Abstract

Proportional, integral and derivative (PID) control strategy has been widely applied in heating systems in decades. To improve the accuracy and the robustness of PID control, self-tuning radial-basis-function neural network PID (RBF-PID) is developed and used. Even though being popular, during the control process both of PID and RBF-PID control strategy are inadequate in achieving simultaneous high energy-efficiency and good control accuracy. To address this problem, in this paper we develop and report an enhanced self-tuning radial-basis-function neural network PID (e-RBF-PID) controller. To identify the superiority of e-RBF-PID, following works are conducted and reported in this paper. Firstly, four controllers, i.e., on-off, PID, RBF-PID and e-RBF-PID are designed. Secondly, in order to test the performance of the e-RBF-PID controller, an experimental water heating system is constructed for being controlled. Finally, the energy consumption for the four controllers under the three control scenarios is investigated through experiments. The experimental results indicate that in the three scenarios, the developed e-RBF-PID controller outperforms on-off controller as having higher accuracy. Compared to the PID controller, the e-RBF-PID controller has higher speed in control, and the experimental results show that settling time savings is between 12.6% - 49.0%. Most importantly, less control energy consumption is obtained if using the e-RBF-PID controller. It is found that up to 28.5% energy consumption can be saved. Therefore, it is concluded that the proposed e-RBF-PID is capable of enhancing energy efficiency during control process.

Highlights

  • Conventional PID ControllerOn-off and proportional, integral and derivative (PID) control strategy has been widely used in industrial control process

  • In this paper we develop and report an enhanced self-tuning radial-basis-function neural network PID (e-RBF-PID) controller

  • It is worth to note that the developed e-RBF-PID outperforms on-off, PID and RBF-PID controller because it has the lowest settling time

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Summary

Conventional PID Controller

On-off and proportional, integral and derivative (PID) control strategy has been widely used in industrial control process. PID control strategy has gained an extensive application in various thermal engineering systems, for instance, heat exchanger [1], refrigeration system [2] [3] and heating, ventilation and air-conditioning (HVAC) system [4] [5]. In these previous researches, controller based on PID control strategy has simple structure and effective control has been achieved. In the above literatures [1]-[10], authors conducted tuning or applied tuned PID gain coefficients for obtaining better performance and higher energy-efficiency of PID controllers. In order to fix the problems, self-tuning has been developed and largely applied in PID controllers

Self-Tuning PID Control
Self-Tuning Radial-Basis-Function Neural Network Controller
Novelty and Originality
Aim and Objectives
Development of RBFNN
RBF-PID Controller
Energy Consumption Indicators
Experimental Water Heating System
Experimental Results
The Variation of Gain Coefficients in RBF and e-RBF-PID Controllers
Conclusions
Full Text
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