While business process automation is proliferating through industries and processes, operations such as job and crew scheduling are still performed manually in the majority of workplaces. The linear programming techniques are not capable of automated production of a job or crew schedule within a reasonable computation time due to the massive sizes of real-life scheduling problems. For this reason, AI solutions are becoming increasingly popular, specifically Evolutionary Algorithms (EAs). However, there are three key limitations of previous studies researching application of EAs for the solution of the scheduling problems. First of all, there is no justification for the selection of a particular genetic operator and conclusion about their...
Thio thesis investigates the use of genetic algorithms (GAs) for solving a range of timetabling and...
This article describes the genetic algorithm used to solve the problem related to the scheduling the...
This research proposes a method to solve the adaptive, multi-objective job shop scheduling problem. ...
In this paper an evolutionary algorithm is proposed for solving the problem of production scheduling...
Scheduling problems arise whenever there is a choice of order in which a number of tasks should be p...
Swarm Intelligence generally refers to a problem-solving ability that emerges from the interaction ...
Manufacturing industry is growing exponentially. The need of using algorithms and computational tech...
[[abstract]]This paper proposes an intelligent evolutionary algorithm that can be applied in the des...
Production scheduling is a notoriously difficult problem. Manufacturing environments contain comple...
Scheduling is an important planning activity in manufacturing systems to help optimise the usage of ...
In every system, where the resources to be allocated to a given set of tasks are limited, one is f...
Production scheduling is a branch of operational research that uses discrete approaches to address a...
Hyper-heuristics have recently emerged as a powerful approach to automate the design of heuristics f...
This literature review examines the increasing use of artificial intelligence (AI) in manufacturing ...
The Workforce Scheduling and Routing Problem (WSRP) is concerned with planning visits of qualified w...
Thio thesis investigates the use of genetic algorithms (GAs) for solving a range of timetabling and...
This article describes the genetic algorithm used to solve the problem related to the scheduling the...
This research proposes a method to solve the adaptive, multi-objective job shop scheduling problem. ...
In this paper an evolutionary algorithm is proposed for solving the problem of production scheduling...
Scheduling problems arise whenever there is a choice of order in which a number of tasks should be p...
Swarm Intelligence generally refers to a problem-solving ability that emerges from the interaction ...
Manufacturing industry is growing exponentially. The need of using algorithms and computational tech...
[[abstract]]This paper proposes an intelligent evolutionary algorithm that can be applied in the des...
Production scheduling is a notoriously difficult problem. Manufacturing environments contain comple...
Scheduling is an important planning activity in manufacturing systems to help optimise the usage of ...
In every system, where the resources to be allocated to a given set of tasks are limited, one is f...
Production scheduling is a branch of operational research that uses discrete approaches to address a...
Hyper-heuristics have recently emerged as a powerful approach to automate the design of heuristics f...
This literature review examines the increasing use of artificial intelligence (AI) in manufacturing ...
The Workforce Scheduling and Routing Problem (WSRP) is concerned with planning visits of qualified w...
Thio thesis investigates the use of genetic algorithms (GAs) for solving a range of timetabling and...
This article describes the genetic algorithm used to solve the problem related to the scheduling the...
This research proposes a method to solve the adaptive, multi-objective job shop scheduling problem. ...