Automated fault diagnostics for AHU-VAV systems: a bayesian network approach.
Number: pap. 3674
Author(s) : REGNIER A., WEN J.
Summary
Although it is widely accepted that 20%-30% of total HVAC energy in commercial buildings is wasted due to faulty or inefficient operation, there presently exist no widely adopted solutions to identify and remedy this waste. This lack of adoption is due primarily to the high upfront costs associated with the manual process of customizing commissioning solutions for each individual building. In order to reduce these costs, diagnostic technologies must automate the process of installing and customizing solutions for each implementation. A novel approach to addressing this problem for air handling units (AHUs) and variable air volume (VAV) boxes is presented here. This strategy utilizes a Bayesian network to identify and understand the system operation, identify faults that are wasting energy or impacting occupant comfort, and then generate performance baselines against which future operation will be compared. When this algorithm is first connected to a new building, an adaptive diagnostic Bayesian network identifies the components and configuration of the AHUs and VAVs, and then generates probabilistic outputs indicating the root causes of potential faults and inefficiencies. Once these issues have been rectified to the satisfaction of the building operator, the algorithm then begins to accumulate training data with detailed information about the system operation (while simultaneously continuing to monitor for additional faults). As this training data is accumulated, the diagnostic confidence of the Bayesian network is continuously improved. Additionally, this use of an operational baseline allows for accurate detection and diagnosis of faults causing gradual performance degradation in addition to faults that abruptly occur
Available documents
Format PDF
Pages: 9 p.
Available
Public price
20 €
Member price*
15 €
* Best rate depending on membership category (see the detailed benefits of individual and corporate memberships).
Details
- Original title: Automated fault diagnostics for AHU-VAV systems: a bayesian network approach.
- Record ID : 30019248
- Languages: English
- Source: 2016 Purdue Conferences. 4th International High Performance Buildings Conference at Purdue.
- Publication date: 2016/07/11
Links
See other articles from the proceedings (77)
See the conference proceedings
Indexing
- Themes: Other air-conditioning equipment
- Keywords: Operation; Central air treatment plant; Automaton; Testing; Detection; Default
-
An expert rule set for fault detection in air-h...
- Author(s) : HOUSE J. M., VAEZI-NEJAD H., WHITCOMB J. M.
- Date : 2001
- Languages : English
- Source: ASHRAE Transactions. 2001 Winter Meeting, Atlanta, GA. Volume 107, part 1 + CD-ROM.
View record
-
Fresh air fault diagnosis for the mixed air in ...
- Author(s) : HOU Z., LIAN Z.
- Date : 2007/08/21
- Languages : English
- Source: ICR 2007. Refrigeration Creates the Future. Proceedings of the 22nd IIR International Congress of Refrigeration.
- Formats : PDF
View record
-
Entwicklungstendenzen bei Klimageräten.
- Author(s) : BOEHM P.
- Date : 1999/11/17
- Languages : German
- Source: DKV-Tagungsbericht 26. 1999, Berlin.
View record
-
Case studies of measuring the performance of ai...
- Author(s) : WU H. S., CHIANG H. C., YANG B. C., et al.
- Date : 2009/05/20
- Languages : English
- Source: ACRA-2009. The proceedings of the 4th Asian conference on refrigeration and air conditioning: May 20-22, 2009, Taipei, R.O.C.
- Formats : PDF
View record
-
Identifikacija "sivom kutijom" elemenata klima-...
- Author(s) : GHIAUS G., CHICINAS A., INARD C.
- Date : 2005/11/02
- Languages : Serbian
- Source: Zbornik radova pisanih za 36. kongres o klimatizaciji, grejanju, hladenju + CD-ROM./ Proceedings of the 36th International HVAC&R congress + CD-ROM.
View record