4.7 Article

An overview on fault diagnosis and nature-inspired optimal control of industrial process applications

Journal

COMPUTERS IN INDUSTRY
Volume 74, Issue -, Pages 75-94

Publisher

ELSEVIER
DOI: 10.1016/j.compind.2015.03.001

Keywords

Data-driven control; Data mining; Evolving soft computing techniques; Fault diagnosis; Nature-inspired optimization algorithms; Wind turbines

Funding

  1. Partnerships in priority areas - PN II programme of the Romanian National Authority for Scientific Research ANCS
  2. CNDI - UEFISCDI [PN-II-PT-PCCA-2011-3.2-0732]
  3. PN II programme of the Romanian Ministry of National Education (MEN) - Executive Agency for Higher Education, Research, Development and Innovation (UEFISCDI) [PN-II-PT-PCCA-2013-4-0544, PN-II-PT-PCCA-2013-4-0070]

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Fault detection, isolation and optimal control have long been applied to industry. These techniques have proven various successful theoretical results and industrial applications. Fault diagnosis is considered as the merge of fault detection (that indicates if there is a fault) and fault isolation (that determines where the fault is), and it has important effects on the operation of complex dynamical systems specific to modern industry applications such as industrial electronics, business management systems, energy, and public sectors. Since the resources are always limited in real-world industrial applications, the solutions to optimally use them under various constraints are of high actuality. In this context, the optimal tuning of linear and nonlinear controllers is a systematic way to meet the performance specifications expressed as optimization problems that target the minimization of integral- or sum-type objective functions, where the tuning parameters of the controllers are the vector variables of the objective functions. The nature-inspired optimization algorithms give efficient solutions to such optimization problems. This paper presents an overview on recent developments in machine learning, data mining and evolving soft computing techniques for fault diagnosis and on nature-inspired optimal control. The generic theory is discussed along with illustrative industrial process applications that include a real liquid level control application, wind turbines and a nonlinear servo system. New research challenges with strong industrial impact are highlighted. (C) 2015 Elsevier B.V. All rights reserved.

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