基于群体的蚁群优化方法在DNA序列优化中的应用

T. Kurniawan, Z. Ibrahim, Noor Khafifah Khalid, M. Khalid
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引用次数: 4

摘要

DNA计算是一种以生物分子作为信息存储介质,以生物化学工具作为信息处理算子的新型计算范式。它在各种应用中显示出许多成功和有希望的结果。由于DNA反应是概率性反应,在相同的情况下可能会导致不同的结果,这可以看作是计算中的误差。为了克服这些缺点,人们致力于设计误差最小的DNA序列,以提高DNA计算的可靠性。本研究提出基于种群的蚁群算法(Population-based ACO, P-ACO)来解决DNA序列优化问题。蚁群算法是一种基于蚁群信息素的元启发式算法。将DNA序列设计问题建模为4个节点,分别代表4个DNA碱基(A、T、C和G),并与遗传算法(GA)和多目标进化算法(MOEA)等序列设计方法进行了比较。该方法优化后的DNA序列在某些目标函数上优于其他方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Population-Based Ant Colony Optimization Approach for DNA Sequence Optimization
DNA computing is a new computing paradigm which uses bio-molecular as information storage media and biochemical tools as information processing operators. It has shows many successful and promising results for various applications. Since DNA reactions are probabilistic reactions, it can cause the different results for the same situations, which can be regarded as errors in the computation. To overcome the drawbacks, much works have focused to design the error-minimized DNA sequences to improve the reliability of DNA computing. In this research, Population-based ACO (P-ACO) is proposed to solve the DNA sequence optimization. P-ACO approach is a meta-heuristic algorithm that uses some ants to obtain the solutions based on the pheromone in their colony. The DNA sequence design problem is modelled by four nodes, representing four DNA bases (A, T, C, and G). The results from the proposed algorithm are compared with other sequence design methods, which are Genetic Algorithm (GA), and Multi-Objective Evolutionary Algorithm (MOEA) methods. The DNA sequences optimized by the proposed approach have better result in some objective functions than the other methods.
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