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Online Algorithm for Opportunistic Handling of Received Packets in Vehicular Networks

机译:车载网络中接收报文机会处理的在线算法

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摘要

In vehicular ad-hoc networks, due to high mobility, vehicles usually communicate for short periods of time with several neighboring vehicles and are required to process data fast; sometimes in the order of few milliseconds. This urgency of data processing is further heightened in safety-critical scenarios that involve many vehicles. Such scenarios require data to be prioritized and processed with minimum delay. While packet scheduling has been extensively studied, these studies focus on channel scheduling, our work focuses on processing received packets by a vehicle in dense scenarios. In this paper, we formulate the prioritized data processing problem as an integer linear program given a prior knowledge of the request sequence and prove that it is NP-complete. Due to the difficulty of predicting the traffic patterns and obtaining the request sequence in advance, we propose an online algorithm that does not require the prior knowledge of the request sequence and achieves an$mathcal {O}(1)$competitive ratio. The proposed online algorithm strives to accept higher severity packets for processing in order to maximize the cumulative severity given vehicular communications/computation capacity constraints. Using real traffic traces, we evaluate the performance of the online algorithm against three online algorithms, in which two of them use an exponentially weighted moving average-based threshold while the other one accepts requests as capacity permits. Our evaluation shows that our algorithm achieves up to 492% more cumulative severity compared to the three other baseline algorithms.
机译:在车辆自组织网络中,由于移动性高,车辆通常在短时间内与几辆相邻的车辆通信,因此需要快速处理数据。有时大约是几毫秒。在涉及许多车辆的安全关键型方案中,数据处理的紧迫性进一步提高。此类方案要求对数据进行优先级排序并以最小的延迟进行处理。虽然对分组调度进行了广泛的研究,但这些研究集中在信道调度上,而我们的工作则集中在密集场景下车辆对接收到的分组的处理上。在本文中,考虑到请求序列的先验知识,我们将优先数据处理问题公式化为整数线性程序,并证明它是NP完全的。由于难以预先预测流量模式和预先获得请求序列,我们提出了一种在线算法,该算法不需要先验请求序列知识即可实现 n <内联式xmlns:mml = “ http: //www.w3.org/1998/Math/MathML “ xmlns:xlink = ” http://www.w3.org/1999/xlink “> $ 数学{O}(1)$ n竞争比。提出的在线算法努力接受较高严重性的数据包进行处理,以便在给定车辆通信/计算能力约束的情况下使累积严重性最大化。使用真实的流量跟踪,我们针对三种在线算法评估了在线算法的性能,其中两种在线算法使用指数加权的基于移动平均的阈值,而另一种使用容量允许的请求。我们的评估表明,与其他三种基线算法相比,我们的算法可实现的累积严重性高出492%。

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