现实时推理。最后,通过与现有统计建模方法和深度学习模型的比较,实验结果表明该方法具有更好的速度预测性能。在边缘计算设备上的测试也证实了所设计的模型能够满足实际任务的要求。
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来源期刊
Big Data and Cognitive Computing
Big Data and Cognitive Computing Business, Management and Accounting-Management Information Systems
CiteScore
7.10
自引率
8.10%
发文量
128
审稿时长
11 weeks
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