Application of predictive control methods for Radio telescope disk rotation control

被引:0
作者
Sergej Jakovlev
Miroslav Voznak
Arunas Andziulis
Kestutis Ruibys
机构
[1] Klaipeda University,Department of Telecommunications
[2] VSB-Technical University of Ostrava,undefined
来源
Soft Computing | 2014年 / 18卷
关键词
Predictive control; Multi-layer perceptron; Neural network; Data processing;
D O I
暂无
中图分类号
学科分类号
摘要
Radio telescope (RT) installations are highly valuable assets and during the period of their service life they need regular repair and maintenance to be carried out for delivering satisfactory performance and minimizing downtime. Same down time can be expected during machinery usage. Constant control of telescope rotation angle is done manually using visual inspection of hardware. The accuracy of this procedure is very low, therefore, automation and computer control systems are required. With the growing automation technologies, predictive control can prove to be a better approach than the traditionally applied visual inspection policy and linear control models. In this paper, Irbene Radio telescope RT-16 disk rotation control motors are analysed using control voltage from the converters. Retrieved data from the small DC motor is used for the predictive control approach using two different methods: a neural network trained with Basic Levenberg-Marquardt method and a linear model. A multilayer perceptron network approach is used for prediction of the indicator voltage output which affects the monitoring of the disk rotating angle. Finally, an experimental control system was proposed and installed using National Instruments equipment.
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页码:707 / 716
页数:9
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共 32 条
[1]  
Ferreau HJ(2007)Predictive control of a real-world Diesel engine using an extended online active set strategy Annu Rev Control 31 293-301
[2]  
Ortner P(2005)Performance of the Levenberg–Marquardt neural network training method in electronic nose applications Sens Actuat B Chem 110 13-22
[3]  
Langthaler P(2012)Comparing the performance of neural networks developed by using Levenberg–Marquardt and Quasi-Newton with the gradient descent algorithm for modelling a multiple response grinding process Expert Syst Appl 39 2397-2407
[4]  
Re L(2011)Optimizing neural networks for river flow forecasting—evolutionary Computation methods versus the Levenberg–Marquardt approach J Hydrol 407 12-27
[5]  
Diehl M(2006)Intelligent adaptive nonlinear flight control for a high performance aircraft with neural networks ISA Trans 45 225-247
[6]  
Kermani BG(2007)Bars problem solving—new neural network method and comparison Lect Notes Comput Sci 4827 671-682
[7]  
Schiffman SS(2008)Day-ahead price forecasting in restructured power systems using artificial neural networks Electric Power Syst Res 78 1332-1342
[8]  
Mukherjee I(2011)Neural network predictive control of a heat exchanger Appl Thermal Eng 31 2094-2100
[9]  
Routroy S(2006)Adaptive neural network model based predictive control for air-fuel ratio of SI engines Eng Appl Artif Intell 19 189-200
[10]  
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