National Repository of Grey Literature 4 records found  Search took 0.00 seconds. 
Learnable Evolution Model for Optimization (LEM)
Grunt, Pavel ; Vašíček, Zdeněk (referee) ; Schwarz, Josef (advisor)
My thesis is dealing with the Learnable Evolution Model (LEM), a new evolutionary method of optimization, which employs a classification algorithm. The optimization process is guided by a characteristics of differences between groups of high and low performance solutions in the population. In this thesis I introduce new variants of LEM using classification algorithm AdaBoost or SVM. The qualities of proposed LEM variants were validated in a series of experiments in static and dynamic enviroment. The results have shown that the metod has better results with smaller group sizes. When compared to the Estimation of Distribution Algorithm, the LEM variants achieve comparable or better values faster. However, the LEM variant which combined the AdaBoost approach with the SVM approach had the best overall performance.
Library of Service Routines for Peripherals on Educational Kit with Freescale MCU
Grunt, Pavel ; Tříska, Vít (referee) ; Šimek, Václav (advisor)
The thesis deals with designing and implementation of a library of service routines for peripherals on educational kit with Freescale microcontrollers. It presents the laboratory kit, features of individual peripherals and ways of comunication with them. Further, the thesis describes developing the driver for LCD touchscreen on auxiliary kit module and its use in graphic library Freescale eGUI.
Library of Service Routines for Peripherals on Educational Kit with Freescale MCU
Grunt, Pavel ; Tříska, Vít (referee) ; Šimek, Václav (advisor)
The thesis deals with designing and implementation of a library of service routines for peripherals on educational kit with Freescale microcontrollers. It presents the laboratory kit, features of individual peripherals and ways of comunication with them. Further, the thesis describes developing the driver for LCD touchscreen on auxiliary kit module and its use in graphic library Freescale eGUI.
Learnable Evolution Model for Optimization (LEM)
Grunt, Pavel ; Vašíček, Zdeněk (referee) ; Schwarz, Josef (advisor)
My thesis is dealing with the Learnable Evolution Model (LEM), a new evolutionary method of optimization, which employs a classification algorithm. The optimization process is guided by a characteristics of differences between groups of high and low performance solutions in the population. In this thesis I introduce new variants of LEM using classification algorithm AdaBoost or SVM. The qualities of proposed LEM variants were validated in a series of experiments in static and dynamic enviroment. The results have shown that the metod has better results with smaller group sizes. When compared to the Estimation of Distribution Algorithm, the LEM variants achieve comparable or better values faster. However, the LEM variant which combined the AdaBoost approach with the SVM approach had the best overall performance.

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