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Quantum immune clone for solving constrained multi-objective optimization

机译:用于解决约束多目标优化的量子免疫克隆

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This paper proposes a quantum immune clone algorithm to solve the constrained multi-objective optimization problem. Firstly, constraints deviation value is added to objective function value to form a new objective function value, which translates the constrained multi-objective optimization problem into an unconstrained multi-objective optimization problem. Secondly, it does not only retain the feasible non-dominated solutions, but also utilizes the non-feasible solutions which have small constraint deviation value and objective function value. The appearing of the non-feasible solutions expands the search scope and makes it easy to evolve solutions near the Pareto front. Then, a quantum rotating gate is designed to accelerate the computational speed. At last, crossover and mutation are used to obtain better individuals. Compared with the state-of-art algorithm, simulation results show that the proposed algorithm has a better improvement on GD distance and on the diversity.
机译:提出了一种量子免疫克隆算法来解决约束多目标优化问题。首先,将约束偏差值加到目标函数值上,形成一个新的目标函数值,将约束的多目标优化问题转化为无约束的多目标优化问题。其次,它不仅保留了可行的非支配解,而且利用了约束偏差值和目标函数值较小的非可行解。不可行解决方案的出现扩大了搜索范围,并使在Pareto前端附近的解决方案易于开发。然后,设计了量子旋转门以加快计算速度。最后,通过交叉和变异获得更好的个体。仿真结果表明,与现有算法相比,该算法在GD距离和分集上都有更好的改进。

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