TY - EJOU AU - Deng, Zeyu AU - Liang, Yuan AU - Cheng, Gengdong TI - Multi-Material Topology optimization via Stochastic Discrete Steepest Descent Multi-Valued Integer Programming T2 - The International Conference on Computational \& Experimental Engineering and Sciences PY - 2024 VL - 30 IS - 4 SN - 1933-2815 AB - Compared to single-material optimization, topology optimization of multi-material structures offers a larger design space. It also requires efficient material selection methods to provide guidance for designers. The predominant methods are based on interpolation schemes, which introduce order-dependence issues during the optimization process. This means the sequence in which materials are arranged can significantly impact the optimization outcomes and may lead to notable issues with material gradation. This paper identifies the mathematical essence of multi-material topology optimization as a nonlinear multi-valued integer programming problem. In this paper, we propose a novel stochastic discrete steepest descent multi-valued integer programming algorithm based on the discrete convex analysis theory, which has been successfully applied to challenges in topology optimization, including compliance, frequency, and frequency constraints. Numerical examples demonstrate the effectiveness of the proposed algorithm, showing its ability to generate designs with clear material interfaces, independent of the ordering of candidate materials. This algorithm also shows promise for broader application in large-scale topology optimization problems that involve multi-valued categorical design variables. KW - Topology optimization; discrete variable; multi-material; discrete convex analysis theory DO - 10.32604/icces.2024.012504