DocumentCode
2919952
Title
Implementation of a commercial PI-neural controller for building services controls
Author
Fargus, R. ; Chapman, C.
Author_Institution
Building Res. Establ., Watford, UK
fYear
1997
fDate
35551
Firstpage
42370
Lastpage
42377
Abstract
In heating, ventilation and air-conditioning (HVAC) applications a large variety of components must be controlled to maintain comfort conditions. Current building controls are often implemented in stand-alone multitasking microprocessor based `outstations´ in which up to around 30 control loops may be active simultaneously. The majority are PI loops, these are used to control such components as cooling coils, heating coils and dampers. The non-linear nature of the controlled systems lead to commissioned controllers with typically sluggish action. This paper discusses an implementation of a hybrid PI-neural controller specifically designed to combat this problem. To ensure commercial application it is necessary that such a controller is no more complex to commission than a PI controller, and that it is robust enough to operate unsupervised for periods of years. Issues discussed include tolerance to faults and maintenance periods, computational cost and auto-configuration of neural network parameters. Results are presented from validation testing performed in simulation and on a full scale air-conditioning test facility
Keywords
HVAC; HVAC; air-conditioning; auto-configuration; building services controls; comfort conditions; computational cost; fault tolerance; full scale air-conditioning test facility; heating; hybrid PI-neural controller; maintenance periods; validation testing; ventilation;
fLanguage
English
Publisher
iet
Conference_Titel
Industrial Applications of Intelligent Control (Digest No: 1997/144), IEE Colloquium on
Conference_Location
London
Type
conf
DOI
10.1049/ic:19970782
Filename
640880
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