ASHRAE 4747-2005 Neural-Based Air-Handling Unit for Indoor Relative Humidity and Temperature Control《为室内相对湿度和温度控制而设的基于神经网络的空气处理机组》.pdf
《ASHRAE 4747-2005 Neural-Based Air-Handling Unit for Indoor Relative Humidity and Temperature Control《为室内相对湿度和温度控制而设的基于神经网络的空气处理机组》.pdf》由会员分享,可在线阅读,更多相关《ASHRAE 4747-2005 Neural-Based Air-Handling Unit for Indoor Relative Humidity and Temperature Control《为室内相对湿度和温度控制而设的基于神经网络的空气处理机组》.pdf(8页珍藏版)》请在麦多课文档分享上搜索。
1、4747 Neural-Based Air-Handling Unit for Indoor Relative Humidity and Temperature Control Q. Zhang S.C. Fok, PhD ABSTRACT Humidity is an importantfactor contributingto one s ther- mal sensation and comfort. It also afJects onespercepiion of the air quality. Air-conditioning systems often encounter hu
2、midityproblems at low cooling load. Thispaperproposes an intelligent controller for an air-handling unit to control the temperature while limiting the humidity below 70%. The proposed scheme is based on the back-propagation-through- time approach. It uses artiJicia1 neural networks to develop an emu
3、lator to learn on-line the plant dynamics and a controller to control the fan speed and chilled water valve opening in real time. The neural-based controller was implemented on an industrial air handler for performance validation purposes. The implementation results show that the intelligent control
4、ler could efectively control the temperature and humidity within the operating range investigated. The results also indicate the potential of intelligent controllers as practical alternatives for controlling nonlinear and complex air-conditioning systems. INTRODUCTION Indoor humidity is a major cons
5、ideration in the design of an air-conditioning system. It may not only cause discomfort, but it may also be associated with poor health. Addendum 62x to ASHRAE Standard 62-200 1 (ASHRAE 2003) has recom- mended 65% as the upper limit for the relative humidity for habitable spaces. A high humidity sit
6、uation normally happens when the sensible cooling load is low. To avoid such a situa- tion, Singapores Code ofpractice for Mechanical Ventilation and Air Conditioning in Buildings (Singapore 1999) requires an air-conditioning system to be designed such that the indoor relative humidity does not exce
7、ed 70% when the sensible cool- ing load is at half of its design value. Y.W. Wong Fellow ASHRAE T.Y. Bong, PhD Fellow ASHRAE Air-conditioning systems are designed to supply air at either a constant flow rate or a variable flow rate, hence the names constant-air-volume (CAV) system and variable-air-
8、volume (VAV) system. In both systems, the air is treated using a cooling coil andfor heating coil housed in an air-handling unit (AHU) where the fan to supply the air is located. In CAV systems, the indoor temperature is maintained constant by varying the rate of chilled water flowing through the co
9、oling coil. VAV systems perform favorably to meet part-load condi- tions (Cappellin 1997). McQuiston and Parker (1 994) had proposed that the water-side control technique be used in conjunction with VAV and face-and-bypass dampers. However, all these techniques can still lead to an indoor rela- tive
10、 humidity exceeding 70% at certain part-load operation. The failure of air-conditioning systems in regulating both temperature and relative humidity is associated with the controller design. For example, if the cooling load falls below its design value, the sensible capacity of the cooling coil has
11、to be reduced to maintain the indoor temperature, leading to an increase in the indoor humidity above its design value. This is a common occurrence in hot and humid regions such as Singapore. One way to overcome this problem is to overcool the supply air so that more moisture can be removed. The air
12、 is then reheated to the required temperature to maintain the indoor temperature and humidity. The disadvantage of this approach is that extra energy and equipment are needed in overcooling and reheating the air. Currently, most air-conditioning systems are controlled using the PIPID technique, whic
13、h optimizes and fixes the controller gains based on a design condition. Since most oper- ating conditions seldom exactly match the design condition, Qi Zhang is a research student, Y. W. Wong is an associate professor, and T.Y. Bong is an associate professorial fellow in the School of Mechanical and
14、 Production Engineering, Nanyang Technological University, Singapore. S. C. Fok is an associate professor on the Faculty of Engineering and Surveying, Universiy of Southern Queensland, Toowoomba, Australia. 02005 ASHRAE. 63 the performance of the controller may not be optimal during operation when t
15、here are changes in the operation parameters. In the past a few years, there has been a growing interest in the use of artificial intelligence approaches such as neural networks for the control of practical industrial processes. Neural networks have been investigated in many areas of heat- ing, vent
16、ilating, and air-conditioning (HVAC) systems. Correctly configured neural networks could learn to produce the required outputs even though the relationship between inputs and outputs is difficult to describe. This paper aims to develop a scheme to control the indoor air temperature, together with re
17、lative humidity, in a VAV system. The controller involves two feed-forward neural networks to regulate the temperature and limit relative humid- ity within 70%. The project was implemented in tropical Singapore, where only cooling operation is required. Two control variables are the cooling water va
18、lve opening and the fan speed (driven by a variable-speed driver, VSD). The neural-based controller was developed on a PC and imple- mented on an industrial AHU for performance validation purposes. AHU MODEL DEVELOPMENT The design of a controller is dependent on the dynamics of the plant to be regul
19、ated. Although an intelligent controller should be able to self-learn and adapt to the plant changes, a plant model is still needed to initiate the design of the intelli- gent controller. The habitable space under consideration is an office building with floor space of about 38 m x14 m x 2.6 m (124.
20、7 ft x 46 ft x 8.5 fi). The AHU involved is a VAV system (central chilled water system), a horizontal draw-through type with 78.64 kW cooling capacity. A building automation system provides monitoring and controls for the main mechanical and electrical services for the whole system. To develop the p
21、lant model, essential parameters were measured under different operating conditions after the orig- inal PI controller was disabled. The measured parameters include the responses of the indoor air temperature and relative humidity under different combinations of chilled water valve openings and fan
22、speeds. They are labeled asyl,y2, ul, and u2, respectively: yl is the air temperature (OC), y2 is the relative humidity (%), u1 is the two-way valve actuation opening signal, and u2 is the fan speed. The first two variables are the outputs to be controlled and the latter two constitute the control i
23、nputs. The valid range of u1 and u2 is from O to 100%. For ul, it corresponds to O to 100% opening of the cooling water valve. For u2, it is linearly associated with 25 to 40 Hz VSD output frequency. The lower limit meets the minimum requirements for the ventilation rate. To simplisl the model, the
24、dynamic interaction was treated as disturbance. The dampers in the VAV boxes were fixed based on their average values associated with normal operating conditions in a week before the data collection. The data collected were used to develop a simple model relating the plant input to output relationsh
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