论文标题
平衡的无线人群充电,以机动性预测和社会意识
Balanced Wireless Crowd Charging with Mobility Prediction and Social Awareness
论文作者
论文摘要
点对点无线电力传输(P2P-WPT)的进步已授权便携式设备和移动设备通过直接与其他附近设备进行交互,从而无线补充电池。现有作品不切实际地假设用户可以与任何用户以及每一个机会交换能源。但是,由于用户的移动性,这种机会性移动网络中的节点会议变化,而在这种情况下,P2P的能源交换仍然不确定。此外,用户的社会利益和互动会影响他们的流动性以及他们之间的能源交流。现有的P2P-WPT方法并未考虑用户不可避免的移动性以及社会性对后者的影响而引起的能源交换的联合问题。由于使用不精确信息的计算,这些作品的能量平衡的速度较慢,并且受到人群能量损失的损害。在此问题的情况下,在这项工作中,我们提出了一种无线人群充电方法,即Mosaba,该方法利用移动性预测和社会信息来提高能源平衡。 Mosaba结合了社会信息的两个维度,即社会环境和社会关系,作为预测联系机会的其他功能。在这种方法中,我们探索了不同的同龄人对,以便以更快的速度实现能量平衡,并且能量平衡质量在维持人群低的能源损失方面有所提高。我们通过详细的绩效评估来证明Mosaba中的同伴选择方法是合理的。与现有的最新方法相比,所提出的方法在能源效率,能源平衡质量和收敛时间之间取得了更好的性能权衡。
The advancements in peer-to-peer wireless power transfer (P2P-WPT) have empowered the portable and mobile devices to wirelessly replenish their battery by directly interacting with other nearby devices. The existing works unrealistically assume the users to exchange energy with any of the users and at every such opportunity. However, due to the users' mobility, the inter-node meetings in such opportunistic mobile networks vary, and P2P energy exchange in such scenarios remains uncertain. Additionally, the social interests and interactions of the users influence their mobility as well as the energy exchange between them. The existing P2P-WPT methods did not consider the joint problem for energy exchange due to user's inevitable mobility, and the influence of sociality on the latter. As a result of computing with imprecise information, the energy balance achieved by these works at a slower rate as well as impaired by energy loss for the crowd. Motivated by this problem scenario, in this work, we present a wireless crowd charging method, namely MoSaBa, which leverages mobility prediction and social information for improved energy balancing. MoSaBa incorporates two dimensions of social information, namely social context and social relationships, as additional features for predicting contact opportunities. In this method, we explore the different pairs of peers such that the energy balancing is achieved at a faster rate as well as the energy balance quality improves in terms of maintaining low energy loss for the crowd. We justify the peer selection method in MoSaBa by detailed performance evaluation. Compared to the existing state-of-the-art, the proposed method achieves better performance trade-offs between energy-efficiency, energy balance quality and convergence time.