嵌入式可编程逻辑控制器算法中英文翻译.doc
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1、外文文献翻译 Advanced control algorithms embedded in a programmableAbstractThis paper presents an innovative self-tuning nonlinear controller ASPECT (advanced control algorithms for programmable logic controllers). It is intended for the control of highly nonlinear processes whose properties change radica
2、lly over its range of operation, and includes three advanced control algorithms. It is designed using the concepts of agent-based systems, applied with the aim of automating some of the configuration tasks. The process is represented by a set of low-order local linear models whose parameters are ide
3、ntified using an online learning procedure. This procedure combines model identification with pre- and post identification steps to provide reliable operation. The controller monitors and evaluates the control performance of the closed-loop system. The controller was implemented on a programmable lo
4、gic controller (PLC). The performance is illustrated on a field test application for control of pressure on a hydraulic valves 2005 Elsevier Ltd. All rights reserved.Keywords: Control engineering; Fuzzy modelling; Industrial control; Model-based control; Nonlinear control; Programmable logic control
5、lers; Self tuning regulators1. IntroductionModern control theory offers many control methods to achieve more efficient control of nonlinear processes than provided by conventional linear methods, taking advantage of more accurate process models (Bequette, 1991; Henson & Seborg, 1997; Murray-Smith &
6、Johansen, 1997). Surveys (Takatsu, Itoh, & Araki,1998; Seborg, 1999) indicate that while there is a considerable and growing market for advanced controllers, relatively few vendors offer turn-key products. Excellent results of advanced control concepts, based on fuzzy parameter scheduling (Tan, Hang
7、, & Chai,1997; Babus ka, Oosterhoff, Oudshoorn, & Bruijn,2002), multiple-model control (Dougherty & Cooper,2003; Gundala, Hoo, & Piovoso, 2000), and adaptive control (Henson & Seborg, 1994; Ha gland & A strom,2000), have been reported in the literature. However, there are several restrictions for ap
8、plying these methods in industrialapplications, as summarized below:(1)Because of the diversity of real-life problems, a single nonlinear control method has a relatively narrow field of application. Therefore, more flexible methods or a toolbox of methods are required in industry.(2)New methods are
9、usually not available in a ready-to use industrial form. Custom design requires considerable effort, time and money.(3)The hardware requirements are relatively high, due to the complexity of implementation and computational demands.(4)The complexity of tuning (Babus ka et al., 2002) and maintenance
10、makes the methods unattractive to nonspecialised engineers.(5)The reliability of nonlinear modelling is often in question.(6)Many nonlinear processes can be controlled using the well-known and industrially proven PID controller. A considerable direct performance increase (financial gain) is demanded
11、 when replacing a conventional control system with an advanced one. The maintenance costs of an inadequate conventional control solution may be less obvious. The aim of this work is to design an advanced controller that addresses some of the aforementioned problems by using the concepts of agent-bas
12、ed systems (ABS) (Wooldridge & Jennings, 1995). The main purpose is to simplify controller configuration by partial automation of the commissioning procedure, which is typically performed by the control engineer. ABS solve difficult problems by assigning tasks to networked software agents. The softw
13、are agents are characterized by properties such as autonomy (operation without direct intervention of humans), social ability (interaction with other agents), reactivity (perception and response to the environment), pro-activeness (goal-directed behaviour,taking the initiative), etc. This work does
14、not address issues of ABS theory, but rather the application of the basic concepts of ABS to the field of process systems engineering. In this context, a number of limits have to be considered. For example: initiative is restricted, a high degree of reliability and predictability is demanded, insigh
15、t into the problem domain is limited to the sensor readings, specific hardware platforms are used, etc. The ASPECT controller is an efficient and user-friendly engineering tool for implementation of parameter-scheduling control in the process industry. The commissioning of the controller is simplifi
16、ed by automatic experimentation and tuning. A distinguishing feature of the controller is that the algorithms are adapted for implementation on PLC or open controller Industrial hardware platforms. The controller parameters are automatically tuned from a nonlinear process model. The model is obtaine
17、d from operating process signals by experimental modelling,using a novel online learning procedure. This procedure is based on model identification using the local learning approach (Murray-Smith & Johansen,1997, p. 188). The measurement data are processed batch-wise. Additional steps are performed
18、before and after identification in order to improve the reliability of modelling, compared to adaptive methods that use recursive identification continuously (Ha gland & A strom,2000).The nonlinear model comprises a set of local lowered linear models, each of which is valid over a specified operatin
19、g region. The active local model(s) is selected using a configured scheduling variable. The controller is specifically designed for single-input, single output processes that may include a measured disturbance used for feed-forward. Additionally, the application range of the controller depends on th
20、e selected control algorithm. A modular structure of the controller permits use of a range of control algorithms that are most suitable for different processes. The controller monitors the resulting control performance and reacts to detected irregularities. The controller comprises the run-time modu
21、le (RTM) and the configuration tool (CT). The RTM runs on a PLC, performing all the main functionality of real-time control, online learning and control performance monitoring. The CT, used on a personal computer (PC) during the initial configuration phase, simplifies the configuration procedure by
22、providing guidance and default parameter values. The outline of the paper is as follows: Section 2 presents an overview of the RTM structure and describes its most important modules; Section 3 gives a brief description of the CT; and finally, Section 4 describes the application of the controller to
23、a pilot plant where it is used for control of the pressure difference on a hydraulic valve in a valve test apparatus.2. Run-Time ModuleThe RTM of the ASPECT controller comprises a set of modules, linked in the form of a multi-agent system. Fig. 1 shows an overview of the RTM and its main modules: th
24、e signal pre-processing agent (SPA), the online learning agent (OLA), the model information agent (MIA), the control algorithm agent (CAA), the control performance monitor (CPM), and the operation supervisor (OS).2.1. Multi-faceted model (MFM)The ASPECT controller is based on the multi-faceted model
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