Title of article :
Creating an automated chiller fault detection and diagnostics tool using a data fault library
Author/Authors :
Bailey، نويسنده , , Margaret B. and Kreider، نويسنده , , Jan F.، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2003
Pages :
11
From page :
485
To page :
495
Abstract :
Reliable, automated detection and diagnosis of abnormal behavior within vapor compression refrigeration cycle (VCRC) equipment is extremely desirable for equipment owners and operators. The specific type of VCRC equipment studied in this paper is a 70-ton helical rotary, air-cooled chiller. The fault detection and diagnostic (FDD) tool developed as part of this research analyzes chiller operating data and detects faults through recognizing trends or patterns existing within the data [1]. The FDD method incorporates a neural network (NN) classifier to infer the current state given a vector of observables. Therefore the FDD method relies upon the availability of normal and fault empirical data for training purposes and therefore a fault library of empirical data is assembled [2]. This paper presents procedures for conducting sophisticated fault experiments on chillers that simulate air-cooled condenser, refrigerant, and oil related faults. The experimental processes described here are not well documented in literature and therefore will provide the interested reader with a useful guide. In addition, the authors provide evidence, based on both thermodynamics and empirical data analysis, that chiller performance is significantly degraded during fault operation. The chillerʹs performance degradation is successfully detected and classified by the NN FDD classifier as discussed in the paperʹs final section.
Keywords :
DDC , Experimental research , Software
Journal title :
ISA TRANSACTIONS
Serial Year :
2003
Journal title :
ISA TRANSACTIONS
Record number :
2382575
Link To Document :
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