Efficient optimization of illumination systems with differential raytracing in combination with particle swarms and evolution algorithms
Institute of Optics, Information and Photonics, University of Erlangen-Nuremberg
Oliver.Stolz@physik.uni-erlangen.de
Abstract
The fast and efficient optimization is of great importance for today’s optical illumination systems design. Contrary to the merit function based on the Monte-Carlo raytracing technique, a new merit function based on differential ray tracing is derived. As the differential approach works noiseless the resulting merit function excels through a smooth and continuous form. Hence, differential raytracing possesses great potential to improve the optimization efficiency by reducing computational time while concurrently showing a constant optimization quality. We review the approaches implemented in the optical design software RAYTRACE using the example of optimizing the intensity distribution in a square target plane to be homogeneously. Additionally, we present comparative calculations between deterministic (e.g. gradient methods) and stochastical optimization techniques (e.g. Monte-Carlo method, simulated annealing, evolution algorithms, particle swarm optimization) employing the merit function based on differential raytracing.
Keywords
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