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System Identification-based Control Of An Unmanned Autonomous Wind-propelled Catamaran

机译:基于系统识别的无人驾驶风力双体船控制

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An autonomous catamaran, based on a modified Prindle-19 day-sailing catamaran and fitted with several sensors and actuators was built to test the viability of GPS-based system identification for precision control. Using an electric trolling motor for propulsion, and lead ballast to match all-up weight, several system identification passes were performed to excite system modes and model the dynamic response. The identification process used the Observer Kalman IDentification (OKID) method for identifying a linear time invariant plant model and associated pseudo-Kalman filter. System identification input was generated using a human pilot driving the catamaran on roughly straight line passes. A fourth order discrete time model was generated from the data, and showed excellent prediction results. Using these models, linear quadratic Gaussian (LQG) controllers were designed and tested with the electric trolling motor. These controllers demonstrated excellent line-tracking performance, with error standard deviations of less than 0.15 m. The wing-sail propulsion system was fitted, and these same controllers re-tested with the wing providing all propulsive thrust. Line-following performance and disturbance rejection were excellent, with the cross-track error standard deviations of approximately 0.30 m, in spite of wind speed variations of over 50% of nominal value.
机译:自主双体船以改进的Prindle-19日航行双体船为基础,并配备了多个传感器和执行器,以测试基于GPS的系统识别用于精确控制的可行性。使用拖曳电动机和推进镇流器以匹配全部重量,进行了几次系统识别,以激发系统模式并为动态响应建模。识别过程使用Observer Kalman IDentification(OKID)方法来识别线性时不变工厂模型和相关的伪Kalman滤波器。系统识别输入是由驾驶员驾驶双体船以大致直线通过生成的。从数据生成四阶离散时间模型,并显示出极好的预测结果。使用这些模型,设计了线性二次高斯(LQG)控制器,并与拖钓电动机进行了测试。这些控制器表现出出色的线跟踪性能,误差标准偏差小于0.15 m。安装了机翼-风帆推进系统,并且对这些相同的控制器进行了重新测试,机翼提供了所有推进力。尽管风速变化超过标称值的50%,但跟踪性能和干扰抑制性能极好,跨轨误差标准偏差约为0.30 m。

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