Improving the predictive response using ensemble empirical mode decomposition based soft sensors with auto encoder deep neural network

被引:11
作者
Haleem, Sulaima Lebbe Abdul [1 ]
Sodagudi, Suhasini [2 ]
Althubiti, Sara A. [3 ]
Shukla, Surendra Kumar [4 ]
Ahmed, Mohammed Altaf [5 ]
Chokkalingam, Bharatiraja [6 ]
机构
[1] South Eastern Univ Sri Lanka, Fac Technol, Dept Informat & Commun Technol, Oluvil, Sri Lanka
[2] Velagapudi Ramakrishna Siddhartha Engn Coll, Dept IT, Vijayawada, AP, India
[3] Majmaah Univ, Coll Comp & Informat Sci, Dept Comp Sci, Al Majmaah 11952, Saudi Arabia
[4] Graph Era Deemed be Univ, Dept Comp Sci & Engn, Dehra Dun 248002, Uttaranchal, India
[5] Prince Sattam Bin Abdulaziz Univ, Coll Comp Engn & Sci, Dept Comp Engn, Al Kharj 11942, Saudi Arabia
[6] SRM Inst Sci & Technol, Dept Elect & Elect Engn, Chennai 603203, India
关键词
Soft sensors; Decomposition; Neural network; Signal prediction; Denoising; Standardization; FAULT-DIAGNOSIS; WAVELET;
D O I
10.1016/j.measurement.2022.111308
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
In industries, several key quality variables used in complex processes are immeasurable online and are not reliable because of the factors like complex environmental criteria, limited techniques for testing and high cost. Soft sensor technology has become known to solve these complexities. In industrial process, the key factors like redundancy, noise and dynamic features of data affect the accuracy of soft sensors. Thus, a predictive control approach is required which has to integrate improved methods used to detect the control signal that uses direction of structural motion. This paper proposes an innovative Ensemble Empirical Mode Decomposition Based Auto Encoder Deep Neural Network (EEMD-AEDNN) which combines the advantages of Ensemble Empirical Mode Decomposition and neural network bringing problems of mode-mixing from EEMD and false modes from neural network under control. Moreover, dynamic characteristics are captured which are distributed over time improving the modelling effects. The advantage is that noise and redundancy from actual data are removed and information loss is minimized. Furthermore, data are sequential introducing historical data for dynamic modelling. This goal is consistently achieved and thus the proposed model outperforms few standard approaches which are considered like Ensemble Empirical Mode Decomposition based Long Short-Term Memory neural network (EEMD-LSTM), Wavelet Neural Network with Random Time (WNNRT) and Ensemble Empirical Mode Decomposition-General Regression Neural Network (EEMD-GRNN). It is found that the proposed EEMD-AEDNN method achieves 94.22% of accuracy, 84.68% of RMSE, 75.34% of RAE and 54.42% of MAE in 86.5 ms.
引用
收藏
页数:7
相关论文
共 15 条
[1]   A fault diagnosis methodology for rolling element bearings based on advanced signal pretreatment and autoregressive modelling [J].
Al-Bugharbee, Hussein ;
Trendafilova, Irina .
JOURNAL OF SOUND AND VIBRATION, 2016, 369 :246-265
[2]   Hybridizing β-hill climbing with wavelet transform for denoising ECG signals [J].
Alyasseri, Zaid Abdi Alkareem ;
Khader, Ahamad Tajudin ;
Al-Betar, Mohammed Azmi ;
Awadallah, Mohammed A. .
INFORMATION SCIENCES, 2018, 429 :229-246
[3]   An iterative wavelet threshold for signal denoising [J].
Bayer, Fabio M. ;
Kozakevicius, Alice J. ;
Cintra, Renato J. .
SIGNAL PROCESSING, 2019, 162 :10-20
[4]   Orthogonal Sparse PCA and Covariance Estimation via Procrustes Reformulation [J].
Benidis, Konstantinos ;
Sun, Ying ;
Babu, Prabhu ;
Palomar, Daniel P. .
IEEE TRANSACTIONS ON SIGNAL PROCESSING, 2016, 64 (23) :6211-6226
[5]   LAPB: Locally adaptive patch-based wavelet domain edge-preserving image denoising [J].
Jain, Paras ;
Tyagi, Vipin .
INFORMATION SCIENCES, 2015, 294 :164-181
[6]   Design of wavelet transform based electrocardiogram monitoring system [J].
Kumar, Ashish ;
Komaragiri, Rama ;
Kumar, Manjeet .
ISA TRANSACTIONS, 2018, 80 :381-398
[7]   Comparison of two new intelligent wind speed forecasting approaches based on Wavelet Packet Decomposition, Complete Ensemble Empirical Mode Decomposition with Adaptive Noise and Artificial Neural Networks [J].
Liu, Hui ;
Mi, Xiwei ;
Li, Yanfei .
ENERGY CONVERSION AND MANAGEMENT, 2018, 155 :188-200
[8]   Short-term Electric Load Forecasting Based on Wavelet Neural Network, Particle Swarm Optimization and Ensemble Empirical Mode Decomposition [J].
Lopez, Cristian ;
Zhong, Wei ;
Zheng, MengLian .
8TH INTERNATIONAL CONFERENCE ON APPLIED ENERGY (ICAE2016), 2017, 105 :3677-3682
[9]  
Rahim R, 2021, Journal of Computational and Theoretical Nanoscience, V18, P1312
[10]   Short-term wind speed forecasting based on fast ensemble empirical mode decomposition, phase space reconstruction, sample entropy and improved back-propagation neural network [J].
Sun, Wei ;
Wang, Yuwei .
ENERGY CONVERSION AND MANAGEMENT, 2018, 157 :1-12