Spark Optimization of Linear Codes for Reliable Data Delivery by Relay Drones

Ioannis Chatzigeorgiou
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Abstract

Data gathering operations in remote locations often rely on relay drones, which collect, store and deliver transmitted information to a ground control station. The probability of the ground control station successfully reconstructing the gathered data can be increased if random linear coding (RLC) is used, especially when feedback channels between the drones and the transmitter are not available. RLC decoding can be complemented by partial packet recovery (PPR), which utilizes sparse recovery principles to repair erroneously received data before RLC decoding takes place. We explain that the spark of the transpose of the parity-check matrix of the linear code, that is, the smallest number of linearly-dependent columns of the matrix, influences the effectiveness of PPR. We formulate a spark optimization problem and obtain code designs that achieve a gain over PPR-assisted RLC, in terms of the probability that the ground control station will decode the delivered data.
中继无人机可靠数据传输线性代码的火花优化
偏远地区的数据收集操作通常依赖于中继无人机,它们收集、存储并将传输的信息传递给地面控制站。采用随机线性编码(RLC)可以提高地面控制站成功重建采集数据的概率,特别是当无人机和发射机之间的反馈信道不可用时。RLC解码可以通过部分包恢复(PPR)来补充,它利用稀疏恢复原理在RLC解码发生之前修复错误接收的数据。我们解释了线性码的奇偶校验矩阵的转置的火花,即矩阵中线性相关列的最小个数,会影响PPR的有效性。我们制定了一个火花优化问题,并获得了在地面控制站解码传输数据的概率方面优于ppr辅助RLC的代码设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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