Data-driven based Fault Diagnosis using Principal Component Analysis

Abstract

Modern industrial systems are growing day by day and unlikely their complexity is also increasing. On the other hand, the design and operations have become a key focus of the researchers in order to improve the production system. To cope up with these chellenges, the data-driven technique like principal component analysis (PCA) is famous to assist the working systems. A data in bulk quanitity from the sensor measurements are often available in such industrial systems. Considering the modern industrial systems and their economic benifits, the fault diagnostic techniqes have been deeply studied. For example, the techniques that consider the process data as the key element. In this paper, the faults have been detected with the data-driven approach using PCA. In particular, the faults have been detected by using T^2 and Q statistics. In this process, PCA projects large data into smaller dimensions. Additionally it also preserves all the important information of process. In order to understand the impact of the technique, Tennessee Eastman chemical plant is considerd for the performance evaluation.

Authors and Affiliations

Shakir M. Shaikh, Imtiaz Ali Halepoto, Nazar H. Phulpoto, Muhammad S. Memon, Ayaz Hussain, Asif A. Laghari

Keywords

Related Articles

Predictable CPU Architecture Designed for Small Real-Time Application - Concept and Theory of Operation

The purpose of this paper is to describe an predictable CPU architecture, based on the five stage pipeline assembly line and a hardware scheduler engine. We aim at developing a fine-grained multithreading implementation,...

Average Link Stability with Energy-Aware Routing Protocol for MANETs

This paper suggests the A-LSEA (Average Link Stability and Energy Aware) routing protocol for Mobile Ad-hoc Networks (MANETs). The main idea behind this algorithm is on the one hand, a node must have enough Residual Ener...

Improved Off-Line Intrusion Detection Using A Genetic Algorithm And RMI

This article proposes an optimization of using Genetic Algorithms for the Security Audit Trail Analysis Problem, which was proposed by L. Me in 1995 and improved by Pedro A. Diaz-Gomez and Dean F. Hougen in 2005. This op...

Web Unique Method (WUM): An Open Source Blackbox Scanner for Detecting Web Vulnerabilities

The internet has provided a vast range of benefits to society, and empowering people in a variety of ways. Due to incredible growth of Internet usage in past 2 decades, everyday a number of new Web applications are also...

A Load Balancing Policy for Heterogeneous Computational Grids

Computational grids have the potential computing power for solving large-scale scientific computing applications. To improve the global throughput of these applications, workload has to be evenly distributed among the av...

Download PDF file
  • EP ID EP358376
  • DOI 10.14569/IJACSA.2018.090725
  • Views 100
  • Downloads 0

How To Cite

Shakir M. Shaikh, Imtiaz Ali Halepoto, Nazar H. Phulpoto, Muhammad S. Memon, Ayaz Hussain, Asif A. Laghari (2018). Data-driven based Fault Diagnosis using Principal Component Analysis. International Journal of Advanced Computer Science & Applications, 9(7), 175-180. https://europub.co.uk/articles/-A-358376