基于人工智能的蜂窝车对服务器通信吞吐量预测比较

Josef Schmid, Mathias Schneider, A. Höß, Björn Schuller
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引用次数: 7

摘要

如今,车载传感器数据主要用于检测自动驾驶过程中出现的新威胁。由于这些数据的范围在本地受到限制,因此考虑了集中式服务器架构,以减轻高速高度自动驾驶带来的挑战。因此,服务器积累该传感器数据,并利用基于移动网络的车辆到服务器通信提供有关交通状况的汇总信息。为了在这种波动信道上可靠地调度通信流量,采用了各种吞吐量预测方法。一方面,有基于位置聚合的模型,例如连通性图。另一方面,有传统的机器学习方法,如支持向量回归。本文实现了后者,包括基于osm的特征工程,并利用统一的数据集对这些模型的性能进行了全面的比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comparison of AI-Based Throughput Prediction for Cellular Vehicle-To-Server Communication
Nowadays, on-board sensor data is primarily used to detect nascent threats during automated driving. Since the range of this data is locally restricted, centralized server architectures are taken into consideration to alleviate challenges caused by highly automated driving at higher speeds. Therefore, a server accumulates this sensor data and provides aggregated information about the traffic situation utilizing mobile network-based vehicle to server communication. To schedule communication traffic on this fluctuating channel reliably, various approaches on throughput prediction are conducted. On one hand there are models based on aggregation depending on the position, e.g. connectivity maps. On the other hand there are traditional machine learning approaches, i.a. Support Vector Regression. This work implements the latter including OSM-based feature engineering and conducts a comprehensive comparison on the performance of these models utilizing a uniform dataset.
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