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Optimization algorithm for rectangle packing problem based on varied-factor genetic algorithm and lowest front-line strategy

机译:基于多因素遗传算法和最低前线策略的矩形包装问题优化算法

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Rectangle packing problem exists widely in manufacturing processes of modern industry, such as cutting of wood, leather, metal and paper, etc. It is also known as a typical NP-Complete combinatorial optimization problem with geometric nature, which contains two sub-problems, parking problem and sequencing problem of rectangles. Considering the features of the problem, this paper proposes an optimization algorithm based on an improved genetic algorithm (GA), combined with a lowest front-line strategy for parking rectangles on the sheet. The genetic algorithm is introduced to determine packing sequence of rectangles. To avoid premature convergence or falling into local optima, the traditional GA is improved by changing genetic factors according to quality of solutions obtained during evolution. Numerical experiments were conducted to take an evaluation for the proposed algorithm, along with a comparison with another algorithm. The simulation results show that the proposed algorithm has better performance in optimization results and can improve utilization rate of material effectively.
机译:矩形包装问题在现代工业的制造过程中广泛存在,例如切割木材,皮革,金属和纸张等。它也被称为典型的具有几何性质的NP-Complete组合优化问题,它包含两个子问题,矩形的停车问题和排序问题。考虑到该问题的特点,本文提出了一种基于改进遗传算法(GA)的优化算法,并结合了将矩形停放在表格上的最低前线策略。引入遗传算法确定矩形的填充顺序。为了避免过早收敛或落入局部最优,通过根据进化过程中获得的解的质量改变遗传因素来改进传统遗传算法。进行了数值实验,对提出的算法进行了评估,并与另一种算法进行了比较。仿真结果表明,该算法在优化结果上具有较好的性能,可以有效提高材料利用率。

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