ASHRAE OR-05-13-2-2005 Application of Fault Detection and Diagnosis Techniques to Automated Functional Testing《故障检测与诊断技术的应用和自动化功能测试》.pdf
《ASHRAE OR-05-13-2-2005 Application of Fault Detection and Diagnosis Techniques to Automated Functional Testing《故障检测与诊断技术的应用和自动化功能测试》.pdf》由会员分享,可在线阅读,更多相关《ASHRAE OR-05-13-2-2005 Application of Fault Detection and Diagnosis Techniques to Automated Functional Testing《故障检测与诊断技术的应用和自动化功能测试》.pdf(7页珍藏版)》请在麦多课文档分享上搜索。
1、OR-05-1 3-2 Application of Fault Detection and Diagnosis Techniques to Automated Functional Testing Richard M. Kelso, PhD, PE Fellow ASHRAE ABSTRACT Extensive research in the field offault detection and diag- nosis hasproduced useful tools and techniques that have been applied to continuously operat
2、ing building HVAC systems. A few researchers have applied some of these to commissioning of new buildings. This paper reports on aproject that adapted or developed models of air-handling unit components and controls and combined them into an automatedfunctional test- ing tool. Operation of the tool
3、is demonstrated in testing a real air-handling unit. FAULT DETECTION AND DIAGNOSIS METHODS Faults in the sensors of a control system can be detected by the addition of redundant sensors, often called hardware redundancy. This approach utilizes several sensors to measure the same variable. A fault in
4、 one sensor is detected when its reading varies sufficiently from the mean readings of the other sensors. Such redundancy is expensive and can become quite complicated. For some time researchers have been investigat- ing the concept of automated fault detection and diagnosis (FDD) of HVAC systems (H
5、yvarinen and Karki 1996). In this concept, HVAC systems that have direct digital control (DDC) systems can be programmed to search for, detect, and diagnose problems in the control system itself or in the HVAC system. In FDD, models of the process provide analytical redundancy (Patton et al. 1989; B
6、raun and Rossi in Hyvarinen and Karki 1996). Analytical redundancy replaces hardware redundancy with dissimilar sensors measuring different variables, but which are functionally related by the state of the system. The application of FDD to HVAC systems has been studied exten- sively under the sponso
7、rship of the International Energy Agency (IEA) Annex 25 (Hyvarinen and Karki 1996) and Jonathan A. Wright, PhD Member ASHRAE Annex 34 (Dexter and Pakanen 2001). Norford et al. (2000) tested two types of FDD schemes with both known and unknown faults using the systems at the Iowa Energy Centers Energ
8、y Resource Station (IEC ERS), the location of the auto- mated functional tests described in this work. The fault detection and diagnosis work has been focused on identiQing changes in a system as it operates over extended time periods. Thus it can be considered a form of commission- ing on a continu
9、ous basis. The goal of finding faulty operation is the same, although the types of faults and the methods may differ. Some researchers (Dexter et al. 1993; Haves et al. 1993) have applied portions of the FDD theories to the commission- ing process. Salsbury and Diamond (1999) presented the results o
10、f an automated commissioning test on a simulated dual-duct air-handling unit. This paper describes another application of the use of models based on first principles to the functional testing of an air-handling unit. Faults in a system can be detected and diagnosed by comparing the values of output
11、variables against a set of rules that establish the values expected under various combinations of input variables for both correct and faulty operation. This method is relatively easy to develop and operate, but it has the distinct disadvantage that it cannot deal with unexpected conditions or fault
12、s that are not anticipated in the rules. Model- based fault detection and diagnosis uses reference models of the system or components to provide analytical redundancy. Values of output variables read from the system are compared with reference values predicted by the models. Differences between the
13、two, termed innovations in FDD work but labeled deviations in commissioning work, are indicators for detec- tion of faulty operation (Figure 1). Two broad approaches to model-based FDD have emerged from the research. One uses “black box” models such Richard M. Kelso is a professor at the University
14、of Tennessee, Knoxville, Tenn. Jonathan A. Wright is a senior lecturer at Loughborough University, Loughborough, Leicestershire, UK. 964 02005 ASHRAE. Control Deviations Figure 2 Detection of faults using first principles models and design intent parameters (Salsbury 1996). Figure 1 lnformation flow
15、 diagram for reference models. Reference parametem i Parameter deviations Figure 3 Diagnosis of faults by parameter re-estimation (Salsbury 1996). as neural networks. These models do not require prior knowl- edge of the physical relationships of the system but do require inputs from a correctly oper
16、ating system to “train“ the model so that subsequent incorrect operation is detectable. The models are only valid over the range of training data and cannot extrapolate outside this region. The second approach uses mathematical models derived from known physical relationships, or first principles. P
17、aram- eters for these models, if identified from design information, enable the model to represent the engineering design intent as the correct operation standard. Differences between values of model output variables and system output variables indicate incorrect or faulty operation. Figure 2 is an
18、information flow Reference M odcl Installed System Measured Figure 4 Fault diagnosis by expert rules. diagram showing the fault detection process used in this report. Faults detected by the presence of these differences, termed deviations herein (because they are initial differences and not changes
19、from initial agreements), can be diagnosed by comparison with a set of expert rules or by optimization of the parameters. Optimization is accomplished by altering the values of the parameters until the modeled outputs match the measured outputs or until the parameter changes are mini- mized. Differe
20、nces in the parameter values serve as indicators of the magnitude of faults, Figure 3 shows the method of diag- nosis using parameter re-estimation. Commissioning has the advantage over operational fault detection and diagnosis in that each component can be excited by a series of control inputs sele
21、cted to expose faults ifpresent. The fault can be isolated to the selected component by testing each component in series while progressing downstream along the air path of the AHU. The expert rules can be less complicated if each component can be tested in turn. Figure 4 diagrams the concept. ASHRAE
22、 Transactions: Symposia 965 Intake Preheat Louver Coil L Heating Water Cooling Water Figure 5 Diagram of air-handling unit and system. A building HVAC system must be tested when the construction schedule indicates, not when the thermal condi- tions are optimal. The models, then, must be reliable and
23、 accu- rate over a range of operating conditions, not just at fll load, and they must be able to extrapolate from the test conditions to design conditions. First principles models are suitable for such extrapolation. Simple but reasonably accurate models that incorporate parameters for control chara
24、cteristics such as leakage, nonlinearity, and hysteresis are required. Simplicity is desirable for ease of understanding and computer coding as well as for efficient use of computer memory. These principles of FDD will be applied in functional testing of the assembly of coils, fans, filters, and mix
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