Prediction of increasing production activities using combination of query aggregation on complex events processing and neural network

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Achmad Arwan

2016 Register: Jurnal Ilmiah Teknologi Sistem Informasi Vol. 2 Issue 2 Article Cited by 0 Quartile

Abstract

Productions, orders, sales, and shipments are series of interrelated events within manufacturing industry. Further these events were recorded in the event log. Complex event processing is a method that used to analyze whether there are patterns of combinations of certain events (opportunities / threats) that occur in a system, so it can be addressed quickly and appropriately. Artificial neural network is a method that we used to classify production increase activities. The series of events that cause the increase of the production used as a dataset to train the weight of neural network which result activation value. An aggregate stream of events inserted into the neural network input to compute the value of activation. When the value is over a certain threshold (the activation value results from training process), the system will issue a signal to increase production, otherwise system will keep monitor the events. Experiment result shows that the accuracy of this method is 77% for 39 series of event streams. © 2016, Universitas Pesantren Tinggi Darul Ulum. All rights reserved.

Affiliations

Teknik Informatika – FILKOM Universitas Brawijaya, Malang, Indonesia