A DNA Coding Design based on Multi-objective Evolutionary Algorithm with Constraint

Hengyu Duan, Kai Zhang, Xinbo Zhang
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Abstract

Due to the excessive number of objective functions in DNA coding problem, there are dominant impedance between solutions which makes it difficult to evaluate the solutions and the algorithm is hard to converge. And traditional multi-objective evolutionary algorithms tend to fall into premature convergence when dealing with DNA coding problems. We proposed an Improved Nondominated Sorting Genetic Algorithm II with Constraint (ICNSAG-II) to deal with these problem. Firstly, the DNA coding problem and its 6 coding constraints are introduced. Secondly, the constraint function and Block operator are used to reduce the dimensionality of the DNA coding problem, so that the objective function is reduced to two, which make it easy to optimize using multi-objective evolutionary algorithms. Finally, by comparing with the sequences generated by the comparative algorithm, it was verified that the DNA sequences generated by ICNSGA-II have good chemical stability and are able to prevent the of unexpected secondary structures and non-specific hybridization reactions.
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基于约束多目标进化算法的DNA编码设计
由于DNA编码问题中目标函数数量过多,解之间存在显性阻抗,给解的评估带来困难,算法难以收敛。传统的多目标进化算法在处理DNA编码问题时容易过早收敛。针对这些问题,我们提出了一种改进的约束非支配排序遗传算法(ICNSAG-II)。首先介绍了DNA编码问题及其6个编码约束。其次,利用约束函数和块算子对DNA编码问题进行降维,使目标函数降为两个,便于多目标进化算法的优化;最后,通过与比较算法生成的序列进行比较,验证了ICNSGA-II生成的DNA序列具有良好的化学稳定性,能够防止意外的二级结构和非特异性杂交反应的发生。
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