Publication | Closed Access
Improved Artificial Immune System Algorithm for Type-2 Fuzzy Flexible Job Shop Scheduling Problem
152
Citations
59
References
2020
Year
Fuzzy LogicEngineeringFuzzy ComputingFlexible Job ShopHigh LevelIntelligent OptimizationArtificial Immune SystemComputer EngineeringRobust Fuzzy ProgrammingSystems EngineeringIais AlgorithmFuzzy OptimizationImmunological ComputingComputer ScienceCombinatorial OptimizationOperations Research
In practical applications, particularly in flexible manufacturing systems, there is a high level of uncertainty. A type-2 fuzzy logic system (T2FS) has several parameters and an enhanced ability to handle high levels of uncertainty. This article proposes an improved artificial immune system (IAIS) algorithm to solve a special case of the flexible job shop scheduling problem (FJSP), where the processing time of each job is a nonsymmetric triangular interval T2FS (IT2FS) value. First, a novel affinity calculation method considering the IT2FS values is developed. Then, four problem-specific initialization heuristics are designed to enhance both quality and diversity. To enhance the exploitation abilities, six local search approaches are conducted for the routing and scheduling vectors, respectively. Next, a simulated annealing method is embedded to accept antibodies with low affinity, which can enhance the exploration abilities of the algorithm. Moreover, a novel population diversity heuristic is presented to eliminate antibodies with high crowding values. Five efficient algorithms are selected for a detailed comparison, and the simulation results demonstrate that the proposed IAIS algorithm is effective for IT2FS FJSPs.
| Year | Citations | |
|---|---|---|
Page 1
Page 1