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A New Method of Data Missing Estimation with FNN-Based Tensor Heterogeneous Ensemble Learning for Internet of Vehicle
Neurocomputing ( IF 5.5 ) Pub Date : 2021-01-01 , DOI: 10.1016/j.neucom.2020.09.042
Ting Zhang , De-gan Zhang , Hao-ran Yan , Jian-ning Qiu , Jin-xin Gao

Abstract The Internet of Vehicles (IoV) can obtain traffic information through a large number of data collected by sensors. However, the lack of data, abnormal data, and other low-quality problems have seriously restricted the development and application of the IoV. To solve the problem of missing data in a large-scale road network, the previous research achievements show that tensor decomposition method has the advantages in solving multi-dimensional data imputation problems, so we adopt this tensor mode to model traffic velocity data. A new method of data missing estimation with tensor heterogeneous ensemble learning based on FNN (Fuzzy Neural Network) named FNNTEL is proposed in this paper. The performance of this method is evaluated by our experiments and analysis. The proposed method is applied to be tested by the real data captured in Guangzhou and Tianjin of China respectively. A large number of experimental tests show that the performance of the new method is better than other commonly used technologies and different missing data generation models.
更新日期:2021-01-01
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