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HAPE3D—a new constructive algorithm for the 3D irregular packing problem 被引量:4
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作者 Xiao LIU Jia-min LIU +1 位作者 An-xi CAO Zhuang-le YAO 《Frontiers of Information Technology & Electronic Engineering》 SCIE EI CSCD 2015年第5期380-390,共11页
We propose a new constructive algorithm, called HAPE3 D, which is a heuristic algorithm based on the principle of minimum total potential energy for the 3D irregular packing problem, involving packing a set of irregul... We propose a new constructive algorithm, called HAPE3 D, which is a heuristic algorithm based on the principle of minimum total potential energy for the 3D irregular packing problem, involving packing a set of irregularly shaped polyhedrons into a box-shaped container with fixed width and length but unconstrained height. The objective is to allocate all the polyhedrons in the container, and thus minimize the waste or maximize profit. HAPE3 D can deal with arbitrarily shaped polyhedrons, which can be rotated around each coordinate axis at different angles. The most outstanding merit is that HAPE3 D does not need to calculate no-fit polyhedron(NFP), which is a huge obstacle for the 3D packing problem. HAPE3 D can also be hybridized with a meta-heuristic algorithm such as simulated annealing. Two groups of computational experiments demonstrate the good performance of HAPE3 D and prove that it can be hybridized quite well with a meta-heuristic algorithm to further improve the packing quality. 展开更多
关键词 3D packing problem layout design SIMULATION OPTIMIZATION Constructive algorithm META-HEURISTICS
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求解装填布局问题的膨胀方法 被引量:5
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作者 陆一平 查建中 《计算机学报》 EI CSCD 北大核心 2001年第10期1077-1084,共8页
介绍了膨胀装填布局的思想原理与算法实现 .膨胀装填布局通过对缩小了的装填物体系统地施加膨胀 -排斥操作而实现被装填物体布局位置的自动产生 ,具有直观性强、聚集性好、几何形状适应性广、便于工程推广等优点 .作为算例 ,使用膨胀装... 介绍了膨胀装填布局的思想原理与算法实现 .膨胀装填布局通过对缩小了的装填物体系统地施加膨胀 -排斥操作而实现被装填物体布局位置的自动产生 ,具有直观性强、聚集性好、几何形状适应性广、便于工程推广等优点 .作为算例 ,使用膨胀装填算法对几种与平面圆相关的装填布局问题给出了计算结果 . 展开更多
关键词 装填布局问题 膨胀方法 工程设计 CAD
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Multi-objective layout optimization of a satellite module using the Wang-Landau sampling method with local search 被引量:2
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作者 Jing-fa LIU Liang HAO +3 位作者 Gang LI Yu XUE Zhao-xia LIU Juan HUANG 《Frontiers of Information Technology & Electronic Engineering》 SCIE EI CSCD 2016年第6期527-542,共16页
The layout design of satellite modules is considered to be NP-hard. It is not only a complex coupled system design problem but also a special multi-objective optimization problem. The greatest challenge in solving thi... The layout design of satellite modules is considered to be NP-hard. It is not only a complex coupled system design problem but also a special multi-objective optimization problem. The greatest challenge in solving this problem is that the function to be optimized is characterized by a multitude of local minima separated by high-energy barriers. The Wang-Landau(WL) sampling method, which is an improved Monte Carlo method, has been successfully applied to solve many optimization problems. In this paper we use the WL sampling method to optimize the layout of a satellite module. To accelerate the search for a global optimal layout, local search(LS) based on the gradient method is executed once the Monte-Carlo sweep produces a new layout. By combining the WL sampling algorithm, the LS method, and heuristic layout update strategies, a hybrid method called WL-LS is proposed to obtain a final layout scheme. Furthermore, to improve significantly the efficiency of the algorithm, we propose an accurate and fast computational method for the overlapping depth between two objects(such as two rectangular objects, two circular objects, or a rectangular object and a circular object) embedding each other. The rectangular objects are placed orthogonally. We test two instances using first 51 and then 53 objects. For both instances, the proposed WL-LS algorithm outperforms methods in the literature. Numerical results show that the WL-LS algorithm is an effective method for layout optimization of satellite modules. 展开更多
关键词 packing layout design Satellite module Wang-Landau algorithm
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