Raeisinezhad Mahsa, Pagliocca Nicholas, Koohbor Behrad, Trkov Mitja
Department of Mechanical Engineering, Rowan University, Glassboro, NJ, United States.
Front Robot AI. 2021 May 7;8:639102. doi: 10.3389/frobt.2021.639102. eCollection 2021.
We present two frameworks for design optimization of a multi-chamber pneumatic-driven soft actuator to optimize its mechanical performance. The design goal is to achieve maximal horizontal motion of the top surface of the actuator with a minimum effect on its vertical motion. The parametric shape and layout of air chambers are optimized individually with the firefly algorithm and a deep reinforcement learning approach using both a model-based formulation and finite element analysis. The presented modeling approach extends the analytical formulations for tapered and thickened cantilever beams connected in a structure with virtual spring elements. The deep reinforcement learning-based approach is combined with both the model- and finite element-based environments to fully explore the design space and for comparison and cross-validation purposes. The two-chamber soft actuator was specifically designed to be integrated as a modular element into a soft robotic pad system used for pressure injury prevention, where local control of planar displacements can be advantageous to mitigate the risk of pressure injuries and blisters by minimizing shear forces at the skin-pad contact. A comparison of the results shows that designs achieved using the deep reinforcement based approach best decouples the horizontal and vertical motions, while producing the necessary displacement for the intended application. The results from optimizations were compared computationally and experimentally to the empirically obtained design in the existing literature to validate the optimized design and methodology.
我们提出了两个用于多腔气动驱动软致动器设计优化的框架,以优化其机械性能。设计目标是在对致动器垂直运动影响最小的情况下,实现致动器顶面的最大水平运动。气腔的参数化形状和布局分别采用萤火虫算法和基于模型的公式化与有限元分析的深度强化学习方法进行优化。所提出的建模方法扩展了用虚拟弹簧单元连接的锥形和加厚悬臂梁结构的解析公式。基于深度强化学习的方法与基于模型和有限元的环境相结合,以充分探索设计空间,并用于比较和交叉验证。双腔软致动器专门设计为作为模块化元件集成到用于预防压力性损伤的软机器人垫系统中,在该系统中,平面位移的局部控制有利于通过最小化皮肤与垫接触处的剪切力来降低压力性损伤和水泡的风险。结果比较表明,基于深度强化学习方法实现的设计能最好地解耦水平和垂直运动,同时为预期应用产生所需的位移。通过计算和实验将优化结果与现有文献中凭经验获得的设计进行比较,以验证优化设计和方法。