Forecasting and Anomaly Detection approaches ...
Document type :
Article dans une revue scientifique: Article original
Permalink :
Title :
Forecasting and Anomaly Detection approaches using LSTM and LSTM Autoencoder techniques with the applications in supply chain management
Author(s) :
Nguyen, H. D. [Auteur]
Institute of Artificial Intelligence and Data Science
Génie et Matériaux Textiles [GEMTEX]
Tran, Kim-Phuc [Auteur]
Génie et Matériaux Textiles [GEMTEX]
École nationale supérieure des arts et industries textiles [ENSAIT]
Thomassey, S. [Auteur]
Génie et Matériaux Textiles [GEMTEX]
Hamad, M. [Auteur]
Institute of Artificial Intelligence and Data Science
Génie et Matériaux Textiles [GEMTEX]
Tran, Kim-Phuc [Auteur]
Génie et Matériaux Textiles [GEMTEX]
École nationale supérieure des arts et industries textiles [ENSAIT]
Thomassey, S. [Auteur]
Génie et Matériaux Textiles [GEMTEX]
Hamad, M. [Auteur]
Journal title :
International Journal of Information Management
Abbreviated title :
Int. J. Inf. Manage.
Volume number :
57
Pages :
-
Publication date :
2020-11-25
ISSN :
0268-4012
English keyword(s) :
Autoencoder
Long short term memory networks
Anomaly detection
One-class SVM
Forecasting
Long short term memory networks
Anomaly detection
One-class SVM
Forecasting
HAL domain(s) :
Sciences de l'ingénieur [physics]
English abstract : [en]
Making appropriate decisions is indeed a key factor to help companies facing challenges from supply chains nowadays. In this paper, we propose two datadriven approaches that allow making better decisions in supply chain ...
Show more >Making appropriate decisions is indeed a key factor to help companies facing challenges from supply chains nowadays. In this paper, we propose two datadriven approaches that allow making better decisions in supply chain management. In particular, we suggest a Long Short Term Memory (LSTM) networkbased method for forecasting multivariate time series data and an LSTM Autoencoder network-based method combined with a one-class support vector machine algorithm for detecting anomalies in sales. Unlike other approaches, we recommend combining external and internal company data sources for the purpose of enhancing the performance of forecasting algorithms using multivariate LSTM with the optimal hyperparameters. In addition, we also propose a method to optimize hyperparameters for hybrid algorithms for detecting anomalies in time series data. The proposed approaches will be applied to both benchmarking datasets and real data in fashion retail. The obtained results show that the LSTM Autoencoder based method leads to better performance for anomaly detection compared to the LSTM based method suggested in a previous study. The proposed forecasting method for multivariate time series data also performs better some other methods based on a dataset provided by NASA.Show less >
Show more >Making appropriate decisions is indeed a key factor to help companies facing challenges from supply chains nowadays. In this paper, we propose two datadriven approaches that allow making better decisions in supply chain management. In particular, we suggest a Long Short Term Memory (LSTM) networkbased method for forecasting multivariate time series data and an LSTM Autoencoder network-based method combined with a one-class support vector machine algorithm for detecting anomalies in sales. Unlike other approaches, we recommend combining external and internal company data sources for the purpose of enhancing the performance of forecasting algorithms using multivariate LSTM with the optimal hyperparameters. In addition, we also propose a method to optimize hyperparameters for hybrid algorithms for detecting anomalies in time series data. The proposed approaches will be applied to both benchmarking datasets and real data in fashion retail. The obtained results show that the LSTM Autoencoder based method leads to better performance for anomaly detection compared to the LSTM based method suggested in a previous study. The proposed forecasting method for multivariate time series data also performs better some other methods based on a dataset provided by NASA.Show less >
Language :
Anglais
Audience :
Internationale
Popular science :
Non
Administrative institution(s) :
Université de Lille
ENSAIT
Junia HEI
ENSAIT
Junia HEI
Collections :
Submission date :
2023-06-20T11:43:13Z
2024-03-14T09:37:53Z
2024-03-14T09:37:53Z