File(s) stored somewhere else
Please note: Linked content is NOT stored on Figshare and we can't guarantee its availability, quality, security or accept any liability.
Classification of tea specimens using novel hybrid artificial intelligence methods
journal contribution
posted on 2017-11-16, 01:06 authored by Paweł PławiakPaweł Pławiak, Wojciech MaziarzTwo innovative systems based on feed-forward and recurrent neural network used for qualitative analysis has been applied to specimens of different fruit tea. Their performance was compared against the conventional methods of artificial intelligence. The proposed systems are a combination of data preprocessing methods, genetic algorithms and Levenberg–Marquardt (LM) algorithm used for learning feed forward and recurrent neural networks. The initial weights and biases of neural networks chosen by the use of genetic algorithms were then tuned with a LM algorithm. The evaluation was made on the basis of accuracy and complexity criteria. The main advantage of the proposed systems is the elimination of the random selection of the network weights and biases resulting in the increased efficiency of the systems.
History
Usage metrics
Categories
Keywords
Artificial intelligence methodsPattern recognitionNeural networksGenetic algorithmsFuzzy systemsHybrid systemsEvolutionary-neural systemsTeaE-noseExpert SystemsHealth InformaticsBiomedical Engineering not elsewhere classifiedKnowledge Representation and Machine LearningPattern Recognition and Data Mining
Licence
Exports
RefWorks
BibTeX
Ref. manager
Endnote
DataCite
NLM
DC