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Artificial Neural Network based dynamic modelling of indigenous pneumatic muscle actuators

机译:基于人工神经网络的本地气动肌肉执行器动态建模

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摘要

Robots are increasingly becoming popular medical devices, helping surgeons and practitioners as surgical, rehabilitation or service robots. Robots have been proved commendable in working together with patients and practitioners to achieve the common goal of well-being. Apart from high power to weight ratio and accuracy, robots are expected to be safe and flexible. At The University of Auckland we had earlier developed robots for ankle joint and lower limb rehabilitation using McKibben pneumatic muscle actuators (PMA) which were safe and flexible. However, these actuators had larger response time and hysteresis apart from compromised actuation limits. As a result of our further research we have been able to develop inhouse pleated PMA (PPMA) in our laboratory which show improved response time with low hysteresis. The newly developed actuators have larger actuation as well. In order to cope with the non-linear and transient nature of these actuators, this paper further proposes a new Artificial Neural Network (ANN) based approach. To optimize ANN model parameters a hybrid approach combing back propagation (BP) algorithm with Modified Genetic Algorithm (MGA) is developed. Results show that the hybrid approach is able to model the PPMA behaviour closely.
机译:机器人越来越成为流行的医疗设备,可以帮助外科医生和从业人员成为外科手术,康复或服务机器人。事实证明,机器人可以与患者和从业者一起实现幸福的共同目标。除了高功率重量比和准确性外,机器人还应具有安全性和灵活性。在奥克兰大学,我们早先开发了使用McKibben气动肌肉执行器(PMA)进行安全,灵活的踝关节和下肢康复机器人。但是,这些致动器除了影响致动极限外,还具有更大的响应时间和滞后现象。作为我们进一步研究的结果,我们已经能够在我们的实验室中开发出内部折叠式PMA(PPMA),该方法显示了响应时间短,滞后低的特点。新开发的执行器也具有更大的执行器。为了应对这些执行器的非线性和瞬态特性,本文进一步提出了一种新的基于人工神经网络(ANN)的方法。为了优化ANN模型参数,开发了一种结合了反向传播(BP)算法和改进遗传算法(MGA)的混合方法。结果表明,混合方法能够对PPMA行为进行精确建模。

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