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An Intelligent Optimization Algorithm for Constructing a DNA Storage Code: NOL-HHO

机译:构建DNA存储代码的智能优化算法:NOL-HHO

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摘要

The high density, large capacity, and long-term stability of DNA molecules make them an emerging storage medium that is especially suitable for the long-term storage of large datasets. The DNA sequences used in storage need to consider relevant constraints to avoid nonspecific hybridization reactions, such as the No-runlength constraint, GC-content, and the Hamming distance. In this work, a new nonlinear control parameter strategy and a random opposition-based learning strategy were used to improve the Harris hawks optimization algorithm (for the improved algorithm NOL-HHO) in order to prevent it from falling into local optima. Experimental testing was performed on 23 widely used benchmark functions, and the proposed algorithm was used to obtain better coding lower bounds for DNA storage. The results show that our algorithm can better maintain a smooth transition between exploration and exploitation and has stronger global exploration capabilities as compared with other algorithms. At the same time, the improvement of the lower bound directly affects the storage capacity and code rate, which promotes the further development of DNA storage technology.
机译:DNA分子的高密度,大容量和长期稳定性使它们成为新兴的存储介质,特别适合于大型数据集的长期存储。用于存储的DNA序列需要考虑相关的限制条件,以避免非特异性杂交反应,例如无游走长度限制条件,GC含量和汉明距离。在这项工作中,使用了一种新的非线性控制参数策略和基于随机对立的学习策略来改进哈里斯霍克斯霍克斯优化算法(对于改进算法NOL-HHO),以防止其陷入局部最优状态。对23种广泛使用的基准函数进行了实验测试,并使用所提出的算法来获得更好的DNA存储下限编码。结果表明,与其他算法相比,该算法可以更好地保持勘探与开发之间的平稳过渡,并具有较强的全局勘探能力。同时,下界的提高直接影响了存储容量和编码率,促进了DNA存储技术的进一步发展。

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