Grid Search Optimized SVM Method for Dish-like Underwater Robot Attitude Prediction

Tian Wang, Xiufen Ye, Lei Wang, Heyi Li
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引用次数: 22

Abstract

The control of dish-like underwater robot motion is complex. It involves many kinds of influencing factors and it's also a nonlinear process. The model of attitude motion control is very important for the accuracy control and self adapting predictive control. For establishing the attitude motion model and predicting the attitude, SVM algorithm was used to construct a MIMO identifier in this paper. Moreover, in order to improve the effect of the identification and prediction, the grid search method was adopted to optimize the key parameter C and g in SVM. At last the effects were contrasted with GA and PSO optimized SVM algorithm by the data from the experiments in the pool, the results proved the superiority of grid search method in both calculating time and optimizing results. The results show the well performance of this GS-SVM on the identification and prediction for the attitude of dish-like underwater robot.
基于网格搜索优化的支持向量机的碟形水下机器人姿态预测方法
碟形水下机器人的运动控制是复杂的。它涉及多种影响因素,也是一个非线性过程。姿态运动控制模型对于精度控制和自适应预测控制具有重要意义。为了建立姿态运动模型并进行姿态预测,本文采用支持向量机算法构造MIMO辨识器。此外,为了提高识别和预测的效果,采用网格搜索方法对支持向量机中的关键参数C和g进行优化。最后通过池中实验数据与GA和PSO优化的SVM算法进行对比,结果证明了网格搜索方法在计算时间和优化效果上的优越性。结果表明,该支持向量机在碟形水下机器人姿态识别和预测方面具有良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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