Autoencoder Based Optimization for Electromagnetics Problems
Keywords:
Deep neural networks, surrogate model, topology optimizationAbstract
In this work a novel approach is presented for topology optimization of electromagnetic devices. In particular a surrogate model based on Deep Neural Networks with encoder-decoder architecture is introduced. A first autoencoder learns to represent the input images that describe the topology, i.e., geometry and materials. The novel idea is to use the low dimensional latent space (i.e., the output space of the encoder) as the search space of the optimization algorithm, instead of using the higher dimensional space represented by the input images. A second neural network learns the relationship between the encoder outputs and the objective function (i.e., an electromagnetic quantity that is crucial for the design of the device) which is calculated by means of a numerical analysis. The calculation time for the optimization is greatly improved by reducing the dimensionality of the search space, and by introducing the surrogate model, whereas the quality of the result is slightly affected.
Downloads
References
T. Sato, K. Watanabe, and H. Igarashi, “Multimaterial topology optimization of electric machines based on normalized Gaussian network,” IEEE Transactions on Magnetics, vol. 51, no. 3, pp. 1-4, Mar. 2015.
B. Xia, Z. Ren, and C. Koh, “Utilizing Kriging surrogate models for multi-objective robust optimization of electromagnetic devices,” in IEEE Transactions on Magnetics, vol. 50, no. 2, pp. 693- 696, Feb. 2014.
A. Khan, V. Ghorbanian, and D. A. Lowther, “Deep Learning for magnetic field estimation,” Proceedings of 2018 IEEE Conference on Electromagnetic Field Computation (CEFC), Hangzhou, China, 2018.
H. Igarashi and H. Sasaki, “Topology Optimization Accelerated by Deep Learning,” Proceedings of 2018 IEEE Conference on Electromagnetic Field Computation (CEFC), Hangzhou, China, 2018.
R. Kawamata, S. Wakao, N. Murata, and Y. Okamoto, “Development of Encoder-Decoder Predicting Search Process of Level-set Method in Magnetic Circuit Design,” Proceedings of Compumag. 2019, Paris, France, July 16-19, 2019.
I. Goodfellow, Y. Bengio, and A. Courville, Deep Learning, vol. 1, Cambridge: MIT Press, 2016.
S. Haykin, Neural Networks, A Comprehensive Foundation, Prentice Hall, 1998
S. Barmada, M. Raugi, and M. Tucci, “An evolutionary algorithm for global optimization based on self-organizing maps,” Engineering Optimization, vol. 48, no. 10, pp. 1740-1758, Jan. 2016.