Journal of Advanced Research in Instrumentation and Control Engineering

2020 ◽  
2021 ◽  
Vol 62 ◽  
pp. 68-75
Author(s):  
Giansimone Perrino ◽  
Andreas Hadjimitsis ◽  
Rodrigo Ledesma-Amaro ◽  
Guy-Bart Stan

2012 ◽  
Vol 490-495 ◽  
pp. 2286-2289
Author(s):  
Jun Han ◽  
Rui Li Chang

Being established in the requirement of teaching and practice, and connecting to the development of process equipment and control engineering specialty, a suit of experiment teaching instrument is designed, which relates to process control, automation, survey and control and correlative specialties. By the instrument, students can taste the actualizing of process equipment control and the application of advanced technology when learning engineering theory. This stimulates their enthusiasm in specialty courses study and enhances their practice capability and creative thinking


Author(s):  
Mekala Sethuraman ◽  
Geetha Radhakrishnan

Writing is a cardinal skill for effective communication practised extensively from primary education, but the students are not exhibiting adequate writing proficiency in their higher education and at their workplace. This experimental study focuses on enhancing the students’ writing skills by promoting metacognitive strategies in the classroom. The participants of this study are 51 pre-final year Diploma students belonging to the Department of Instrumentation and Control Engineering of an autonomous polytechnic institute in Tamil Nadu. The teacher-researcher has facilitated students’ cognizance with metacognitive strategies employed in the writing tasks administered during the course. The results have exhibited improvement apropos of coherence and unity in the students’ writing skill. It implies the indispensable role of metacognitive strategies in developing the capacity of the learners’ strategic thinking and guiding them to plan, progress, and process their writing into a coherent text.


1961 ◽  
Vol 12 (8) ◽  
pp. 229-229
Author(s):  
C C Ritchie

2021 ◽  
Vol 28 (2) ◽  
pp. 111-123

Nonlinear system identification (NSI) is of great significance to modern scientific engineering and control engineering. Despite their identification ability, the existing analysis methods for nonlinear systems have several limitations. The neural network (NN) can overcome some of these limitations in NSI, but fail to achieve desirable accuracy or training speed. This paper puts forward an NSI method based on adaptive NN, with the aim to further improve the convergence speed and accuracy of NN-based NSI. Specifically, a generic model-based nonlinear system identifier was constructed, which integrates the error feedback and correction of predictive control with the generic model theory. Next, the radial basis function (RBF) NN was optimized by adaptive particle swarm optimization (PSO), and used to build an NSI model. The effectiveness and speed of our model were verified through experiments. The research results provide a reference for applying the adaptive PSO-optimized RBFNN in other fields.


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