New Iterative Mip-Based Neighborhood Search Heuristics For Single And Parallel Machine Capacitated Lot-Sizing And Scheduling
Abstract
The primary objective of this study was to develop engineering-based, high-quality
solutions to the challenging single-machine batch sizing and scheduling problem with
sequence-dependent preparation time and cost. Heuristics for general use. Matching
metaheuristics and mixed integer programming. Experience is required to develop
competitive solutions to this NP-hard problem, as commercial solvers cannot even manage
medium-sized versions of it. On the basis of the MIP formulas, construction, development,
and research experiences are generated. As demonstrated by a series of mathematically
calculated experiments, the fundamental method, a local search test based on random MIPs,
is successful and efficient for solving medium to large problems.