Skip to main content

OPTIMIZATION OF ARTIFICIAL NEURAL NETWORK MODEL FOR IMPROVEMENT OF ARTIFICIAL INTELLIGENCE OF MANUALLY DRIVEN BRICK MAKING MACHINE POWERED BY HPFM

OPTIMIZATION OF ARTIFICIAL NEURAL NETWORK MODEL FOR IMPROVEMENT OF ARTIFICIAL INTELLIGENCE OF MANUALLY DRIVEN BRICK MAKING MACHINE POWERED BY HPFM

P. A. Chandak1 and J. P. Modak2 1Department of Mechanical Engineering, DMIETR, Wardha (MH), India 2 Professor Emeritus, Dean (R&D), PCE, Nagpur(MH), India

ABSTRACT 

Considerable development has been done by some authors of this paper towards development of manufacturing process units energized by Human Powered Flywheel Motor (HPFM) as an energy source. This machine system comprises three sub systems namely (i) HPFM (ii) Torsionally Flexible Clutch (TFC) (iii) A Process Unit. Process unit so far tried are mostly rural based such as brick making machine (both rectangular and keyed cross sectioned), Low head water lifting, Wood turning, Wood strips cutting, etc HPFM comprises pedalling system similar to bicycle, a speed rising gear pair and a flywheel big enough such that a young lad of 21-25 years, 165cm height, slim structure can pump energy around 30,000 N-m in minutes time. Once such an energy is stored peddling is stopped and a special type of TFC is engaged which very efficiently brings about momentum and energy transfer from flywheel to a process unit. Process unit utilization time upon clutch engagement is 5 to 15 seconds depending on the application. In other word process units needing power of order of 3 hp to 10 hp can be powered by such a machine concept. Experimental data base model is formulated for Human Powered Flywheel Motor Energized Brick Making Machine (HPFMEBMM). The focus of the present paper is on development of an optimum Artificial Neural Network (ANN) model which will predict the experimental evidences accurately and precisely. The optimization is acknowledged though variation of various parameters of ANN topology like training algorithm, learning algorithm, size of hidden layer, number of hidden layers, etc while training the network and accepting the best value of that parameter. The paper also discusses the effects and results of variation of various parameters on prediction of network. 

KEYWORDS 

ANN, Matlab, Manually driven brick making machine. Simulation



Comments

Popular posts from this blog

Comparison of Support Vector Machines and Deep Learning for Plant Classification in Smart Agriculture Applications

Comparison of Support Vector Machines and Deep Learning for Plant Classification in Smart Agriculture Applications Authors Esmael Hamuda 1, Ashkan Parsi 2, Martin Glavin 2 and Edward Jones 2, 1 Elmergib University, Libya, 2 University of Galway, Ireland Abstract In this paper, we investigate the use of deep learning approaches for plant classification (cauliflower and weeds) in smart agriculture applications. To perform this, five approaches were considered, two based on well-known deep learning architectures (AlexNet and GoogleNet), and three based on Support Vector Machine (SVM) classifiers with different feature sets (Bag of Words in L*a*b colour space, Bag of Words in HSV colour space, Bag of Words of Speeded-up Robust Features (SURF)). Two types of datasets were used in this study: one without Data Augmentation and the second one with Data Augmentation. Each algorithm's performance was tested with one data set similar to the training data, and a second data set acquired under ...

Submit your Research Article - International Journal of Chaos, Control, Modelling and Simulation (IJCCMS)

Submit your Research Article!! International Journal of Chaos, Control, Modelling and Simulation (IJCCMS) ISSN :  2319 - 5398 [Online] ; 2319 - 8990 [Print] Webpage URL:  https://airccse.org/journal/ijccms/index.html Submission URL:  http://coneco2009.com/submissions/imagination/home.html Here's where you can reach us :  ijccmsjournal@yahoo.com or ijccms@aircconline.com

6th International Conference of Control Theory and Computer Modelling (CTCM 2020)

October 24 ~ 25, 2020, Dubai, UAE https://csen2020.org/ctcm/index.html Submission Deadline: July 26, 2020 Contact us: Here's where you can reach us: ctcm@csen2020.org (or) ctcmconference@yahoo.com Submission Link: https://csen2020.org/submission/index.php