Lee Ryan H, Mulder Erwin A B, Hopkins Jonathan B
Mechanical and Aerospace Engineering, University of California, Los Angeles, Los Angeles, CA 90095, USA.
Mechanics of Solids, Surfaces, and Systems, University of Twente, Enschede, Netherlands.
Sci Robot. 2022 Oct 26;7(71):eabq7278. doi: 10.1126/scirobotics.abq7278. Epub 2022 Oct 19.
Aside from some living tissues, few materials can autonomously learn to exhibit desired behaviors as a consequence of prolonged exposure to unanticipated ambient loading scenarios. Still fewer materials can continue to exhibit previously learned behaviors in the midst of changing conditions (e.g., rising levels of internal damage, varying fixturing scenarios, and fluctuating external loads) while also acquiring new behaviors best suited for the situation at hand. Here, we describe a class of architected materials, called mechanical neural networks (MNNs), that achieve such learning capabilities by tuning the stiffness of their constituent beams similar to how artificial neural networks (ANNs) tune their weights. An example lattice was fabricated to demonstrate its ability to learn multiple mechanical behaviors simultaneously, and a study was conducted to determine the effect of lattice size, packing configuration, algorithm type, behavior number, and linear-versus-nonlinear stiffness tunability on MNN learning as proposed. Thus, this work lays the foundation for artificial-intelligent (AI) materials that can learn behaviors and properties.
除了一些生物组织外,很少有材料能够在长时间暴露于意外的环境载荷情况下自主学习并展现出期望的行为。能够在条件变化(例如内部损伤程度增加、固定情况不同以及外部载荷波动)时继续展现先前学习到的行为,同时还能获得最适合当前情况的新行为的材料则更少。在此,我们描述了一类结构化材料,称为机械神经网络(MNN),它通过调整其组成梁的刚度来实现这种学习能力,类似于人工神经网络(ANN)调整其权重的方式。制作了一个示例晶格以展示其同时学习多种机械行为的能力,并进行了一项研究,以确定晶格尺寸、堆积配置、算法类型、行为数量以及线性与非线性刚度可调性对所提出的MNN学习的影响。因此,这项工作为能够学习行为和特性的人工智能(AI)材料奠定了基础。