基于改進(jìn)樣本卷積交互網(wǎng)絡(luò)的車輛組合導(dǎo)航系統(tǒng)研究
Research on vehicle integrated navigation system based on improved sample convolutional interaction network
KUANGXinghong,YANBiyun
(SchoolofEngineering,ShanghaiOceanUniversity,Shanghai20l3o6,China)
Abstract:Global Navigation Satelite System/Inertial NavigationSystem (GNSS/INS)integrated navigation system in vehicles is prone tosignal loss inobstructed environments,leading todivergent positioning results andcompromising the efficiencyand safetyof unmanned vehicles.Toaddressthis issue,thisstudy proposed anartificial inteligence solution based onanimproved Sample Convolutionand Interaction Network (SClNet), which incorporated strategies such as principal component analysis,trend decomposition,and linear convolutional interactive learningonalow-layerSCINetarchitecture,enhancing thestabilityandaccuracyof the model under such operating conditions.The results show thatthe proposed model reduces positioning errors by 80.9% and 67.6% compared to Long Short-Term Memory (LSTM)and SCINet, respectively,effectively improving theoutdoor positioning accuracyof unmanned vehiclesduring GNSS signal lossandensuringthereliabilityand safety of unmanned vehicle positioning.
Keywords: unmanned vehicles; integrated navigation; inertial navigation system (INS)outage;sample convolutional interaction network (SCINet); trend seasonal separating
隨著時(shí)代的進(jìn)步和科技的飛速發(fā)展,無(wú)人車在日常生活等多個(gè)領(lǐng)域得到了廣泛運(yùn)用。(剩余14308字)