自动水面航行器跟踪导航的机器学习算法实现

J. Osaku, A. Asada, F. Maeda, Y. Yamagata, T. Kanamaru
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引用次数: 3

摘要

在福冈县神田港的建设中,在海底发现了许多有害的化学炸弹,需要尽快小心地挖掘出来。为此,本课题组正在尝试开发一种新型的水下干涉合成孔径成像声纳系统,将化学弹识别为厘米级分辨率的水下三维声声图像。在本研究中,采用自主水下航行器(AUV)在恒定高度下使用水下干涉式SAS发射机和接收机对海底进行测量是合理的方法。为了实现这一研发目标,需要对水下航行器进行精确定位,因此我们正在尝试开发一种最小化定位误差的技术,利用自主水面航行器(ASV)跟踪水下航行器并通过超短基线(SSBL)方法测量其绝对位置。在跟踪型自动航行器的研制中,根据自动航行器的定位结果,开发控制算法,使自动航行器稳定地转向并充分地控制其速度是非常重要的。基于机器学习方法,我们试图开发一种从宝贵的控制日志中推断出ASV适当控制的算法。该算法的实现将提高水下定位的精度。本文介绍了我国ASV及其控制算法的发展现状。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of machine learning algorism to autonomous surface vehicle for tracking and navigating AUV
On the construction of Kanda port in Fukuoka prefecture, many harmful chemical bombs have been discovered beneath the sea bottom and they are needed to be dug up carefully and quickly as possible. So our group is trying to develop a new sub-bottom interferometric synthetic aperture imaging sonar (sub-bottom interferometric SAS) system to recognize chemical bombs as centimeters-resolution 3D-sub-bottom acoustic image. In this R&D study, it is the reasonable methodology to use an autonomous underwater vehicle (AUV) which can survey the seafloor with sub-bottom interferometric SAS transmitter and receiver at a constant height. To accomplish this R&D goal, positioning AUV accurately is needed, so we are trying to develop the technique which minimizes the error of positioning, using autonomous surface vehicle (ASV) which tracks AUV and surveys its absolute position by super short-baseline (SSBL) method. In development of tracking ASV, it is important to develop the controlling algorism which orders ASV to steer stably and control adequately its velocity according to the result of SSBL positioning of the AUV. Based on machine learning method, we are trying to develop an algorism which infers appropriate control of ASV from precious controlling log. Implementation of this algorism will improve the precision of underwater positioning. This paper reports the development status of our ASV and controlling algorism.
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