scholarly journals Advance Predictions of critical digressions in a noisy industrial process- performance of Extreme Learning Machines versus Artificial Neural Networks

2018 ◽  
Vol 51 (1) ◽  
pp. 98-105 ◽  
Author(s):  
Ravinithesh Reddy ◽  
Arya K. Bhattacharya ◽  
G. Rishita
Sensors ◽  
2021 ◽  
Vol 21 (23) ◽  
pp. 8096
Author(s):  
Paulo S. G. de Mattos Neto ◽  
João F. L. de Oliveira ◽  
Priscilla Bassetto ◽  
Hugo Valadares Siqueira ◽  
Luciano Barbosa ◽  
...  

The employment of smart meters for energy consumption monitoring is essential for planning and management of power generation systems. In this context, forecasting energy consumption is a valuable asset for decision making, since it can improve the predictability of forthcoming demand to energy providers. In this work, we propose a data-driven ensemble that combines five single well-known models in the forecasting literature: a statistical linear autoregressive model and four artificial neural networks: (radial basis function, multilayer perceptron, extreme learning machines, and echo state networks). The proposed ensemble employs extreme learning machines as the combination model due to its simplicity, learning speed, and greater ability of generalization in comparison to other artificial neural networks. The experiments were conducted on real consumption data collected from a smart meter in a one-step-ahead forecasting scenario. The results using five different performance metrics demonstrate that our solution outperforms other statistical, machine learning, and ensembles models proposed in the literature.


2022 ◽  
pp. 749-782
Author(s):  
Srinivas Soumitri Miriyala ◽  
Kishalay Mitra

Surrogate models, capable of emulating the robust first principle based models, facilitate the online implementation of computationally expensive industrial process optimization. However, the heuristic estimation of parameters governing the surrogate building often renders them erroneous or under-trained. Current work aims at presenting a novel parameter free surrogate building approach, specifically focusing on Artificial Neural Networks. The proposed algorithm implements Sobol sampling plan and intelligently designs the configuration of network with simultaneous estimation of optimal transfer function and training sample size to prevent overfitting and enabling maximum prediction accuracy. A novel Sample Size Determination algorithm based on a potential concept of hypercube sampling technique adds to the speed of surrogate building algorithm, thereby assuring faster convergence. Surrogates models for a highly nonlinear industrial sintering process constructed using the novel algorithm resulted in 7 times faster optimization.


2012 ◽  
Vol 43 (4) ◽  
pp. 558-565 ◽  
Author(s):  
Bashir Rahmanian ◽  
Majid Pakizeh ◽  
Seyed Ali Akbar Mansoori ◽  
Morteza Esfandyari ◽  
Dariush Jafari ◽  
...  

1995 ◽  
Vol 28 (3) ◽  
pp. 59-65
Author(s):  
R. Simutis ◽  
I. Havlik ◽  
F. Schneider ◽  
M. Dors ◽  
A. Lübbert

Author(s):  
Srinivas Soumitri Miriyala ◽  
Kishalay Mitra

Surrogate models, capable of emulating the robust first principle based models, facilitate the online implementation of computationally expensive industrial process optimization. However, the heuristic estimation of parameters governing the surrogate building often renders them erroneous or under-trained. Current work aims at presenting a novel parameter free surrogate building approach, specifically focusing on Artificial Neural Networks. The proposed algorithm implements Sobol sampling plan and intelligently designs the configuration of network with simultaneous estimation of optimal transfer function and training sample size to prevent overfitting and enabling maximum prediction accuracy. A novel Sample Size Determination algorithm based on a potential concept of hypercube sampling technique adds to the speed of surrogate building algorithm, thereby assuring faster convergence. Surrogates models for a highly nonlinear industrial sintering process constructed using the novel algorithm resulted in 7 times faster optimization.


Author(s):  
Levy Boccato ◽  
Everton S. Soares ◽  
Marcos M. L. P. Fernandes ◽  
Diogo C. Soriano ◽  
Romis Attux

This work presents a discussion about the relationship between the contributions of Alan Turing – the centenary of whose birth is celebrated in 2012 – to the field of artificial neural networks and modern unorganized machines: reservoir computing (RC) approaches and extreme learning machines (ELMs). Firstly, the authors review Turing’s connectionist proposals and also expose the fundamentals of the main RC paradigms – echo state networks and liquid state machines, - as well as of the design and training of ELMs. Throughout this exposition, the main points of contact between Turing’s ideas and these modern perspectives are outlined, being, then, duly summarized in the second and final part of the work. This paper is useful in offering a distinct appreciation of Turing’s pioneering contributions to the field of neural networks and also in indicating some perspectives for the future development of the field that may arise from the synergy between these views.


2011 ◽  
Vol 2 (4) ◽  
pp. 1-16 ◽  
Author(s):  
Levy Boccato ◽  
Everton S. Soares ◽  
Marcos M. L. P. Fernandes ◽  
Diogo C. Soriano ◽  
Romis Attux

This work presents a discussion about the relationship between the contributions of Alan Turing – the centenary of whose birth is celebrated in 2012 – to the field of artificial neural networks and modern unorganized machines: reservoir computing (RC) approaches and extreme learning machines (ELMs). Firstly, the authors review Turing’s connectionist proposals and also expose the fundamentals of the main RC paradigms – echo state networks and liquid state machines, - as well as of the design and training of ELMs. Throughout this exposition, the main points of contact between Turing’s ideas and these modern perspectives are outlined, being, then, duly summarized in the second and final part of the work. This paper is useful in offering a distinct appreciation of Turing’s pioneering contributions to the field of neural networks and also in indicating some perspectives for the future development of the field that may arise from the synergy between these views.


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