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Simulation-based GA Optimization for Production Planning. Juan Esteban Díaz Leiva Dr Julia Handl. Bioma 2014 September 13, 2014. Business objectives. Production Planning. Production levels. Allocation of resources. Production Plan. Experience & “Sixth sense”.
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Simulation-based GA Optimization for Production Planning Juan Esteban Díaz Leiva Dr Julia Handl Bioma 2014 September13, 2014
Business objectives ProductionPlanning • Production levels • Allocation of resources • Production Plan
Experience • & • “Sixth sense” ProductionPlanning • Inappropriate methods • Lack of appropriate instrument
Simulation • DES • Optimization • GA Simulation-based Optimization Aplicable solution
Supportdecisionmaking Objective • Feasibility • Production • Planning • Simulation-basedoptimization • Applicablility Uncertainty & Real-lifecomplexity • Robustness
Simulation-based Optimization Model Figure 1. Order processing subsystem for work centre .
Simulation-based Optimization Model Figure 2. Production subsystem for work centre . Figure 3. Repair service station of work centre .
Simulation-based Optimization Model : subject to : : number of replications : fitness function value : vector of decision variables expected sum of backorders and inventory costs
Simulation-based Optimization Model where :demand
Simulation-based Optimization Model Requirement of sub-products : quantity available of sub-product :amount required of sub-product to produce one lot in process
Simulation-based Optimization Model • GA (MI-LXPM) [2] • real coded • Laplace crossover • power mutation • tournament selection • truncation procedure for integer restrictions • parameter free penalty approach [1] [1] K. Deb. An efficient constraint handling method for genetic algorithms. Computer methods in applied mechanics and engineering, 186(2):311-338, 2000. [2] K. Deep, K. P. Singh, M. Kansal, and C. Mohan. A real coded genetic algorithm for solving integer and mixed integer optimization problems. Applied Mathematics and Computation, 212(2):505-518, 2009.
Results Original model Figure 4. Best, mean and worst fitness value of the population at each iteration.
Results Model modifications Figure 5. Order processing subsystem for work centre .
Results Model modifications Figure 6. Production subsystem for work centre .
Results Profit maximization Figure 7. Best, mean and worst fitness value of the population at each iteration (time: 8.17 h).
Results • ILP • deterministic • Simulation-based optimization • uncertainty • CDF • CDF • Stochastic Simulation
Results Profit maximization Figure 8. CDFs of profit obtained through stochastic simulation.
Conclusions • Production plan • production levels and allocation of work centres • Process uncertainty • delays • Real life complexity • no complete analytic formulation • Better performance of solutions • stochastic simulation
Post-doc PositionConstrained optimization (applied in the area of protein structure prediction)Start date: November 2014in collaboration between:Computer Sciences (Joshua Knowles), Faculty of Life Sciences (Simon Lovell) and MBS (Julia Handl).Info: j.handl@manchester.ac.uk
Thank youSeptember 13, 2014Juan Esteban Diaz LeivaDr Julia Handl