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CAPACITY OPTIMIZATION OF CNC MACHINING CENTERS IN HIGH-MIX LOW-VOLUME MANUFACTURING: AN INTEGRATED SIMULATION AND SCHEDULING APPROACH

Laziz AbdulkhamidovDepartment of Mechanical Engineering Almalyk State Technical Institute, Almalyk city, Tashkent region, UzbekistanMamirov SherzodDepartment of Mechanical Engineering Almalyk State Technical Institute, Almalyk city, Tashkent region, Uzbekistan
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High-mix low-volume (HMLV) manufacturing environments face persistent challenges in achieving high utilisation of CNC machining centres while simultaneously meeting delivery due-dates for diverse, low-batch-size orders. This dissertation presents an integrated framework combining discrete-event simulation (DES), analytical capacity modelling, and a modified Genetic Algorithm (GA) scheduling optimiser to maximise throughput and minimise makespan in a real-world HMLV job shop equipped with seven CNC machining centres of varying capability tiers. A capacity model based on Overall Equipment Effectiveness (OEE) and utilisation rate analysis was developed and calibrated against 18 months of production data from a precision parts manufacturer in Tashkent, Uzbekistan. Bottleneck machines were identified using the Theory of Constraints (TOC) methodology, revealing that two 5-axis centres (OEE = 61.3%) were limiting shop-floor throughput by an estimated 23%. A DES model built in Siemens Tecnomatix Plant Simulation was validated against historical key performance indicators (KPIs) within ±4.8% for throughput and ±6.1% for average flow time. The GA scheduler, operating on a 48- hour rolling horizon, reduced average job tardiness by 38.4%, increased average machining centre utilisation from 67.2% to 81.9%, and improved OEE of bottleneck centres from 61.3% to 76.8% through optimised preventive maintenance windows and setup-time reduction strategies. Annual capacity gain equivalent to 1.7 additional machine-shifts per day was demonstrated without capital investment. The framework provides a transferable decision-support tool for HMLV manufacturers seeking productivity improvement through data-driven scheduling.

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