Fault Detection and Diagnosis for an Air-Handling Unit Using Artificial Neural Networks

신경망 이용 공조기 고장검출 및 진단

  • Published : 2001.12.01

Abstract

A scheme for on-line fault detection and diagnosis of an air-handling unit is presented. The fault detection scheme uses residuals which are generated by comparing each measurement with analytical redundancies computed from the reference models. In this paper, artificial neural networks (ANNs) are used to estimate analytical redundancy and to classify faults. The Lebenburg-Marquardt algorithm is used to train feed forward ANNs that provide estimates of continuous states and diagnosis results. The simulation result demonstrated that the ANNs can effectively detect and diagnose faults in the highly non-linear and complex HVAC systems.

Keywords

References

  1. Automatica v.12 A survey of design methods for failure detection in dynamic systems Wilsky A.S.
  2. Automatica v.20 Process fault detection based on modeling and estimation methods Isermann R.
  3. Fault Diagnosis in Dynamic Systems Theory and Application Patton R.P.;Frank P.M.;Clark R.
  4. Proceedings of Building Simulation '89 Rule based diagnostic method for HVAC fault detection Liu S.T.;Kelly G.E.
  5. IEA ANNEX25 working paper Fault detection method for district heating substation control valve based on static and physical model Hyvarinen Juhani
  6. Energy Conv. and Mant. v.40 ARX and AFRM model-based on-line real-time data base diagnosis of sudden fault in AHU of VAV system Yoshida H.;Kumari S.
  7. korean Journal of Air-Conditioning and Refrigeration Engineering v.12 no.7 Regression Model-Based Fault Detection of an Ait-Handling Unit Lee Won-Yong;Lee B.D.
  8. KIER Report, KIER-996816 Computer-aided practical application of faults detection and diagnosis techniques in energy systems Lee Won-Yong
  9. Trans. KIEE v.48A no.4 Fault detection in an automatic central air-handling-unit Lee Won-Yong;Shin D.R.
  10. NASA report, NASA/TM-1998-112239 Accelerated Training for large feed-forward neural networs Stepniewski S.W.;Jorgensen C.C.
  11. ASHRAE Trans. v.103 Classification techniques for fault fetection and diagnosis of an air handling unit House J.M.;Lee Won-Yong;Shin D.R.