Javascript must be enabled to continue!
An Ultra-Short Baseline Underwater Positioning System with Kalman Filtering
View through CrossRef
The ultra-short baseline underwater positioning is one of the most widely applied methods in underwater positioning and navigation due to its simplicity, efficiency, low cost, and accuracy. However, there exists environmental noise, which has negative impacts on the positioning accuracy during the ultra-short baseline (USBL) positioning process, which results in a large positioning error. The positioning result may lead to wrong decision-making in the latter processing. So, it is necessary to consider the error sources, and take effective measurements to minimize the negative impact of the noise. In our work, we propose a USBL positioning system with Kalman filtering to improve the positioning accuracy. In this system, we first explore a new kind of element array to accurately capture the acoustic signals from the object. We then organically combine the Kalman filters with the array elements to filter the acoustic signals, using the minimum mean-square error rule to obtain accurate acoustic signals. We got the high-precision phase difference information based on the non-equidistant quaternary original array and the phase difference acquisition mechanism. Finally, on account of the obtained accurate phase difference information and position calculation, we determined the coordinates of the underwater target. Comprehensive evaluation results demonstrate that our proposed USBL positioning method based on the Kalman filter algorithm can effectively enhance the positioning accuracy.
Title: An Ultra-Short Baseline Underwater Positioning System with Kalman Filtering
Description:
The ultra-short baseline underwater positioning is one of the most widely applied methods in underwater positioning and navigation due to its simplicity, efficiency, low cost, and accuracy.
However, there exists environmental noise, which has negative impacts on the positioning accuracy during the ultra-short baseline (USBL) positioning process, which results in a large positioning error.
The positioning result may lead to wrong decision-making in the latter processing.
So, it is necessary to consider the error sources, and take effective measurements to minimize the negative impact of the noise.
In our work, we propose a USBL positioning system with Kalman filtering to improve the positioning accuracy.
In this system, we first explore a new kind of element array to accurately capture the acoustic signals from the object.
We then organically combine the Kalman filters with the array elements to filter the acoustic signals, using the minimum mean-square error rule to obtain accurate acoustic signals.
We got the high-precision phase difference information based on the non-equidistant quaternary original array and the phase difference acquisition mechanism.
Finally, on account of the obtained accurate phase difference information and position calculation, we determined the coordinates of the underwater target.
Comprehensive evaluation results demonstrate that our proposed USBL positioning method based on the Kalman filter algorithm can effectively enhance the positioning accuracy.
Related Results
Emerging underwater survey technologies: A review and future outlook
Emerging underwater survey technologies: A review and future outlook
Emerging underwater survey technologies are revolutionizing the way we explore and understand the underwater world. This review examines the latest advancements in underwater surve...
A Study on Brand Positioning in Dairy Product at Villupuram, Tamil Nadu
A Study on Brand Positioning in Dairy Product at Villupuram, Tamil Nadu
Brand positioning is a core concept in marketing. Despite the importance of the concept however, there is limited research in the field of positioning clarifying to what extent var...
Edge Enhanced CrackNet for Underwater Crack Detection of Concrete Dams
Edge Enhanced CrackNet for Underwater Crack Detection of Concrete Dams
Underwater crack detection in dam structures is of significant engineering importance and scientific value for ensuring the structural safety, assessing operational conditions, and...
Optimizing Underwater Vision: A Rigorous Investigation into CNN's Deep Image Enhancement for Subaquatic Scenes
Optimizing Underwater Vision: A Rigorous Investigation into CNN's Deep Image Enhancement for Subaquatic Scenes
In this paper, Convolutional Neural Networks were used to enhance the visual fidelity of underwater images. The UWCNN is introduced in this article, which utilizes underwater scene...
Study on Physical Simulation Experimental Technology of Ultra-low Permeability Large-scale Outcrop Model
Study on Physical Simulation Experimental Technology of Ultra-low Permeability Large-scale Outcrop Model
Abstract
Ultra-low permeability reserves have accounted for a very large proportion of China's proven reserves and undeveloped reserves at present, so it is very ...
Kalman Filtresi
Kalman Filtresi
Bu kitap, Kalman filtresi konusunu ele almaktadır. Kalman filtresi, bir sistemin durumunu tahmin etmek için kullanılan bir istatistiksel filtreleme yöntemidir. Kitap, kesikli-zaman...
Underwater Pile Driving Test Offshore Louisiana
Underwater Pile Driving Test Offshore Louisiana
ABSTRACT
This report presents results of an underwater pile driving test conducted at South Marsh Island Block 130, offshore Louisiana. A 24inch diameter tubular ...
An Underwater Target Tracking Algorithm Based on Extended Kalman Filter
An Underwater Target Tracking Algorithm Based on Extended Kalman Filter
The technology of ocean monitoring is more advanced while the continuous development of industrial Internet. Unmanned underwater vehicle (UUV) is one of major ways for underwater e...

