Some new Contributions to Neural Networks and Wavelets with Applications

In this Ph.D. thesis, we focus on some problems of general interest both in engineering sciences and applied mathematics. The close connection between some problems concerning neural networks, wavelets, structural health monitoring, and modern Fourier analysis is highlighted and applied in various w...

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Bibliographic Details
Main Author: Tangrand, Kristoffer Meyer
Format: Doctoral or Postdoctoral Thesis
Language:English
Published: UiT Norges arktiske universitet 2023
Subjects:
Online Access:https://hdl.handle.net/10037/28699
Description
Summary:In this Ph.D. thesis, we focus on some problems of general interest both in engineering sciences and applied mathematics. The close connection between some problems concerning neural networks, wavelets, structural health monitoring, and modern Fourier analysis is highlighted and applied in various ways. The main body of the Ph.D. thesis consists of six papers, A–F, which are put into a more general frame in the introduction. In Paper A we present a case for how systematic use of energy flexibility can be an important instrument for managing peak loads and voltage problems in weak power grids. The FLEXNETT Simulator addresses production and energy dynamics down to every 10 minutes. A recurrent neural network was used to generate realistic values for the simulator. In Paper B we made a case for using a combination of time series from nonintrusive ambient sensors and recurrent neural networks to predict room usage at a university campus. Training data was created by collecting measurements from ambient sensors measuring room CO 2 , humidity, temperature, light, motion, and sound. The findings in papers A and B led to inquiries concerning the learning ability of machine learning models. In Paper C we propose a new approach to machine learning of geometric manifolds in R n using single-layer or deep neural networks, Wavelet-Based Neural Networks (WBNN). Deep WBNNs provide a highly efficient computing architecture for the acceleration of the rate of convergence of the approximation process by using iterative algorithms. The investigations in paper C inspired further research on actual engineering problems where, e.g., wavelets are of crucial importance. In Paper D we investigate the impact of extreme arctic conditions on civil engineering infrastructures. Research and development of new methods are needed for damage detection in these structures. Advances in artificial intelligence could help solve the problem of structural damage detection, especially in arctic regions. In paper E, a new example of the applications ...