Title :
Feature Reduction for Anomaly Detection in Manufacturing with MapReduce GA/kNN
Author :
Tanupabrungsun, Sikana ; Achalakul, Tiranee
Author_Institution :
Comput. Eng. Dept., King Mongkut´s Univ. of Technol. Thonburi, Bangkok, Thailand
Abstract :
Manufacturing data is an important source of knowledge that can be used to enhance the production capability. The detection of the causes of defects may possibly lead to an improvement in production. However, the production records generally contain an enormous set of features. It is almost impossible in practice to monitor all features at once. This research proposes the feature reduction technique, which is designed to identify a subset of informative features that are representatives of the whole dataset. In our methodology, manufacturing data are pre-processed and adopted as inputs. Subsequently, the feature selection process is performed by wrapping Genetic Algorithm (GA) with the k-Nearest Neighborhood (kNN) classifier. To improve the performance, the proposed technique was parallelized with MapReduce. The results show that the number of features can be reduced by 50% with 83.12% accuracy. In addition, with MapReduce on the cloud, the performance can be increased by 17.5 times.
Keywords :
genetic algorithms; manufacturing data processing; pattern classification; security of data; MapReduce GA; anomaly detection; feature reduction technique; genetic algorithm; k-nearest neighborhood classifier; kNN; manufacturing data; production records; Accuracy; Algorithm design and analysis; Feature extraction; Genetic algorithms; Manufacturing; Monitoring; Testing; Feature Selection; Genetic Algorithm; Manufacturing Data; MapReduce; k-Nearest Neighbor;
Conference_Titel :
Parallel and Distributed Systems (ICPADS), 2013 International Conference on
Conference_Location :
Seoul
DOI :
10.1109/ICPADS.2013.114