ImageVerifierCode 换一换
格式:DOC , 页数:19 ,大小:1.10MB ,
资源ID:22720      下载积分:10 金币
验证码下载
登录下载
邮箱地址:
验证码: 获取验证码
温馨提示:
支付成功后,系统会自动生成账号(用户名为邮箱地址,密码是验证码),方便下次登录下载和查询订单;
特别说明:
请自助下载,系统不会自动发送文件的哦; 如果您已付费,想二次下载,请登录后访问:我的下载记录
支付方式: 支付宝   
验证码:   换一换

 

温馨提示:由于个人手机设置不同,如果发现不能下载,请复制以下地址【https://www.thwenku.com/down/22720.html】到电脑端继续下载(重复下载不扣费)。

已注册用户请登录:
账号:
密码:
验证码:   换一换
  忘记密码?
三方登录: 微信登录   QQ登录  
下载须知

1: 本站所有资源如无特殊说明,都需要本地电脑安装OFFICE2007和PDF阅读器。
2: 试题试卷类文档,如果标题没有明确说明有答案则都视为没有答案,请知晓。
3: 文件的所有权益归上传用户所有。
4. 未经权益所有人同意不得将文件中的内容挪作商业或盈利用途。
5. 本站仅提供交流平台,并不能对任何下载内容负责。
6. 下载文件中如有侵权或不适当内容,请与我们联系,我们立即纠正。
7. 本站不保证下载资源的准确性、安全性和完整性, 同时也不承担用户因使用这些下载资源对自己和他人造成任何形式的伤害或损失。

版权提示 | 免责声明

本文(外文翻译-热过程中的一个案例研究与模糊增益调度控制分辨率的PLC.doc)为本站会员主动上传,图海文库仅提供信息存储空间,仅对用户上传内容的表现方式做保护处理,对上载内容本身不做任何修改或编辑。 若此文所含内容侵犯了您的版权或隐私,请立即通知图海文库(发送邮件至admin@thwenku.com或直接QQ联系客服),我们立即给予删除!

外文翻译-热过程中的一个案例研究与模糊增益调度控制分辨率的PLC.doc

1、A fuzzy PLC with gain-scheduling control resolutionfor a thermal process - a case studyH.-X. Li*, S.K. TsoCenter for Intelligent Design, Automation and Manufacturing, Faculty of Science and Technology, City University of Hong Kong,Tat Chee A venue, Kowloon, Hong KongReceived 2 July 1998; accepted 6

2、November 1998AbstractThis paper presents a case study on the practical implementation of a fuzzy-PLC system for a thermal process. The theoretical study indicates that the inferior performance of fuzzy-controlled processes around a reference point is often caused by insufficient resolution of the fu

3、zzy inference. The limitations of ladder logic cannot support complex algorithms for resolution improvement. A simple gain adaptation method is presented here, to achieve smooth fuzzy control, that can be easily implemented in a PLC system. Real-time experiments on an unidentified thermal process sh

4、ow the effectiveness of the approach, as well as the robustness of the fuzzy controller with respect to the time-varying features of the process. (1999Elsevier Science td . All rights reserved. Keywords: Fuzzy control; Fuzzy-plc systems; Gain scheduling; Process control; Fuzzy sets1. IntroductionIn

5、industrial automation applications, ladder logic, a programming language running on the so-called programmable logic controllers (PLCs) (Erickson, 1996), is usually used for discrete event control. For continuous control, either bang bang-type control or PID-type controllers are more often employed.

6、 In 1974, the first fuzzy control application appeared (Mamdani, 1974). Since then, fuzzy-logic control (FLC) has been taken as the preferred method of designing controllers for dynamic systems, even where traditional methods can be used (Mamdani, 1993). In the early 1990s, when more and more succes

7、sful industrial automation applications were proving the potential of fuzzy logic, the fuzzy-PLC systems came on to the market. These systems tightly integrate fuzzy logicwith conventional industrial automation technologies. Many applications of fuzzy-PLC systems have been reported (Von Altrock and

8、Gebhardt, 1996).Thermal plants are very sensitive to environmental variations, and require highly robust performance for temperature control. Since the linear controller may not be robust enough with respect to the time-varying properties of the process, fuzzy-logic control (FLC) becomes a good cand

9、idate when a fuzzy-PLC system is available. On the other hand, FLC may have other problems that the linear controllers do not have. Practical experiments show inferior performance of FLC around the reference point, partially due to the complex resolution required for complex processes. A second set

10、of fine membership functions (MFs)/look-up tables, which can provide finer control, was used in some fuzzy systems to replace the coarse MFs/tables when the error falls within preset limits (Li and Lau, 1989; Liaw and Wang, 1991). However, this method is not applicable to fuzzy-PLC systems due to th

11、e complexity of the systems and the difficulties of tuning. A simple but effective method is required to improve the performance in practice.In this paper, a practical method is introduced, using gain scheduling. This approach can adapt to different resolution requirements by adjusting only the scal

12、ing gains. The method is effective, and can be easily implemented using ladder logic in the PLC. A properly designed fuzzy-PLC system is then very successful for controlling a thermal plant with time-varying features.2. The architecture of fuzzy-PLC systems and a problem descriptionThe architecture

13、of an OMRON fuzzy-PLC system can be seen in Fig. 1. The basic function modules are I/O, Fig. 1. Architecture of a basic fuzzy-PLC system.processor and fuzzy-logic inference. Fuzzy inference consists of several operations, as shown in Fig. 2: fuzzification, inference, and defuzzification. Though the

14、fuzzy-logic inference module on the PLC carries out the fuzzy-inference operation, a separate software tool on a PC programs the knowledge base required for the inference. This software tool is linked to the fuzzy-PLC system by a standard serial cable (RS232), through which the developer downloads t

15、he designed knowledge base to the fuzzy-PLC system. The fuzzy inference becomes a function to be called by the ladder logic when needed.A fuzzy variable is defined by a set of membership functions (MFs). The support for a given MF is the set of points in the region for which the grade k is positive.

16、 The resolution of each MF depends on the grade () distribution over its support. Since there is a crisp-fuzzy or fuzzy-crisp conversion, the resolution of the fuzzy inference depends heavily on the resolution of both the fuzzy input and output variables, while the resolution of a fuzzy variable depends on the MF design. Inappropriate MFs of a fuzzy variable may lose some input information, resulting in a poor resolutio

网站客服QQ:2356858848

  客服联系电话:18503783681

copyright@ 2008-2022 thwenku网站版权所有

ICP备案:豫ICP备2022023751号-1


>


客服