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Benchmarks for basic scheduling problems

TLDR
This paper proposes 260 randomly generated scheduling problems whose size is greater than that of the rare examples published, and the objective is the minimization of the makespan.
About
This article is published in European Journal of Operational Research.The article was published on 1993-01-22 and is currently open access. It has received 2173 citations till now. The article focuses on the topics: Flow shop scheduling & Job shop scheduling.

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Machine Learning at the service of Meta-heuristics for solving Combinatorial Optimization Problems: A state-of-the-art

TL;DR: This paper provides a review on the use of machine learning techniques in the design of different elements of meta-heuristics for different purposes including algorithm selection, fitness evaluation, initialization, evolution, parameter setting, and cooperation.
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Effective heuristics for the blocking flowshop scheduling problem with makespan minimization

TL;DR: In this article, two simple constructive heuristics, namely weighted profile fitting (wPF) and PW, are proposed by combining the PF, wPF, and PW with the enumeration procedure of the Nawaz-Enscore-Ham (NEH) heuristic.
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Flow shop rescheduling under different types of disruption

TL;DR: In this paper, the authors consider flow shop layouts that have seldom been studied in the rescheduling literature, and they generate and employ three types of disruption that interrupt the original schedules simultaneously.
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Recent Research Trends in Genetic Algorithm Based Flexible Job Shop Scheduling Problems

TL;DR: This article presents a comprehensive literature review of the FJSSPs solved using the GA and includes the inclusion of the hybrid GA (hGA) techniques used in the solution of the problem.
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A hybrid TP+PLS algorithm for bi-objective flow-shop scheduling problems

TL;DR: The analysis shows without ambiguity that the proposed algorithm is a new state-of-the-art algorithm for the bi-objective permutation flow-shop problems studied in this paper.
References
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Journal ArticleDOI

Tabu Search—Part II

TL;DR: The elements of staged search and structured move sets are characterized, which bear on the issue of finiteness, and new dynamic strategies for managing tabu lists are introduced, allowing fuller exploitation of underlying evaluation functions.
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OR-Library: Distributing Test Problems by Electronic Mail

TL;DR: A system (OR-Library) that distributes test problems by electronic mail (e-mail) that has available test problems drawn from a number of different areas of operational research.
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A Guide to Simulation.

TL;DR: Despite the brevity of the book, its mathematical notation, and the problems which it poses without solutions, the textbook is imbued with a feeling for theitty-gritty practical aspects of simulation.
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A Computational Study of the Job-Shop Scheduling Problem

TL;DR: The optimization procedure, combining the heuristic method and the combinatorial branch and bound algorithm, solved the well-known 10×10 problem of J. F. Thomson in under 7 minutes of computation time on a Sun Sparcstation 1.
Related Papers (5)
Frequently Asked Questions (7)
Q1. What have the authors contributed in "Basic scheduling problems" ?

In this paper, the authors propose 260 scheduling problems whose size is greater than that of the rare examples published. The types of problems that the authors propose are: the permutation flow shop, the job shop and the open shop scheduling problems. 

let us mention5 that an iteration of taboo search needs about 4.10-6.n2.m seconds on a “Silicon Graphics” personal workstation (10 Mips). 

The machine Mij on which the jth operation of job i has to be performed is given by the following procedure :0) Mij := j (1 L Q M P 1) For i = 1 to nFor j = 1 to m Swap Mij and MiU[j,m]Let us note the use of another initial seed for the choice of the machines : Machine seed. 

The proportion of problems for which the authors found a solution for which the makespan was equal to the lower bound (or equal to the lower bound augmented by 2% for the 500-job 20-machine problems). 

This implementation uses only 32-bit integers and provides a uniformly distributed sequence of numbers between 0 and 1 (not contained) :3 0) Initial seed and X0 (0 < X0 < 231- 1) constants : a = 16 807, b = 127 773, c = 2 836, m = 231 - 11) Modification of k := Xi/b the seed : Xi+1 := a(Xi mod b) - kcIf Xi+1 < 0 then let Xi+1 := Xi+1 + m2) New value of the seed : Xi+1 Current value of the generator : Xi+1/mBelow, the authors shall denote by U(0,1) the pseudorandom number that this generator provides. 

The random number generator Let us recall the implementation of the linear congruential generator the authors have used which is based on the recursive formula Xi+1 = (16 807 Xi) mod (231 - 1). 

In order to implement the integer random procedure only with 32-bit integers, the problems have been chosen in such a way that one never has to deal with a seed X such that :a + P DE; )1( +−⋅ ≠ a + )1( +−