VAŇHARA, Jaromír, Josef HAVEL a Peter FEDOR. ANN in Science: Entomology., pp. 23-32. In, Havel J. & Vaňhara J., Redes neuronales en Ciencia. Tenerife, Spain: Universidad de La Laguna,, 2009, 54 s. TF-1750/2009.
Další formáty:   BibTeX LaTeX RIS
Základní údaje
Originální název ANN in Science: Entomology., pp. 23-32. In, Havel J. & Vaňhara J., Redes neuronales en Ciencia.
Název česky ANN v přírodních vědách: Entomologie
Autoři VAŇHARA, Jaromír (203 Česká republika, garant, domácí), Josef HAVEL (203 Česká republika, domácí) a Peter FEDOR (703 Slovensko).
Vydání Tenerife, Spain, 54 s. TF-1750/2009, 2009.
Nakladatel Universidad de La Laguna,
Další údaje
Originální jazyk angličtina
Typ výsledku Učební texty pomůcky (vč. dílčích kapitol v učebnicích)
Obor 10201 Computer sciences, information science, bioinformatics
Stát vydavatele Španělsko
Utajení není předmětem státního či obchodního tajemství
Kód RIV RIV/00216224:14310/09:00036883
Organizační jednotka Přírodovědecká fakulta
Klíčová slova anglicky ANN; Biology; Entomology; Botany; Chemistry; Physics
Příznaky Mezinárodní význam
Změnil Změnil: prof. RNDr. Jaromír Vaňhara, CSc., učo 391. Změněno: 19. 3. 2013 15:15.
Anotace
Artificial Neural Networks (ANN) belonging to the Artificial Intelligence methods play an ever increasing role in modern science. Developed in the 1950s, inspired by the neuron structure and the way how human brain works they have been finding increasingly powerful and exciting applications in all branches of science. While via hard model chemical or biological systems can be exactly described by formulas, equations and the values of parameters, ANN using a soft model can do the same even when the exact description is not known or is too complex. ANN are often thought to be something mysterious, very difficult to understand and therefore presented just as a black box. Therefore the principals of ANN will be explained and their enormous potential for modelling of a broad range of processes fitting under virtually all areas of science will be elucidated. Utilisation of ANN will be documented on abundant examples from numerous areas of science and chemistry including analytical chemistry which is the speaker s primary field of expertise. The examples involve applications in classification, biology, medical diagnosis, forensic science, soft modelling of various chemical processes, QSAR, optimisation, multicomponent analysis, process analysis, and optimization of analytical methods for the determination of a broad range of analytes including simple ions, antiviral drugs, pharmaceutical products, antidotes against chemical weapons, nucleotides, complex peptides/protein mixtures etc.
Anotace česky
Artificial Neural Networks (ANN) belonging to the Artificial Intelligence methods play an ever increasing role in modern science. Developed in the 1950s, inspired by the neuron structure and the way how human brain works they have been finding increasingly powerful and exciting applications in all branches of science. While via hard model chemical or biological systems can be exactly described by formulas, equations and the values of parameters, ANN using a soft model can do the same even when the exact description is not known or is too complex. ANN are often thought to be something mysterious, very difficult to understand and therefore presented just as a black box. Therefore the principals of ANN will be explained and their enormous potential for modelling of a broad range of processes fitting under virtually all areas of science will be elucidated. Utilisation of ANN will be documented on abundant examples from numerous areas of science and chemistry including analytical chemistry which is the speaker s primary field of expertise. The examples involve applications in classification, biology, medical diagnosis, forensic science, soft modelling of various chemical processes, QSAR, optimisation, multicomponent analysis, process analysis, and optimization of analytical methods for the determination of a broad range of analytes including simple ions, antiviral drugs, pharmaceutical products, antidotes against chemical weapons, nucleotides, complex peptides/protein mixtures etc.
Návaznosti
MSM0021622416, záměrNázev: Diverzita biotických společenstev a populací: kauzální analýza variability v prostoru a čase
Investor: Ministerstvo školství, mládeže a tělovýchovy ČR, Diverzita biotických společenstev: kauzální analýza variability v prostoru a čase
VytisknoutZobrazeno: 2. 10. 2024 16:53