空间网络传输与计算资源的联合分配

Lijun He, Jiandong Li, Min Sheng, Runzi Liu, Kun Guo, Jianping Liu
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引用次数: 4

摘要

通过向航天器分配天线时间块,数据中继卫星对于空间网络在其可见间隔(即时间窗)内中继数据至关重要。现有的工作只关注时间窗内的传输资源(即天线时间块)的分配,可能导致难以有效解决的传输冲突,特别是当多个任务同时激活时。为此,我们提出进一步将计算与传输资源分配相结合,实现数据压缩,从而缓解冲突。具体而言,以最大完成任务数和最小数据丢失为目标,首先将联合传输和计算资源分配问题表述为混合整数线性规划问题。然后,为了降低复杂度,我们通过确定最大数据压缩量将MILP转换为整数线性规划(ILP)。同时,通过构造冲突图来表征资源分配冲突,提出了一种有效解决资源分配冲突的时间窗调度算法。接下来,我们进一步开发了一种数据压缩控制算法,以在任务数不变的前提下减少数据丢失。最后,仿真结果表明,在任务数和数据丢失两方面,空间网络都可以从传输和计算资源的结合中获益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Joint allocation of transmission and computation resources for space networks
By allocating antenna time blocks to spacecrafts, data relay satellites are of vital importance for the space network to relay data within their visible intervals (i.e., time windows). Existing works concentrate only on the allocation of transmission resources (i.e., antenna time blocks) in time windows and may result in transmission conflicts hard to efficiently resolve, especially when multiple missions are activated simultaneously. To this end, we propose to further integrate computation with transmission resource allocation, to enable data compression so as to alleviate conflicts. Specifically, aiming to maximize the number of completed missions and minimize data loss, we first formulate the joint transmission and computation resource allocation problem as a mixed integer linear programming (MILP) one. Then, for the complexity reduction, we transform the MILP into an integer linear programming (ILP) one by fixing maximal data compression. Meanwhile, by constructing a conflict graph to characterize resource allocation conflicts, a time window scheduling algorithm is proposed to solve the ILP problem efficiently. Next, we further develop a data compression control algorithm to reduce data loss on the prerequisite of invariant mission number. Finally, simulation results show that the space network can benefit from the combination of transmission and computation resources in terms of both mission number and data loss.
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