sequential classification
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Polymers ◽  
2021 ◽  
Vol 13 (16) ◽  
pp. 2592
Author(s):  
Nesrine Amor ◽  
Muhammad Tayyab Noman ◽  
Michal Petru

Polymer based textile composites have gained much attention in recent years and gradually transformed the growth of industries especially automobiles, construction, aerospace and composites. The inclusion of natural polymeric fibres as reinforcement in carbon fibre reinforced composites manufacturing delineates an economic way, enhances their surface, structural and mechanical properties by providing better bonding conditions. Almost all textile-based products are associated with quality, price and consumer’s satisfaction. Therefore, classification of textiles products and fibre reinforced polymer composites is a challenging task. This paper focuses on the classification of various problems in textile processes and fibre reinforced polymer composites by artificial neural networks, genetic algorithm and fuzzy logic. Moreover, their limitations associated with state-of-the-art processes and some relatively new and sequential classification methods are also proposed and discussed in detail in this paper.


Author(s):  
Emre Kurtoglu ◽  
Ali C. Gurbuz ◽  
Evie Malaia ◽  
Darrin Griffin ◽  
Chris Crawford ◽  
...  

2021 ◽  
Vol 67 (5) ◽  
pp. 3095-3113
Author(s):  
Mahdi Haghifam ◽  
Vincent Y. F. Tan ◽  
Ashish Khisti

2021 ◽  
Author(s):  
Noraimi Shafie ◽  
Mohamad Zulkefli Adam ◽  
Hafiza Abas ◽  
Azizul Azizan

Symmetry ◽  
2020 ◽  
Vol 12 (8) ◽  
pp. 1292
Author(s):  
Ahmed Adnan ◽  
Abdullah Muhammed ◽  
Abdul Azim Abd Ghani ◽  
Azizol Abdullah ◽  
Fahrul Hakim

Existing stream data learning models with limited labeling have many limitations, most importantly, algorithms that suffer from a limited capability to adapt to the evolving nature of data, which is called concept drift. Hence, the algorithm must overcome the problem of dynamic update in the internal parameters or countering the concept drift. However, using neural network-based semi-supervised stream data learning is not adequate due to the need for capturing quickly the changes in the distribution and characteristics of various classes of the data whilst avoiding the effect of the outdated stored knowledge in neural networks (NN). This article presents a prominent framework that integrates each of the NN, a meta-heuristic based on evolutionary genetic algorithm (GA) and a core online-offline clustering (Core). The framework trains the NN on previously labeled data and its knowledge is used to calculate the error of the core online-offline clustering block. The genetic optimization is responsible for selecting the best parameters of the core model to minimize the error. This integration aims to handle the concept drift. We designated this model as hyper-heuristic framework for semi-supervised classification or HH-F. Experimental results of the application of HH-F on real datasets prove the superiority of the proposed framework over the existing state-of-the art approaches used in the literature for sequential classification data with evolving nature.


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