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Sensing Information Forecasting for Power Assist Walking Legs Based on Time Series Analysis

机译:基于时间序列分析的助力步行腿传感信息预测

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The Power Assist Walking Legs (PAWL) is an autonomous exoskeleton robot which is designed for assisting activities of daily life. In order to improve the dynamic response of the exoskeleton robot, a novel sensing information forecasting algorithm is proposed based on the time series analysis. The algorithm is built up with the autoregressive (AR) model, the recursive least square (RLS) method and the final prediction error (FPE) criterion. The method of RLS is used to make the on-line parameters estimation, and the FPE criterion is used to select the order of AR model. Because of the real-time requirement, the forecasting algorithm is designed to be used on-line and to make predictions of force sensor's information to ensure the real-time quality of the whole system. According to requirements, the algorithm can be categorized into two types: one step forecasting method and multi-step forecasting method. Meanwhile, we make some correlative simulations and experiments, and the experiments demonstrate the sensing information forecasting algorithm can predict the value and the trend of the sensing signal, the results of simulations and experiments illustrate the validity and effectiveness of the algorithm.
机译:助力步行腿(PAWL)是一款自主的外骨骼机器人,旨在辅助日常生活活动。为了改善外骨骼机器人的动态响应,提出了一种基于时间序列分析的新型传感信息预测算法。该算法由自回归(AR)模型,递归最小二乘(RLS)方法和最终预测误差(FPE)准则构成。 RLS方法用于进行在线参数估计,而FPE准则用于选择AR模型的顺序。由于实时性的要求,该预测算法被设计为在线使用并预测力传感器的信息,以确保整个系统的实时性。根据需要,该算法可以分为两类:一步预测法和多步预测法。同时,我们进行了一些相关的仿真和实验,实验证明了传感信息预测算法可以预测传感信号的值和趋势,仿真和实验结果说明了算法的有效性和有效性。

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