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Open AccessJournal ArticleDOI

Planning and Scheduling in Additive Manufacturing

Filip Dvorak, +2 more
- 07 Sep 2018 - 
- Vol. 21, Iss: 62, pp 40-52
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TLDR
This paper investigates a problem in which a set of parts with unique configurations and deadlines must be printed by aSet of machines while minimizing time and satisfying deadlines, bringing together bin packing, nesting, nesting (two-dimensional bin packing), job shop scheduling, and constraints satisfaction.
Abstract
Recent advances in additive manufacturing (AM) and 3D printing technologies have led to significant growth in the use of additive manufacturing in industry, which allows for the physical realization of previously difficult to manufacture designs. However, in certain cases AM can also involve higher production costs and unique in-process physical complications, motivating the need to solve new optimization challenges. Optimization for additive manufacturing is relevant for and involves multiple fields including mechanical engineering, materials science, operations research, and production engineering, and interdisciplinary interactions must be accounted for in the optimization framework. In this paper we investigate a problem in which a set of parts with unique configurations and deadlines must be printed by a set of machines while minimizing time and satisfying deadlines, bringing together bin packing, nesting (two-dimensional bin packing), job shop scheduling, and constraints satisfaction. We first describe the real-world industrial motivation for solving the problem. Subsequently, we encapsulate the problem within constraints and graph theory, create a formal model of the problem, discuss nesting as a subproblem, and describe the search algorithm. Finally, we present the datasets, the experimental approach, and the preliminary results.

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Journal ArticleDOI

MILP models to minimise makespan in additive manufacturing machine scheduling problems

TL;DR: This paper focuses on the scheduling problem of single and multiple AM machines and proposes mathematical models for optimisation and mixed-integer linear programming models allocate parts into jobs to be produced on AM machines to minimise makespan.
Journal ArticleDOI

Towards an automated decision support system for the identification of additive manufacturing part candidates

TL;DR: A decision support system (DSS) framework for automatically determining the candidacy of a part or assembly for AM applications is proposed based on machine learning (ML) and carefully selected candidacy criteria, which provides a promising solution for lowering the requirements of non-AM experts to find suitable AM candidates.
Journal ArticleDOI

A dynamic order acceptance and scheduling approach for additive manufacturing on-demand production

TL;DR: This paper introduces the dynamic OAS problem in on-demand production with PBF systems and aims to provide an approach for manufacturers to make decisions simultaneously on the acceptance and scheduling of dynamic incoming orders to maximize the average profit-per-unit time during the whole makespan.
Journal ArticleDOI

Nesting and scheduling problems for additive manufacturing: A taxonomy and review

TL;DR: In this article, an alternative taxonomy based on three dimensions: Part, Build, and AM Machine is proposed to provide a holistic view covering both nesting and scheduling issues in additive manufacturing.
Journal ArticleDOI

The Level of the Additive Manufacturing Technology Use in Polish Metal and Automotive Manufacturing Enterprises

TL;DR: In this paper, the authors used literature studies to determinate the AM technology used within the production processes in the automotive and metal industry companies (so called dimensions) and a questionnaire survey, which was carried out on a sample of 250 Polish Metal and Automotive Manufacturing Enterprises.
References
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Book

Elements of information theory

TL;DR: The author examines the role of entropy, inequality, and randomness in the design of codes and the construction of codes in the rapidly changing environment.
Book

Scheduling: Theory, Algorithms, and Systems

TL;DR: Scheduling will serve as an essential reference for professionals working on scheduling problems in manufacturing and computing environments and Graduate students in operations management, operations research, industrial engineering and computer science will find the book to be an accessible and invaluable resource.
Book ChapterDOI

Optimization and Approximation in Deterministic Sequencing and Scheduling: a Survey

TL;DR: In this article, the authors survey the state of the art with respect to optimization and approximation algorithms and interpret these in terms of computational complexity theory, and indicate some problems for future research and include a selective bibliography.
Book

Manufacturing Engineering and Technology

TL;DR: The Manufacturing Engineering & Technology, 6/e, the authors provides a mostly qualitative description of the science, technology, and practice of manufacturing, including detailed descriptions of manufacturing processes and the manufacturing enterprise.
Book

Constraint Processing

Rina Dechter
TL;DR: Rina Dechter synthesizes three decades of researchers work on constraint processing in AI, databases and programming languages, operations research, management science, and applied mathematics to provide the first comprehensive examination of the theory that underlies constraint processing algorithms.
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