Overview
Optimizing Automotive Manufacturing with Industrial Generative AIZapata |
Functional Applications - Manufacturing Execution Systems (MES) | |
Automotive | |
Additive Manufacturing Manufacturing Process Simulation | |
Operational Impact
The application of the Generator-Enhanced Optimization (GEO) approach led to significant improvements in BMW's plant scheduling optimization. By generating new, previously unconsidered solutions, GEO was able to provide a wider range of potential configurations for BMW to consider. This not only improved the efficiency of the scheduling process but also allowed for greater flexibility in managing production rates and shift schedules. Furthermore, the use of Zapata's computational workflow platform, Orquestra®, enabled a comprehensive benchmarking process, allowing BMW to identify the best algorithm for each problem configuration. This has resulted in a more robust and effective optimization process. | |
Quantitative Benefit
GEO tied or outperformed other state-of-the-art solvers in 71% of problem configurations. | |
GEO outperformed all other solvers in the configuration with the largest solution space. | |
Approximately one million optimization runs were conducted to benchmark performance. | |