The Workforce Scheduling and Routing Problem refers to the assignment of personnel to visits across various geographical locations. Solving this problem demands tackling numerous scheduling and routing constraints while aiming to minimise total operational cost. One of the main obstacles in designing a genetic algorithm for this highly-constrained combinatorial optimisation problem is the amount of empirical tests required for parameter tuning. This paper presents a genetic algorithm that uses a diversity-based adaptive parameter control method. Experimental results show the effectiveness of this parameter control method to enhance the performance of the genetic algorithm. This study makes a contribution to research on adaptive evolutionary...
Job Shop Scheduling is currently one of the most addressed planning and scheduling optimization prob...
This paper proposes an adaptive genetic algorithm for distributed scheduling problems in multi-facto...
This paper presents an adaptive evolutionary approach incorporating a hybrid genetic algorithm (GA) ...
The Workforce Scheduling and Routing Problem refers to the assignment of personnel to visits across ...
The Workforce Scheduling and Routing Problem refers to the assignment of personnel to visits, across...
The Workforce Scheduling and Routing Problem refers to the assignment of personnel to visits across ...
The Workforce Scheduling and Routing Problem (WSRP) is described as the assignment of personnel to v...
The Workforce Scheduling and Routing Problem refers to the assignment of personnel to visits, across...
The Workforce Scheduling and Routing Problem (WSRP) is a combinatorial optimisation problem that inv...
The Workforce Scheduling and Routing Problem (WSRP) is concerned with planning visits of qualified w...
Selection and scheduling are an important topic in production systems. To tackle the order acceptanc...
A Genetic Algorithm (GA) is applied to an employee scheduling optimization problem with varied, comp...
This research proposes a method to solve the adaptive, multi-objective job shop scheduling problem. ...
Proceedings of the International Conference on Tools with Artificial Intelligence176-183PCTI
To avoid premature and guarantee the diversity of the population, an adaptive immune genetic algorit...
Job Shop Scheduling is currently one of the most addressed planning and scheduling optimization prob...
This paper proposes an adaptive genetic algorithm for distributed scheduling problems in multi-facto...
This paper presents an adaptive evolutionary approach incorporating a hybrid genetic algorithm (GA) ...
The Workforce Scheduling and Routing Problem refers to the assignment of personnel to visits across ...
The Workforce Scheduling and Routing Problem refers to the assignment of personnel to visits, across...
The Workforce Scheduling and Routing Problem refers to the assignment of personnel to visits across ...
The Workforce Scheduling and Routing Problem (WSRP) is described as the assignment of personnel to v...
The Workforce Scheduling and Routing Problem refers to the assignment of personnel to visits, across...
The Workforce Scheduling and Routing Problem (WSRP) is a combinatorial optimisation problem that inv...
The Workforce Scheduling and Routing Problem (WSRP) is concerned with planning visits of qualified w...
Selection and scheduling are an important topic in production systems. To tackle the order acceptanc...
A Genetic Algorithm (GA) is applied to an employee scheduling optimization problem with varied, comp...
This research proposes a method to solve the adaptive, multi-objective job shop scheduling problem. ...
Proceedings of the International Conference on Tools with Artificial Intelligence176-183PCTI
To avoid premature and guarantee the diversity of the population, an adaptive immune genetic algorit...
Job Shop Scheduling is currently one of the most addressed planning and scheduling optimization prob...
This paper proposes an adaptive genetic algorithm for distributed scheduling problems in multi-facto...
This paper presents an adaptive evolutionary approach incorporating a hybrid genetic algorithm (GA) ...