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Search results for: APPROXIMATION METHODS, FRACTIONAL CALCULUS, MODELING, NEURAL NETWORKS, RECURRENT NEURAL NETWORKS

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Search results for: APPROXIMATION METHODS, FRACTIONAL CALCULUS, MODELING, NEURAL NETWORKS, RECURRENT NEURAL NETWORKS

  • Katedra Elektrotechniki, Systemów Sterowania i Informatyki

    W Katedrze Elektrotechniki, Systemów Sterowania i Informatyki prowadzone są badania w tematyce podstaw elektrotechniki, zaawansowanych systemów sterowania, prototypowania dedykowanych rozwiązań sprzętowych w FPGA. Prowadzone badania skupiają się również na wykorzystaniu zaawansowanych technik analizy komputerowej w systemach sterowania oraz elektrotechniki.

  • Zespół Systemów Multimedialnych

    * technologie archiwizacji, rekonstrukcji i dostępu do nagrań archiwalnych * technologie inteligentnego monitoringu wizyjnego i akustycznego * multimedialne technologie telemedyczne * multimodalne interfejsy komputerowe

  • Katedra Geodezji

    Research Potential

    Katedra Geodezji realizuje zadania związane z geodezją i kartografią, a przede wszystkim w zakresie geodezji inżynieryjnej, fotogrametrii, teledetekcji, gospodarki nieruchomościami, systemów informacji przestrzennej oraz nawigacji i pomiarów GPS. W ramach Katedry Geodezji funkcjonują Zespoły Dydaktyczne związane z przedmiotami i szkoleniami oraz Zespoły Badawczo-Rozwojowe prowadzące prace naukowe i realizacje techniczne we współpracy...

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Search results for: APPROXIMATION METHODS, FRACTIONAL CALCULUS, MODELING, NEURAL NETWORKS, RECURRENT NEURAL NETWORKS

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Search results for: APPROXIMATION METHODS, FRACTIONAL CALCULUS, MODELING, NEURAL NETWORKS, RECURRENT NEURAL NETWORKS

  • Neural Approximators for Variable-Order Fractional Calculus Operators (VO-FC)

    Publication

    - IEEE Access - Year 2022

    The paper presents research on the approximation of variable-order fractional operators by recurrent neural networks. The research focuses on two basic variable-order fractional operators, i.e., integrator and differentiator. The study includes variations of the order of each fractional operator. The recurrent neural network architecture based on GRU (Gated Recurrent Unit) cells functioned as a neural approximation for selected...

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  • Approximation of Fractional Order Dynamic Systems Using Elman, GRU and LSTM Neural Networks

    Publication

    In the paper, authors explore the possibility of using the recurrent neural networks (RNN) - Elman, GRU and LSTM - for an approximation of the solution of the fractional-orders differential equations. The RNN network parameters are estimated via optimisation with the second order L-BFGS algorithm. It is done based on data from four systems: simple first and second fractional order LTI systems, a system of fractional-order point...

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  • Gesture Recognition With the Linear Optical Sensor and Recurrent Neural Networks

    In this paper, the optical linear sensor, a representative of low-resolution sensors, was investigated in the multiclass recognition of near-field hand gestures. The recurrent neural network (RNN) with a gated recurrent unit (GRU) memory cell was utilized as a gestures classifier. A set of 27 gestures was collected from a group of volunteers. The 27 000 sequences obtained were divided into training, validation, and test subsets....

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  • Recurrent Neural Network Based Adaptive Variable-Order Fractional PID Controller for Small Modular Reactor Thermal Power Control

    This paper presents the synthesis of an adaptive PID type controller in which the variable-order fractional operators are used. Due to the implementation difficulties of fractional order operators, both with a fixed and variable order, on digital control platforms caused by the requirement of infinite memory resources, the fractional operators that are part of the discussed controller were approximated by recurrent neural networks...

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  • Neural networks and deep learning

    Publication

    - Year 2022

    In this chapter we will provide the general and fundamental background related to Neural Networks and Deep Learning techniques. Specifically, we divide the fundamentals of deep learning in three parts, the first one introduces Deep Feed Forward Networks and the main training algorithms in the context of optimization. The second part covers Convolutional Neural Networks (CNN) and discusses their main advantages and shortcomings...

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