A big data MapReduce framework for fault diagnosis in cloud-based manufacturing

This research develops a MapReduce framework for automatic pattern recognition based on fault diagnosis by solving data imbalance problem in a cloud-based manufacturing (CBM). Fault diagnosis in a CBM system significantly contributes to reduce the product testing cost and enhances manufacturing qual...

Full description

Saved in:
Bibliographic Details
Main Authors: Ajay Kumar, Ravi Shankar, Alok Choudhary, Lakshman S. Thakur
Format: Default Article
Published: 2016
Subjects:
Online Access:https://hdl.handle.net/2134/23087
Tags: Add Tag
No Tags, Be the first to tag this record!
id rr-article-9503942
record_format Figshare
spelling rr-article-95039422016-03-04T00:00:00Z A big data MapReduce framework for fault diagnosis in cloud-based manufacturing Ajay Kumar (192967) Ravi Shankar (103040) Alok Choudhary (1251471) Lakshman S. Thakur (7199684) Other commerce, management, tourism and services not elsewhere classified Big data analytics Class imbalance problem Radial basis function Support vector machine (SVM) Fault diagnosis and cloud-based manufacturing Business and Management not elsewhere classified This research develops a MapReduce framework for automatic pattern recognition based on fault diagnosis by solving data imbalance problem in a cloud-based manufacturing (CBM). Fault diagnosis in a CBM system significantly contributes to reduce the product testing cost and enhances manufacturing quality. One of the major challenges facing the big data analytics in cloud-based manufacturing is handling of datasets, which are highly imbalanced in nature due to poor classification result when machine learning techniques are applied on such datasets. The framework proposed in this research uses a hybrid approach to deal with big dataset for smarter decisions. Furthermore, we compare the performance of radial basis function based Support Vector Machine classifier with standard techniques. Our findings suggest that the most important task in cloud-based manufacturing, is to predict the effect of data errors on quality due to highly imbalance unstructured dataset. The proposed framework is an original contribution to the body of literature, where our proposed MapReduce framework has been used for fault detection by managing data imbalance problem appropriately and relating it to firm’s profit function. The experimental results are validated using a case study of steel plate manufacturing fault diagnosis, with crucial performance matrices such as accuracy, specificity and sensitivity. A comparative study shows that the methods used in the proposed framework outperform the traditional ones. 2016-03-04T00:00:00Z Text Journal contribution 2134/23087 https://figshare.com/articles/journal_contribution/A_big_data_MapReduce_framework_for_fault_diagnosis_in_cloud-based_manufacturing/9503942 CC BY-NC-ND 4.0
institution Loughborough University
collection Figshare
topic Other commerce, management, tourism and services not elsewhere classified
Big data analytics
Class imbalance problem
Radial basis function
Support vector machine (SVM)
Fault diagnosis and cloud-based manufacturing
Business and Management not elsewhere classified
spellingShingle Other commerce, management, tourism and services not elsewhere classified
Big data analytics
Class imbalance problem
Radial basis function
Support vector machine (SVM)
Fault diagnosis and cloud-based manufacturing
Business and Management not elsewhere classified
Ajay Kumar
Ravi Shankar
Alok Choudhary
Lakshman S. Thakur
A big data MapReduce framework for fault diagnosis in cloud-based manufacturing
description This research develops a MapReduce framework for automatic pattern recognition based on fault diagnosis by solving data imbalance problem in a cloud-based manufacturing (CBM). Fault diagnosis in a CBM system significantly contributes to reduce the product testing cost and enhances manufacturing quality. One of the major challenges facing the big data analytics in cloud-based manufacturing is handling of datasets, which are highly imbalanced in nature due to poor classification result when machine learning techniques are applied on such datasets. The framework proposed in this research uses a hybrid approach to deal with big dataset for smarter decisions. Furthermore, we compare the performance of radial basis function based Support Vector Machine classifier with standard techniques. Our findings suggest that the most important task in cloud-based manufacturing, is to predict the effect of data errors on quality due to highly imbalance unstructured dataset. The proposed framework is an original contribution to the body of literature, where our proposed MapReduce framework has been used for fault detection by managing data imbalance problem appropriately and relating it to firm’s profit function. The experimental results are validated using a case study of steel plate manufacturing fault diagnosis, with crucial performance matrices such as accuracy, specificity and sensitivity. A comparative study shows that the methods used in the proposed framework outperform the traditional ones.
format Default
Article
author Ajay Kumar
Ravi Shankar
Alok Choudhary
Lakshman S. Thakur
author_facet Ajay Kumar
Ravi Shankar
Alok Choudhary
Lakshman S. Thakur
author_sort Ajay Kumar (192967)
title A big data MapReduce framework for fault diagnosis in cloud-based manufacturing
title_short A big data MapReduce framework for fault diagnosis in cloud-based manufacturing
title_full A big data MapReduce framework for fault diagnosis in cloud-based manufacturing
title_fullStr A big data MapReduce framework for fault diagnosis in cloud-based manufacturing
title_full_unstemmed A big data MapReduce framework for fault diagnosis in cloud-based manufacturing
title_sort big data mapreduce framework for fault diagnosis in cloud-based manufacturing
publishDate 2016
url https://hdl.handle.net/2134/23087
_version_ 1797736038700941312