Optimized Packing Clusters of Objects in a Rectangular Container

A packing (layout) problem for a number of clusters (groups) composed of convex objects (e.g., circles, ellipses, or convex polygons) is considered. The clusters have to be packed into a given rectangular container subject to nonoverlapping between objects within a cluster. Each cluster is represent...

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Veröffentlicht in:Mathematical problems in engineering 2019-01, Vol.2019 (2019), p.1-12
Hauptverfasser: Pankratova, Yu, Litvinchev, Igor, Pankratov, A., Romanova, T., Urniaieva, I.
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container_end_page 12
container_issue 2019
container_start_page 1
container_title Mathematical problems in engineering
container_volume 2019
creator Pankratova, Yu
Litvinchev, Igor
Pankratov, A.
Romanova, T.
Urniaieva, I.
description A packing (layout) problem for a number of clusters (groups) composed of convex objects (e.g., circles, ellipses, or convex polygons) is considered. The clusters have to be packed into a given rectangular container subject to nonoverlapping between objects within a cluster. Each cluster is represented by the convex hull of objects that form the cluster. Two clusters are said to be nonoverlapping if their convex hulls do not overlap. A cluster is said to be entirely in the container if so is its convex hull. All objects in the cluster have the same shape (different sizes are allowed) and can be continuously translated and rotated. The objective of optimized packing is constructing a maximum sparse layout for clusters subject to nonoverlapping and containment conditions for clusters and objects. Here the term sparse means that clusters are sufficiently distant one from another. New quasi-phi-functions and phi-functions to describe analytically nonoverlapping, containment and distance constraints for clusters are introduced. The layout problem is then formulated as a nonlinear nonconvex continuous problem. A novel algorithm to search for locally optimal solutions is developed. Computational results are provided to demonstrate the efficiency of our approach. This research is motivated by a container-loading problem; however similar problems arise naturally in many other packing/cutting/clustering issues.
doi_str_mv 10.1155/2019/4136430
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subjects Algorithms
Clustering
Computational geometry
Containers
Containment
Convexity
Hulls
Layouts
Operations research
Polygons
title Optimized Packing Clusters of Objects in a Rectangular Container
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