Hybrid processing method for DVL (Doppler velocity log) failures in integrated navigation

A combined navigation and hybrid processing technology, applied in the field of combined navigation, can solve problems such as the decrease in the accuracy of estimation results and the estimation of measurement information by a single prediction model, and achieve the effects of overcoming adverse effects, ensuring robustness, and improving accuracy

Active Publication Date: 2017-06-13
SOUTHEAST UNIV
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Problems solved by technology

[0004] At present, the existing integrated navigation system sensor failure processing methods mostly use a single prediction model to estimate the measurement information that the sensor should have at the time of failure or directly estimate the navigation error.
Due to the existence of model errors, the accuracy of the estimation results of the single prediction model tends to decrease with the increase of sensor failure time

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  • Hybrid processing method for DVL (Doppler velocity log) failures in integrated navigation
  • Hybrid processing method for DVL (Doppler velocity log) failures in integrated navigation
  • Hybrid processing method for DVL (Doppler velocity log) failures in integrated navigation

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Embodiment Construction

[0029] The present invention will be further described below in conjunction with embodiment and accompanying drawing.

[0030] A hybrid processing method for DVL failure in integrated navigation of the present invention uses partial least squares regression and support vector regression to jointly predict DVL measurement information, and the specific steps are as follows:

[0031] a. When DVL is valid, calculate information for SINS and DVL measurement information Make observations and get N sample points to form an independent variable data table and dependent variable data table

[0032] Among them, T 1 is the moment when the partial least squares regression sample point is observed, and at T 1 -1 moment and T 1 DVL is valid at -2 time, and Respectively T 1 The eastward speed, northward speed and heading angle calculated by SINS at time -2, and Respectively T 1 The eastward speed, northward speed and heading angle calculated by SINS at time -1, and ...

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Abstract

The invention discloses a hybrid processing method for DVL (Doppler velocity log) failures in integrated navigation. The hybrid processing method comprises the following steps: when DVL is valid, collecting calculation information of an SINS (strapdown inertial navigation system) and measurement information of DVL to form a data table, using partial least squares regression to establish a linear prediction model, then subtracting the measurement information of DVL and a result obtained by prediction of the least squares regression model to obtain a residual part, and taking the residual part as a training target and using support vector regression training to obtain a corresponding prediction model; when the DVL fails, using the established partial least square regression model and the support vector regression model to respectively predict a measuring linear part of DVL and the residual part, and taking the sum of the measuring linear part of DVL and the residual part as predicted measurement information of DVL to ensure the reliability of SINS / DVL integrated navigation results under intermittent failures of DVL. The hybrid processing method for the DVL failures in the integrated navigation uses the partial least squares regression and support vector regression to establish the models, and uses double-model hybrid prediction to effectively improve the accuracy of prediction results.

Description

technical field [0001] The invention relates to the field of integrated navigation, in particular to a method suitable for dealing with intermittent failure of a Doppler Velocity Log (DVL) in integrated navigation. Background technique [0002] Strapdown Inertial Navigation System (SINS) is widely used for its advantages of high reliability and good concealment. However, due to the inherent errors of gyroscopes and accelerometers, the error of SINS solution results will accumulate over time, so it is necessary to introduce an auxiliary navigation system to form an integrated navigation. For aircraft such as Unmanned Surface Vehicle (USV) and Autonomous Underwater Vehicle (AUV), the introduction of Doppler Velocity Log (DVL) to form SINS / DVL integrated navigation is a A common way of navigation. [0003] DVL uses the Doppler frequency shift of reflected echo waves to measure the absolute velocity of a surface or underwater vehicle relative to the bottom or relative to the c...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01C21/16G01C21/20
Inventor 程向红朱倚娴胡杰周玲
Owner SOUTHEAST UNIV
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