A STUDY ON NEURO FUZZY ALGORITHM IMPLEMENTATION ON BCI-UAV CONTROL SYSTEMS

Q4 Earth and Planetary Sciences
T. S. Chu, Alvin Chua, E. Secco
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引用次数: 1

Abstract

Brain-Computer Interface (BCI) machines are capable of obtaining brain activities by conducting Electroencephalogram tests. Developments on both BCI and Machine Learning allowed various researchers to develop and study various BCI control systems, mainly varying with the algorithm implementation. This research presents a performance analysis of the Adaptive Neuro-Fuzzy Inference System (ANFIS) for BCI control systems for drone maneuverability. Eye gestures were used to generate the EEG data that were captured using the Emotiv INSIGHT Neuroheadset. The obtained data were transferred to the computing hardware using IEEE 802.15 wirless communication protocol (i.e. Bluetooth connectivity); the data are processed using the 5th order Butterworth Band-Pass filtering and heuristic filtering. The filtered dataset is then fed to the ANFIS and a Support Vector Machine (SVM) algorithm, the latter serving as the basis, for training and quadcopter control implementation. Three flight tests were done, hover test, flight command test, and the flight control test, the final test compared the performance of the BCI control system using the ANFIS algorithm to the performance of a traditional handheld remote controller. Results from the initial two tests showed that the ANFIS performed comparably with the SVM, and even about 2% better. The final test showed that the BCI control system had a maximum variance of 4% compared to the handheld controller, where the latter served as the basis. It was found that between Machine Learning algorithms, ANFIS is as capable as the SVM for BCI control systems. Further developments may focus on employing time-series EEG preprocessing techniques.
BCI-UAV控制系统的神经模糊算法实现研究
脑机接口(BCI)机器能够通过进行脑电图测试来获得大脑活动。脑机接口和机器学习的发展使各种研究人员能够开发和研究各种脑机接口控制系统,主要随着算法的实现而变化。本研究对无人机操纵性脑机接口控制系统的自适应神经模糊推理系统(ANFIS)进行了性能分析。眼动手势用于生成使用Emotiv INSIGHT Neuroheadset捕获的脑电图数据。使用IEEE 802.15无线通信协议(即蓝牙连接)将获得的数据传输到计算硬件;使用五阶巴特沃斯带通滤波和启发式滤波来处理数据。过滤后的数据集随后被馈送到ANFIS和支持向量机(SVM)算法,后者作为基础,用于训练和四旋翼机控制的实现。进行了三次飞行测试,悬停测试、飞行指令测试和飞行控制测试,最后的测试将使用ANFIS算法的脑机接口控制系统的性能与传统手持遥控器的性能进行了比较。最初两次测试的结果表明,ANFIS的表现与SVM相当,甚至好2%左右。最终测试表明,与手持控制器相比,脑机接口控制系统的最大方差为4%,后者是手持控制器的基础。研究发现,在机器学习算法之间,ANFIS与SVM一样能够用于脑机接口控制系统。进一步的发展可能集中于采用时间序列EEG预处理技术。
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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来源期刊
ASEAN Engineering Journal
ASEAN Engineering Journal Engineering-Engineering (all)
CiteScore
0.60
自引率
0.00%
发文量
75
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