A dynamic neighborhood based tabu search algorithm for real-world flight instructor scheduling problems

A dynamic neighborhood based tabu search algorithm for real-world flight instructor scheduling problems

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Article ID: iaor2007299
Country: Netherlands
Volume: 169
Issue: 3
Start Page Number: 978
End Page Number: 993
Publication Date: Mar 2006
Journal: European Journal of Operational Research
Authors: , , ,
Keywords: heuristics: tabu search, heuristics: local search, personnel & manpower planning, scheduling
Abstract:

The multi-objective flight instructor scheduling problem is an optimization problem that schedules instructors to teach a set of pilot training events. The objectives of the problem are to minimize labor cost, maximize workload consistency and maximize flight instructor satisfaction of their assignments. The problem is further complicated by various hard and soft constraints. We study a multi-objective cost function and convert it to a scalar-weighted objective function using a priori weighting scheme. We then design an efficient dynamic neighborhood based tabu search meta-heuristic to solve the problem. The algorithm exploits the special properties of different types of neighborhood moves. We also address issues of solution domination, tabu short-term memory, dynamic tabu tenure and aspiration rule. The application of the algorithm in a major US airline carrier is reported and the results show that our algorithm achieves significant benefits in practice.

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