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[riv_dodavka_oznaceni] => RIV11-MSM-26210___
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[citace_text] => ZUTH, D. Zdroje nejistot ve vibrodiagnostice. In TD 2010 - Diagon 2010. Zlín: Academica centrum UTB, 2010. s. 55-60. ISBN: 978-80-7318-940-2.
[citace_html] => ZUTH, D. Zdroje nejistot ve vibrodiagnostice. In TD 2010 - Diagon 2010. Zlín: Academica centrum UTB, 2010. s. 55-60. ISBN: 978-80-7318-940-2.
[citace_rtf] =>
[citace_bibtex] => @inproceedings{BUT34719,
author="Daniel {Zuth}",
title="Zdroje nejistot ve vibrodiagnostice",
booktitle="TD 2010 - Diagon 2010",
year="2010",
pages="55--60",
publisher="Academica centrum UTB",
address="Zlín",
isbn="978-80-7318-940-2"
}
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[nazev_en] => Measurement Uncertainties Sources in Vibration Diagnostics
[popis_en] => Diagnostics is part of intricate technology, where diversion breakdown will take economics savings and in some cases also save people's lives. However is necessary let know, that the diagnostics is measuring operation, which is necessary deal with problems uncertainties measuring. This article deal with possible sources of uncertainties in vibrodiagnostics, which is often represented in branch of technical diagnostics. The sources of uncertainties analysis is appear from common principle and do not deal with concrete case.
[klicova_slova_en] => Measurement, Uncertainties, Vibration Diagnostics
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)
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[nazev] => MODEL OF PIPELINE WITH PUMP FOR PREDICTIVE CONTROL
[nazev_orig] => MODEL OF PIPELINE WITH PUMP FOR PREDICTIVE CONTROL
[duvernost_udaju_id] => S
[popis] => The present paper deals with the model of pipeline with pump for large-scale networks based on hydro-electrical analogy. For this purpose, the equation describing one-dimensional flow in the pipeline and the equation describing the water pump were defined. A numerical solution of governing eqution is presented at the end of article.
[popis_orig] => The present paper deals with the model of pipeline with pump for large-scale networks based on hydro-electrical analogy. For this purpose, the equation describing one-dimensional flow in the pipeline and the equation describing the water pump were defined. A numerical solution of governing eqution is presented at the end of article.
[klicova_slova] => hydro-electrical ananlogy, pipeline model, large-scale network, numerical model
[klicova_slova_orig] => hydro-electrical ananlogy, pipeline model, large-scale network, numerical model
[url] =>
[oecd_obor_id] => 20301
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[odpovedny_utvar_nazev] => Institute of Automation and Computer Science
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[nadrazena_soucast_zkratka] => FME
[nadrazena_soucast_nazev] => Faculty of Mechanical Engineering
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[vycet_osob] => KOVÁŘ, J.; BŘEZINA, T.
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[ins_ts] => 2025-09-22
[upd_ts] => 2025-09-22
[status] => 9
[identifikator] => ISBN 978-3-901509-73-5
[identifikator_popis] => ISBN - Annals of DAAAM for 2010 & Proceedings of the 21st International DAAAM Symposium "Intelligent Manufacturing & Automation : Focus on Interdisciplinary Solutions"
[riv_dodavka_id] => 65
[riv_dodavka_oznaceni] => RIV11-MSM-26210___
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[citace_text] => KOVÁŘ, J.; BŘEZINA, T. MODEL OF PIPELINE WITH PUMP FOR PREDICTIVE CONTROL. In Annals of DAAAM for 2010 & Proceedings of the 21st International DAAAM Symposium "Intelligent Manufacturing & Automation : Focus on Interdisciplinary Solutions". Vienna: DAAAM INTERNATIONAL VIENNA 2010, 2010. p. 1363-1364. ISBN: 978-3-901509-73-5.
[citace_html] => KOVÁŘ, J.; BŘEZINA, T. MODEL OF PIPELINE WITH PUMP FOR PREDICTIVE CONTROL. In Annals of DAAAM for 2010 & Proceedings of the 21st International DAAAM Symposium "Intelligent Manufacturing & Automation : Focus on Interdisciplinary Solutions". Vienna: DAAAM INTERNATIONAL VIENNA 2010, 2010. p. 1363-1364. ISBN: 978-3-901509-73-5.
[citace_rtf] =>
[citace_bibtex] => @inproceedings{BUT34798,
author="Jiří {Kovář} and Tomáš {Březina}",
title="MODEL OF PIPELINE WITH PUMP FOR PREDICTIVE CONTROL",
booktitle="Annals of DAAAM for 2010 & Proceedings of the 21st International DAAAM Symposium {"}Intelligent Manufacturing & Automation : Focus on Interdisciplinary Solutions{"}",
year="2010",
pages="1363--1364",
publisher="DAAAM INTERNATIONAL VIENNA 2010",
address="Vienna",
isbn="978-3-901509-73-5"
}
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[nazev_en] => MODEL OF PIPELINE WITH PUMP FOR PREDICTIVE CONTROL
[popis_en] => The present paper deals with the model of pipeline with pump for large-scale networks based on hydro-electrical analogy. For this purpose, the equation describing one-dimensional flow in the pipeline and the equation describing the water pump were defined. A numerical solution of governing eqution is presented at the end of article.
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)
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[nazev] => Bayesian Based Localization of Mobile Robot via Bearing Only Beacons
[nazev_orig] => Bayesian Based Localization of Mobile Robot via Bearing Only Beacons
[duvernost_udaju_id] => S
[popis] => Presented paper deals with a global localization of an autonomous mobile robot in indoor environment. The method is based on the application of Bayesian filter algorithm that processes the bearing only beacons information. The method can successfully localize the robot even for high variances in beacons measurement and low resolution of beacons receiver.
[popis_orig] => Presented paper deals with a global localization of an autonomous mobile robot in indoor environment. The method is based on the application of Bayesian filter algorithm that processes the bearing only beacons information. The method can successfully localize the robot even for high variances in beacons measurement and low resolution of beacons receiver.
[klicova_slova] => Bayesian Filter, Mobile Robots Localization
[klicova_slova_orig] => Bayesian Filter, Mobile Robots Localization
[url] =>
[oecd_obor_id] => 20204
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[vlozil] => Informační systém Automat
[upravil] => Informační systém Automat
[ins_uid] => 999999
[upd_uid] => 999999
[ins_ts] => 2025-09-22
[upd_ts] => 2025-09-22
[status] => 9
[identifikator] => ISBN 978-80-87012-26-0
[identifikator_popis] => ISBN - Engineering Mechanics 2010. Book of extended abstracts.
[riv_dodavka_id] => 65
[riv_dodavka_oznaceni] => RIV11-MSM-26210___
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[citace_text] => VĚCHET, S.; KREJSA, J. Bayesian Based Localization of Mobile Robot via Bearing Only Beacons. In Engineering Mechanics 2010. Book of extended abstracts. 1. Prague: Institute of Thermomechanics, 2010. p. 163-164. ISBN: 978-80-87012-26-0.
[citace_html] => VĚCHET, S.; KREJSA, J. Bayesian Based Localization of Mobile Robot via Bearing Only Beacons. In Engineering Mechanics 2010. Book of extended abstracts. 1. Prague: Institute of Thermomechanics, 2010. p. 163-164. ISBN: 978-80-87012-26-0.
[citace_rtf] =>
[citace_bibtex] => @inproceedings{BUT35116,
author="Stanislav {Věchet} and Jiří {Krejsa}",
title="Bayesian Based Localization of Mobile Robot via Bearing Only Beacons",
booktitle="Engineering Mechanics 2010. Book of extended abstracts.",
year="2010",
series="1",
number="1",
pages="163--164",
publisher="Institute of Thermomechanics",
address="Prague",
isbn="978-80-87012-26-0"
}
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[poznamka_metriky] =>
[nazev_en] => Bayesian Based Localization of Mobile Robot via Bearing Only Beacons
[popis_en] => Presented paper deals with a global localization of an autonomous mobile robot in indoor environment. The method is based on the application of Bayesian filter algorithm that processes the bearing only beacons information. The method can successfully localize the robot even for high variances in beacons measurement and low resolution of beacons receiver.
[klicova_slova_en] => Bayesian Filter, Mobile Robots Localization
[vysledek_datum] => 2010-05-10T00:00:00+02:00
)
[6] => Array
(
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[vysledek_druh_id] => CONPA
[ex_vysledek_id] => 88086
[vysledek_rok] => 2010
[nazev] => GA-Based Dynamic Lot Sizing under Stochastic Demands
[nazev_orig] => GA-Based Dynamic Lot Sizing under Stochastic Demands
[duvernost_udaju_id] => S
[popis] => This paper deals with a dynamic multi-level multi-item lot sizing problem in a general production-assembly structure represented by a directed acyclic network, where each node may have several predecessors and successors. We assume a finite planning horizon consisting of discrete time periods, dynamic lot sizes, multiple constrained resources, time-varying cost parameters and stochastic demands. The objective is to minimize the sum of total production and setup costs and mean values of holding costs and backorder penalty costs. The paper starts from the deterministic model, and investigates a modification of this model for the case of stochastic demands. A solution method based on genetic algorithm is described and results of computational experiments are presented.
[popis_orig] => This paper deals with a dynamic multi-level multi-item lot sizing problem in a general production-assembly structure represented by a directed acyclic network, where each node may have several predecessors and successors. We assume a finite planning horizon consisting of discrete time periods, dynamic lot sizes, multiple constrained resources, time-varying cost parameters and stochastic demands. The objective is to minimize the sum of total production and setup costs and mean values of holding costs and backorder penalty costs. The paper starts from the deterministic model, and investigates a modification of this model for the case of stochastic demands. A solution method based on genetic algorithm is described and results of computational experiments are presented.
[klicova_slova] => dynamic lot sizes, general product structure, stochastic demands, genetic algorithm
[klicova_slova_orig] => dynamic lot sizes, general product structure, stochastic demands, genetic algorithm
[url] =>
[oecd_obor_id] => 10103
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[originalni_jazyk] => en
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[slozka_id] =>
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[vycet_osob] => DVOŘÁK, J.; GRULICH, M.; HERŮDEK, V.
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[vysledek_stav_id] => 3
[vlozil] => Informační systém Automat
[upravil] => Informační systém Automat
[ins_uid] => 999999
[upd_uid] => 999999
[ins_ts] => 2025-09-22
[upd_ts] => 2025-09-22
[status] => 9
[identifikator] => ISBN 978-80-214-4120-0
[identifikator_popis] => ISBN - MENDEL 2010. 16th International Conference on Soft Computing
[riv_dodavka_id] => 65
[riv_dodavka_oznaceni] => RIV11-MSM-26210___
[riv_dodavka_rok] => 2011
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[citace_text] => DVOŘÁK, J.; GRULICH, M.; HERŮDEK, V. GA-Based Dynamic Lot Sizing under Stochastic Demands. In MENDEL 2010. 16th International Conference on Soft Computing. Brno: Brno University of Technology, 2010. p. 453-458. ISBN: 978-80-214-4120-0.
[citace_html] => DVOŘÁK, J.; GRULICH, M.; HERŮDEK, V. GA-Based Dynamic Lot Sizing under Stochastic Demands. In MENDEL 2010. 16th International Conference on Soft Computing. Brno: Brno University of Technology, 2010. p. 453-458. ISBN: 978-80-214-4120-0.
[citace_rtf] =>
[citace_bibtex] => @inproceedings{BUT35283,
author="Jiří {Dvořák} and Martin {Grulich} and Vladimír {Herůdek}",
title="GA-Based Dynamic Lot Sizing under Stochastic Demands",
booktitle="MENDEL 2010. 16th International Conference on Soft Computing",
year="2010",
number="1",
pages="453--458",
publisher="Brno University of Technology",
address="Brno",
isbn="978-80-214-4120-0"
}
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[oecd_tree_podobor_nazev] => Statistics and probability
[poznamka_metriky] =>
[nazev_en] => GA-Based Dynamic Lot Sizing under Stochastic Demands
[popis_en] => This paper deals with a dynamic multi-level multi-item lot sizing problem in a general production-assembly structure represented by a directed acyclic network, where each node may have several predecessors and successors. We assume a finite planning horizon consisting of discrete time periods, dynamic lot sizes, multiple constrained resources, time-varying cost parameters and stochastic demands. The objective is to minimize the sum of total production and setup costs and mean values of holding costs and backorder penalty costs. The paper starts from the deterministic model, and investigates a modification of this model for the case of stochastic demands. A solution method based on genetic algorithm is described and results of computational experiments are presented.
[klicova_slova_en] => dynamic lot sizes, general product structure, stochastic demands, genetic algorithm
[vysledek_datum] => 2010-06-01T00:00:00+02:00
)
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(
[vysledek_id] => 35300
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[nazev] => Sensors Data Fusion via Bayesian Filter
[nazev_orig] => Sensors Data Fusion via Bayesian Filter
[duvernost_udaju_id] => S
[popis] => Presented paper deals with the data fusion of
measured environment attributes obtained from different
kinds of sensors used by autonomous mobile robot. The
method is based on algorithm called Bayesian filter. Implementation
details and simulation experiment that fuses
three different sensors measurement to determine robot
orientation are given in the paper.
[popis_orig] => Presented paper deals with the data fusion of
measured environment attributes obtained from different
kinds of sensors used by autonomous mobile robot. The
method is based on algorithm called Bayesian filter. Implementation
details and simulation experiment that fuses
three different sensors measurement to determine robot
orientation are given in the paper.
[klicova_slova] => Automotive Application, Robotics, Sensor
[klicova_slova_orig] => Automotive Application, Robotics, Sensor
[url] =>
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[nadrazena_soucast_nazev] => Faculty of Mechanical Engineering
[originalni_jazyk] => en
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[vycet_osob] => VĚCHET, S.; KREJSA, J.; ONDROUŠEK, V.
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[upd_ts] => 2025-09-22
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[identifikator] => ISBN 978-1-4244-7854-5
[identifikator_popis] => ISBN - Proceedings of EPE-PEMC 2010
[riv_dodavka_id] => 65
[riv_dodavka_oznaceni] => RIV11-MSM-26210___
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[citace_text] => VĚCHET, S.; KREJSA, J.; ONDROUŠEK, V. Sensors Data Fusion via Bayesian Filter. In Proceedings of EPE-PEMC 2010. Skopje, Republic of Macedonia: 2010. p. T7-29 (T7-34 p.)ISBN: 978-1-4244-7854-5.
[citace_html] => VĚCHET, S.; KREJSA, J.; ONDROUŠEK, V. Sensors Data Fusion via Bayesian Filter. In Proceedings of EPE-PEMC 2010. Skopje, Republic of Macedonia: 2010. p. T7-29 (T7-34 p.)ISBN: 978-1-4244-7854-5.
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[oecd_tree_podobor_nazev] => Robotics and automatic control
[poznamka_metriky] =>
[nazev_en] => Sensors Data Fusion via Bayesian Filter
[popis_en] => Presented paper deals with the data fusion of
measured environment attributes obtained from different
kinds of sensors used by autonomous mobile robot. The
method is based on algorithm called Bayesian filter. Implementation
details and simulation experiment that fuses
three different sensors measurement to determine robot
orientation are given in the paper.
[klicova_slova_en] => Automotive Application, Robotics, Sensor
[vysledek_datum] => 2010-09-06T00:00:00+02:00
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[nazev] => Neuronové sítě z hlediska využitelnosti pro klasifikační účely v managementu
[nazev_orig] => Neuronové sítě z hlediska využitelnosti pro klasifikační účely v managementu
[duvernost_udaju_id] => S
[popis] => Při každodenním i strategickém rozhodování na všech úrovních managementu se objevují klasifikační úlohy. Ke klasifikaci vstupních dat manažerům slouží softwarové nástroje využívající různých přístupů, např. statistické metody, regresní analýzy apod. Velmi zajímavé vlastnosti zde však vykazují umělé neuronové sítě. Článek se zabývá analýzou dostupné literatury a na tomto základě se snaží vybrat nejvhodnější typy neuronových sítí konkrétně pro oblast klasifikačních úloh v managementu.
[popis_orig] => Při každodenním i strategickém rozhodování na všech úrovních managementu se objevují klasifikační úlohy. Ke klasifikaci vstupních dat manažerům slouží softwarové nástroje využívající různých přístupů, např. statistické metody, regresní analýzy apod. Velmi zajímavé vlastnosti zde však vykazují umělé neuronové sítě. Článek se zabývá analýzou dostupné literatury a na tomto základě se snaží vybrat nejvhodnější typy neuronových sítí konkrétně pro oblast klasifikačních úloh v managementu.
[klicova_slova] => Neuronové sítě, klasifikace, management
[klicova_slova_orig] => Neuronové sítě, klasifikace, management
[url] =>
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[vycet_osob] => WEINLICHOVÁ, J.; BOHÁČ, M.
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[upravil] => Informační systém Automat
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[upd_uid] => 999999
[ins_ts] => 2025-09-22
[upd_ts] => 2025-09-22
[status] => 9
[identifikator] => ISBN 978-80-7375-351-1
[identifikator_popis] => ISBN - MendelNET PEF 2009
[riv_dodavka_id] => 24
[riv_dodavka_oznaceni] => RIV12-MSM-26210___
[riv_dodavka_rok] => 2012
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[citace_text] => WEINLICHOVÁ, J.; BOHÁČ, M. Neuronové sítě z hlediska využitelnosti pro klasifikační účely v managementu. In MendelNET PEF 2009. 2009. s. 27-31. ISBN: 978-80-7375-351-1.
[citace_html] => WEINLICHOVÁ, J.; BOHÁČ, M. Neuronové sítě z hlediska využitelnosti pro klasifikační účely v managementu. In MendelNET PEF 2009. 2009. s. 27-31. ISBN: 978-80-7375-351-1.
[citace_rtf] =>
[citace_bibtex] => @inproceedings{BUT35336,
author="Jana {Weinlichová} and Martin {Boháč}",
title="Neuronové sítě z hlediska využitelnosti pro klasifikační účely v managementu",
booktitle="MendelNET PEF 2009",
year="2009",
pages="27--31",
isbn="978-80-7375-351-1"
}
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[nazev_en] => Neural Networks in light of utilization in classification tasks in management
[popis_en] => During an everyday and also in a strategic decision making on all of the managerial levels there are classification tasks. To this entry data classifications managers have an software tools which exploit assorted methods, e.g. statistical methods, regression analysis etc. Very interesting qualities are given there by artificial neural networks. This article is concerned with analysis of an accessible literature and on this ground is trying to choose the most appropriate types of the neural networks concretely for the area of classification tasks in management.
[klicova_slova_en] => Neural Networks, classification, management
[vysledek_datum] => 2009-10-15T00:00:00+02:00
)
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(
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[nazev] => Smart Sensor of Airflow Velocity
[nazev_orig] => Smart Sensor of Airflow Velocity
[duvernost_udaju_id] => S
[popis] => The article deals with air flow velocity measurement in environmental engineering. This value is necessary for assessment of environmental thermal state and consequently for the determination of thermal comfort. Quite a lot of different anemometers are used for measuring. Today we will focus on thermo-anemometers. One of possible solution, which is usable in environmental engineering, will be introduced.
[popis_orig] => The article deals with air flow velocity measurement in environmental engineering. This value is necessary for assessment of environmental thermal state and consequently for the determination of thermal comfort. Quite a lot of different anemometers are used for measuring. Today we will focus on thermo-anemometers. One of possible solution, which is usable in environmental engineering, will be introduced.
[klicova_slova] => Airflow measurement; digital transistor thermo-anemometr; hot-bulb;
[klicova_slova_orig] => Airflow measurement; digital transistor thermo-anemometr; hot-bulb;
[url] =>
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[ins_ts] => 2025-09-22
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[identifikator] => ISBN 978-80-227-3304-5
[identifikator_popis] => ISBN - ME 2010 - Mechanical Engineering 2010
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[riv_dodavka_oznaceni] => RIV11-GA0-26210___
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[citace_text] => JANEČKA, J.; VDOLEČEK, F.; KOŠÍKOVÁ, J.; ZUTH, D. Smart Sensor of Airflow Velocity. In ME 2010 - Mechanical Engineering 2010. Bratislava: STU Bratislava - FME, 2010. p. S2-43 (S2-48 p.)ISBN: 978-80-227-3304-5.
[citace_html] => JANEČKA, J.; VDOLEČEK, F.; KOŠÍKOVÁ, J.; ZUTH, D. Smart Sensor of Airflow Velocity. In ME 2010 - Mechanical Engineering 2010. Bratislava: STU Bratislava - FME, 2010. p. S2-43 (S2-48 p.)ISBN: 978-80-227-3304-5.
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[nazev_en] => Smart Sensor of Airflow Velocity
[popis_en] => The article deals with air flow velocity measurement in environmental engineering. This value is necessary for assessment of environmental thermal state and consequently for the determination of thermal comfort. Quite a lot of different anemometers are used for measuring. Today we will focus on thermo-anemometers. One of possible solution, which is usable in environmental engineering, will be introduced.
[klicova_slova_en] => Airflow measurement; digital transistor thermo-anemometr; hot-bulb;
[vysledek_datum] => 2010-10-21T00:00:00+02:00
)
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(
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[nazev] => Accuracy and Uncertainties in Airflow Measurement
[nazev_orig] => Accuracy and Uncertainties in Airflow Measurement
[duvernost_udaju_id] => S
[popis] => Airflow velocity in the room is one of the basic parameters, which affect the thermal and general human's work comfort. Airflow monitoring is connected with a lot of problems, which reflect upon its measurement uncertainties and consequent accuracy. This report tries to find out the basic measurement uncertainties sources in general, and also the problems connected with particular methods and instruments for the airflow measurement.
[popis_orig] => Airflow velocity in the room is one of the basic parameters, which affect the thermal and general human's work comfort. Airflow monitoring is connected with a lot of problems, which reflect upon its measurement uncertainties and consequent accuracy. This report tries to find out the basic measurement uncertainties sources in general, and also the problems connected with particular methods and instruments for the airflow measurement.
[klicova_slova] => Airflow measurement; digital transistor thermo-anemometr; measurement uncertainty;
[klicova_slova_orig] => Airflow measurement; digital transistor thermo-anemometr; measurement uncertainty;
[url] =>
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[identifikator] => ISBN 978-80-227-3304-5
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[citace_text] => KOŠÍKOVÁ, J.; JANEČKA, J.; VDOLEČEK, F.; ZUTH, D. Accuracy and Uncertainties in Airflow Measurement. In ME 2010 - Mechanical Engineering 2010. Bratislava: STU Bratislava - FME, 2010. p. S2-49 (S2-54 p.)ISBN: 978-80-227-3304-5.
[citace_html] => KOŠÍKOVÁ, J.; JANEČKA, J.; VDOLEČEK, F.; ZUTH, D. Accuracy and Uncertainties in Airflow Measurement. In ME 2010 - Mechanical Engineering 2010. Bratislava: STU Bratislava - FME, 2010. p. S2-49 (S2-54 p.)ISBN: 978-80-227-3304-5.
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[oecd_tree_obor_nazev] => 2.2 Electrical engineering, Electronic engineering, Information engineering
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[oecd_tree_podobor_nazev] => Electrical and electronic engineering
[poznamka_metriky] =>
[nazev_en] => Accuracy and Uncertainties in Airflow Measurement
[popis_en] => Airflow velocity in the room is one of the basic parameters, which affect the thermal and general human's work comfort. Airflow monitoring is connected with a lot of problems, which reflect upon its measurement uncertainties and consequent accuracy. This report tries to find out the basic measurement uncertainties sources in general, and also the problems connected with particular methods and instruments for the airflow measurement.
[klicova_slova_en] => Airflow measurement; digital transistor thermo-anemometr; measurement uncertainty;
[vysledek_datum] => 2010-10-21T00:00:00+02:00
)
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[nazev_orig] => Interactive Approach and Multi-Objective Optimisation
[duvernost_udaju_id] => S
[popis] => The intention of this paper is to show one possible approach to solve a multi-criteria decision making problem using reference point method supplemented with interactive approach. This method is based on optimisation of a scalarising function which is derived from mini-max problem where the functions are defined as the weighted Chebychev-norm of distance from ideal solution. The interactivity is introduced using a realistically assessed desired level, enabling deci-sion maker to change its value and therefore also a weight of the Chebychev-norm. The behaviour of the method is examined and the usability is discussed.
[popis_orig] => The intention of this paper is to show one possible approach to solve a multi-criteria decision making problem using reference point method supplemented with interactive approach. This method is based on optimisation of a scalarising function which is derived from mini-max problem where the functions are defined as the weighted Chebychev-norm of distance from ideal solution. The interactivity is introduced using a realistically assessed desired level, enabling deci-sion maker to change its value and therefore also a weight of the Chebychev-norm. The behaviour of the method is examined and the usability is discussed.
[klicova_slova] => : Operational research; Multi-objective optimisation (MOO); Multi-criteria decision-making (MCDM); Project selection; Interactive methods; Fuzzy sets; Reference point; Scalarising Function; Chebychev-norm of distance; Mini-max
[klicova_slova_orig] => : Operational research; Multi-objective optimisation (MOO); Multi-criteria decision-making (MCDM); Project selection; Interactive methods; Fuzzy sets; Reference point; Scalarising Function; Chebychev-norm of distance; Mini-max
[url] =>
[oecd_obor_id] => 10103
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[nadrazena_soucast_zkratka] => FME
[nadrazena_soucast_nazev] => Faculty of Mechanical Engineering
[originalni_jazyk] => en
[schvalil_id] => 999999
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[upravil] => Informační systém Automat
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[ins_ts] => 2025-09-22
[upd_ts] => 2025-09-22
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[identifikator] => ISBN 978-80-214-4120-0 ISSN 1803-3814
[identifikator_popis] => ISBN - Proceedings of Mendel 2010 16th International Conference on Soft Computing ISSN - Mendel Journal series (CZ)
[riv_dodavka_id] => 65
[riv_dodavka_oznaceni] => RIV11-MSM-26210___
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[citace_text] => ŠEVČÍK, V. Interactive Approach and Multi-Objective Optimisation. In Proceedings of Mendel 2010 16th International Conference on Soft Computing. Mendel Journal series. Brno: VUT Brno, 2010. p. 373-380. ISBN: 978-80-214-4120-0. ISSN: 1803-3814.
[citace_html] => ŠEVČÍK, V. Interactive Approach and Multi-Objective Optimisation. In Proceedings of Mendel 2010 16th International Conference on Soft Computing. Mendel Journal series. Brno: VUT Brno, 2010. p. 373-380. ISBN: 978-80-214-4120-0. ISSN: 1803-3814.
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author="Vítězslav {Popovský}",
title="Interactive Approach and Multi-Objective Optimisation",
booktitle="Proceedings of Mendel 2010 16th International Conference on Soft Computing",
year="2010",
journal="Mendel Journal series",
pages="373--380",
publisher="VUT Brno",
address="Brno",
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[nazev_en] => Interactive Approach and Multi-Objective Optimisation
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[klicova_slova_en] => : Operational research; Multi-objective optimisation (MOO); Multi-criteria decision-making (MCDM); Project selection; Interactive methods; Fuzzy sets; Reference point; Scalarising Function; Chebychev-norm of distance; Mini-max
[vysledek_datum] => 2010-01-01T00:00:00+01:00
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[nazev] => Výběr vhodných charakteristik pro klasifikaci nahrávek na základě hudebních objektů
[nazev_orig] => Výběr vhodných charakteristik pro klasifikaci nahrávek na základě hudebních objektů
[duvernost_udaju_id] => S
[popis] => Příspěvek se zabývá automatickou klasifikací nahrávek na základě hudebních objektů. Jsou zde rozebrány možnosti definice hudebních objektů a je představen způsob definice pomocí množin hudebních ukázek obsahujících definované objekty. Dále jsou v článku setříděny charakteristiky jenž můžeme z akustického signálu získat a je ukázána jejich různá vypovídající schopnost v souvislosti s rozpoznáním konkrétních hudebních objektů. Jsou rozebrány způsoby výběru vhodných charakteristik v souvislosti s konkrétními hudebními objekty.
[popis_orig] => Příspěvek se zabývá automatickou klasifikací nahrávek na základě hudebních objektů. Jsou zde rozebrány možnosti definice hudebních objektů a je představen způsob definice pomocí množin hudebních ukázek obsahujících definované objekty. Dále jsou v článku setříděny charakteristiky jenž můžeme z akustického signálu získat a je ukázána jejich různá vypovídající schopnost v souvislosti s rozpoznáním konkrétních hudebních objektů. Jsou rozebrány způsoby výběru vhodných charakteristik v souvislosti s konkrétními hudebními objekty.
[klicova_slova] => klasifikace, hudební objekt, definice
[klicova_slova_orig] => klasifikace, hudební objekt, definice
[url] =>
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[nadrazena_soucast_nazev] => Faculty of Mechanical Engineering
[originalni_jazyk] => cs
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[vycet_osob] => FEJFAR, J.; ŠŤASTNÝ, J.; LÝSEK, J.
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[ins_ts] => 2025-09-22
[upd_ts] => 2025-09-22
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[identifikator] => ISBN 978-80-7375-385-6
[identifikator_popis] => ISBN - Firma a konkurenční prostředí 2010
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[riv_dodavka_oznaceni] => RIV11-MSM-26210___
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[citace_text] => FEJFAR, J.; ŠŤASTNÝ, J.; LÝSEK, J. Výběr vhodných charakteristik pro klasifikaci nahrávek na základě hudebních objektů. In Firma a konkurenční prostředí 2010. 2010. s. 715-720. ISBN: 978-80-7375-385-6.
[citace_html] => FEJFAR, J.; ŠŤASTNÝ, J.; LÝSEK, J. Výběr vhodných charakteristik pro klasifikaci nahrávek na základě hudebních objektů. In Firma a konkurenční prostředí 2010. 2010. s. 715-720. ISBN: 978-80-7375-385-6.
[citace_rtf] =>
[citace_bibtex] => @inproceedings{BUT35558,
author="Jiří {Fejfar} and Jiří {Šťastný} and Jiří {Lýsek}",
title="Výběr vhodných charakteristik pro klasifikaci nahrávek na základě hudebních objektů",
booktitle="Firma a konkurenční prostředí 2010",
year="2010",
pages="715--720",
isbn="978-80-7375-385-6"
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[poznamka_metriky] =>
[nazev_en] => Selection of apropriate characteristics for classification of recordings based on musical objects
[popis_en] => The article deals with automatic classification of recordings based on musical objects. Possibilities how to define musical objects are described and the way of definition through the set of a musical examples is introduced. Furthermore, characteristics which can be gained from the acoustic signal are sorted and their various predicative ability in classification of different musical objects is shown. Ways of choosing appropriate characteristic in relation to concrete musical objects are described.
[klicova_slova_en] => classification, musical object, definition
[vysledek_datum] => 2010-03-11T00:00:00+01:00
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[quotations] => ŠTENCL, M.; ŠŤASTNÝ, J.
[title] => Neural network learning algorithms comparison on numerical prediction of real data
[typ] => PV
[year] => 2010
[id_vav] => 34565
)
[1] => Array
(
[quotations] => FEJFAR, J.; WEINLICHOVÁ, J.; ŠŤASTNÝ, J.
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[typ] => PV
[year] => 2010
[id_vav] => 34566
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(
[quotations] => VĚCHET, S.; KREJSA, J.; ONDROUŠEK, V.
[title] => Sensor Data Fusion for Mobile Robot.
[typ] => PV
[year] => 2010
[id_vav] => 34587
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[title] => Zdroje nejistot ve vibrodiagnostice
[typ] => PV
[year] => 2010
[id_vav] => 34719
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(
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[typ] => PV
[year] => 2010
[id_vav] => 34798
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(
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[typ] => PV
[year] => 2010
[id_vav] => 35116
)
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(
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[title] => GA-Based Dynamic Lot Sizing under Stochastic Demands
[typ] => PV
[year] => 2010
[id_vav] => 35283
)
[7] => Array
(
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[typ] => PV
[year] => 2010
[id_vav] => 35300
)
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(
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[title] => Neuronové sítě z hlediska využitelnosti pro klasifikační účely v managementu
[typ] => PV
[year] => 2009
[id_vav] => 35336
)
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(
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[typ] => PV
[year] => 2010
[id_vav] => 35407
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(
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[typ] => PV
[year] => 2010
[id_vav] => 35408
)
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(
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[title] => Interactive Approach and Multi-Objective Optimisation
[typ] => PV
[year] => 2010
[id_vav] => 35428
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(
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[typ] => PV
[year] => 2010
[id_vav] => 35558
)
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