1. Introduction
With the rapid development of the mechanical engineering, automotive, and aerospace fields, practical engineering has put forward increasingly high requirements for the property of materials and structures. How to better achieve the integral design of material/structure and function [
1,
2] has been proposed by scholars in multiple fields, such as materials, mechanics, mathematics, and physics. Inspired by the natural biological structure, people have designed a large number of porous materials with high specific stiffness/strength, light weight, impact resistance, energy absorption, insulation, noise reduction, electromagnetic shielding, and other multifunctional characteristics by imitating the macro/micro multiscale porous configurations [
3,
4] of biological materials and structures [
5,
6,
7]. However, these porous structures exhibit poor mechanical properties, and they tend to be ineffective when applied individually. These materials are often used as core layers in combination with metal or fiber panels to form sandwich structures with excellent structural properties and design ability. The panels provide strong bending and crushing resistance and mainly bear the effects of in-plane loads and bending moments. The core layer provides the normal stiffness and strength of the panel, withstands the shear stress generated by the compressive and transverse forces, and supports the panel to ensure its stability [
8,
9]. The emergence of this structure has greatly expanded the application range of lightweight porous materials. With the increasing maturity of additive manufacturing technology, it is possible to prepare various types of porous materials and structures with complex topological configurations, which have a broad range of applications in aerospace, high-speed trains, large transport equipment, and other military and civilian fields [
10,
11].
Topology optimization technology has been widely used in various industries [
12,
13]. Essentially, it is a numerical iterative process, which distributes materials in a fixed design reference domain to find the best material layout and optimize the objective function for a given set of boundary conditions. In order to design materials and structures that combine a variety of excellent properties, researchers in this field have developed numerous distinctive topology optimization algorithms, such as the Solid Isotropic Material with Penalization (SIMP) [
14], the Evolutionary Structural Optimization (ESO) [
15], Bi-directional Evolutionary Structural Optimization (BESO) [
16,
17], the Moving Morphable Component (MMC) [
18], the Feature-drive Method [
19], the Level Set Method (LSM) [
20,
21], the Independent Continuous Mapping Method (ICM) [
22], the Feasible Domain Adjustment Method (FDM) [
23], etc. Among them, the BESO method is widely used for optimizing materials and structures due to its simplicity and stable optimization process [
24,
25].
The micro topological configuration of porous materials is one of the key factors that affects the macro mechanical behavior of the materials and the structures. Compared with the parametric optimization and the shape optimization in a given design domain, the topology optimization has a larger design domain, which is a key and hot topic in the field of sandwich structure design [
26]. With the gradual improvement of multiscale structural topology optimization design methods, it is possible to consider the heterogeneity of microscale materials in the pursuit of high-performance macrostructures. The ideal multiscale design should be a structure with optimal topology at both macroscales and microscales [
27]. Therefore, the influence of the microscopic properties on the macroscopic properties must be considered in the optimization process. For sandwich structures, because the size of the characterizing element of the core layer is much smaller than the whole structure, the influence of the properties of the core layer structure on the macrostructure’s performance can be determined by using homogenization theory [
28,
29]. Therefore, the macrostructural/microstructural design variables can be concentrated into one system to achieve the multiscale optimal topological design of materials and structures [
30].
However, the direct use of homogenization methods to calculate the effects of microstructures on the properties of macrostructures requires a large amount of computational resources. The topological configurations obtained based on homogenization methods will contain transition regions, which lead to unclear structures that are not conducive to the later fabrication and do not reflect the scale effects of the characterized elements. To solve these problems, they can be solved by improving algorithms based on homogenization methods. Zhang et al. [
26] improved the computational efficiency using Kriging models based on homogenization methods. Sivapuram et al. [
31] proposed a new multiscale optimization method to reduce the number of microstructures and optimize both materials and structures, which greatly saved the computational costs. Luo et al. [
32,
33] investigated the design and optimization of the microstructure of honeycomb composites based on the level set method. The optimization of multiple microstructures could largely improve the structural properties, but the interconnection between different microstructures is an essential issue. Wang et al. [
34] focused on the interconnection between the multiple microstructures within the optimized structure. In order to obtain a clear configuration of the structure, Liu et al. [
35] employed the penalty algorithms on the macroscales and the microscales, respectively, to carry out topology optimization design for the truss-like microstructure materials. The research found that the microscopic optimal topology configuration exhibited a truss-like structure. Wang et al. [
36] investigated the design of gradient lattice structures with optimized fine-scale structures in additive manufacturing. The results showed the superior stiffness properties of the optimized graded lattice structure compared to the baseline design with uniform mesostructures. Liang et al. [
26] applied multiscale optimization to the honeycomb sandwich structures, integrated the design of panel and core structures, and verified the effectiveness and excellence of the optimization results. Sigmund [
37] used a projection method to obtain high-resolution, manufacturable structures from efficient and coarse-scale homogenization-based topology optimization results. The presented approach bridges coarse and fine scales such that the complex periodic microstructures can be represented by a smooth and continuous lattice on the fine mesh. Jiao Jia et al. [
38] proposed a two-scale optimization model for heterogeneous structures with non-uniform porous cells at the microscale based on the HCA and extended it to 3D structural design. Guo et al. [
39] used a 3D convolutional neural network to conduct 3D multiscale topology optimization, which saved computing costs and increased design flexibility.
The topological methods pursue the optimality of the results excessively, which usually makes the optimized structures precise and complex. Due to the existence of a microstructure, it is difficult to prepare the optimized results of the multiscale topology optimization structures using traditional processing methods. Additive manufacturing technology [
11,
40], through its integrated molding process, can perfectly present the results of topology optimization. The combination of topology optimization technology and additive manufacturing technology has overturned the limitations of traditional production technology, which opens up the design field and pushes the development of manufacturing. Many scholars have also proposed corresponding topology optimization algorithms to improve the accuracy of additive manufacturing [
41]. Yu et al. present a hybrid topology optimization method for multipatch fused deposition modeling (FDM) 3D printing to address the process-induced material anisotropy [
42]. Bi et al. studied the topology optimization of 3D concrete printing with various manufacturing constraints [
43].
In summary, most of the literature on multiscale concurrent topology optimization algorithms is based on different optimization theories. The optimization processes and the ideas between different algorithms vary greatly, and the optimized results are not comparable, making it difficult to intuitively obtain the characteristics of various macro and microstructures. Meanwhile, due to the complexity of multiscale precision specimen manufacturing and the enormous workload of simulation calculations, further evaluation and comparison of the obtained optimized structures are usually not carried out. Therefore, based on the BESO method, combined with homogenization theory and periodic boundary conditions, this study proposes a simple and efficient optimization algorithm framework using the ABAQUS(6.14)-MATLAB(2019b) integrated optimization platform, which can achieve three different macro and micro optimizations (M, MM, MMLG). Different optimized specimens were prepared using high-precision 3D printing technology and compared through three-point bending tests. Simultaneously, finite element simulation was conducted using ABAQUS to analyze the deformation process of the macrostructure and the deformation mechanism of the microstructure, verifying the effectiveness and correctness of the optimization results. Finally, the algorithm was extended to the optimization of a sandwich cantilever beam and a 3D sandwich fully clamped beam.
6. Conclusions
In this paper, with the maximum structural stiffness as the optimization objective, a multiscale topology optimization method with the framework of BESO is established. The information interaction between MATLAB and ABAQUS is also used to simplify the optimization process to improve the efficiency of operations. From the optimization results, the overall optimization process is stable, and the optimization structure is clear and reasonable. The three multiscale optimized structures (the MM structure, the MMG structure, and the MMLG structure), as well as the M structure and the S structure as the comparison groups, were printed using a high-precision 3D printer. Static three-point bending experiments and finite element numerical simulations were also performed on all specimens.
Based on the experimental and numerical simulation results, the deformation mechanism and the mechanical properties of the five structures were analyzed, and the following conclusions were obtained. Under the same volume fraction and loading conditions, the stiffness value of the MMG structure is only smaller than that of the M structure and larger than that of the other structures. The MMLG structure has superior ultimate load-bearing capacity and energy absorption characteristics. The MM structure composed of a single microstructure has a lower load-bearing capacity and energy absorption capacity than the two gradient structures, and it is better than the comparison structure. This also demonstrates that compared with the traditional macrostructure topology optimization methods, the multiscale topology optimization method in this paper provides a different new design idea so that materials can be allocated in different ways. By increasing the consideration of the microstructure, multiscale concurrent topology optimization opens up a wider design space. The structure can be further optimized and improved.
Finally, through multiscale concurrent topology optimization of the sandwich cantilever beam under a uniform distributed load and the 3D sandwich fully clamped beam under a regional, uniform, distributed load, the correctness and general applicability of the proposed optimization method are demonstrated.
However, this method has its shortcomings as well, such as high computational costs and the existence of an optimized structure with uneven, jagged edges. We will combine the actual application of engineering and further research on the existing problems.