Litcius/Paper detail

Improving Accuracy of an Amplitude Comparison-Based Direction-Finding System by Neural Network Optimization

Enqi Yan, Xiye Guo, Jun Yang, Zhijun Meng, Kai Liu, Xiaoyu Li, Guokai Chen

2020IEEE Access15 citationsDOIOpen Access PDF

Abstract

In the positioning and navigation field, it is essential to use the direction-finding system to obtain the signal direction of arrival (DOA) and target position. The amplitude comparison-based monopulse (ACM) DOA algorithm performs a few calculations, has a simple system structure, and is widely used. The traditional ACM DOA algorithm uses the first-order Taylor expansion to introduce the nonlinear errors, and the angle measurement range is limited. In response to this problem, this study establishes a neural network model for error compensation, and it optimizes the traditional algorithm to obtain a better angle estimation performance. In order to perform an experiment with the proposed algorithm, a novel experimental device was designed. Two measurements at different angles were obtained by rotating the antenna. The ACM angle estimation used only one directional antenna. The results verified the optimization algorithm. The experimental results demonstrated that in comparison with the traditional first-order and the improved third-order Taylor expansion ACM DOA algorithm, the mean absolute error of this method reduced by 81.62% and 72.62%, respectively.

Topics & Concepts

Direction findingComputer scienceDirection of arrivalAlgorithmArtificial neural networkAntenna (radio)Taylor seriesAngle of arrivalPosition (finance)Monopulse radarCompensation (psychology)SIGNAL (programming language)AmplitudeMathematicsArtificial intelligenceTelecommunicationsRadarFinanceQuantum mechanicsEconomicsProgramming languagePhysicsRadar imagingMathematical analysisPsychologyPsychoanalysisContinuous-wave radarIndoor and Outdoor Localization TechnologiesDirection-of-Arrival Estimation TechniquesSpeech and Audio Processing