Print Email Facebook Twitter System Identification of the 2B6 Wind Turbine Title System Identification of the 2B6 Wind Turbine: A regularised PBSIDopt approach Author Aarden, Piet (TU Delft Mechanical, Maritime and Materials Engineering; TU Delft Delft Center for Systems and Control) Contributor van Wingerden, Jan-Willem (mentor) Delgado, Roberto (mentor) Beerens, Jan (mentor) Degree granting institution Delft University of Technology Date 2017-08-02 Abstract Making offshore wind energy more cost competitive in comparison to fossil-fuel based production, is vital to maintain the direction the European Union has taken in renewable energy. Increasing the lifetime of a turbine can play a big role in driving down the overall costs of energy. The more energy the turbine is able to produce in its lifetime, the lower the costs per MWh will be. Fatigue damage is one of the limiting factors in a turbine’s lifetime. These damages are inversely proportional to the damping ratios and as such, estimating these ratios accurately, allows for optimisation of the structural design as well for improving control algorithms.Modelling software is used to estimate the modal properties, such as damping ratios, in thedesign phase of a turbine. However, these modelled properties often have a mismatch withreality due to differences in material properties, soil characteristic and others. Design basedon these mismatched properties can lead to suboptimal control and a decrease in lifetime ofthe turbine. In order to eliminate this mismatch, it is of importance to accurately obtain themodal properties from the real turbine.System identification can play an important role in this. Using measurement data obtainedduring idling and operation of the turbine, the modal properties can be identified. Whenusing measurement data, the danger of over-fitting is always present however. Often, a tradeoffneeds to be made between the variance and bias of the estimation. To protect againstill-conditioned data matrices, as well to better deal with the variance-bias trade-off, regularisationcan be added to the identification algorithm.The first goal of this thesis is to successfully identify the modal properties of the first towermodes and first coupled drive-train mode of a real turbine. Secondly, the effect of addingregularisation will be examined on the estimation of these modal properties. The optimisedPredictor Based Subspace Identification algorithm will be used for identification. This willbe extended to include Tikhonov regularisation, truncated SVD regularisation and nuclearnorm regularisation. The performance of these techniques are compared in two case studies,after which one is selected to be used on the measurement data from the turbine.What follows is the estimation of modal properties from the turbine and evaluation of theresults for both with and without added regularisation. Subject Modal analysisdamping estimationwind turbine To reference this document use: http://resolver.tudelft.nl/uuid:aeda4001-7942-4a76-931d-f65dfff40f33 Part of collection Student theses Document type master thesis Rights © 2017 Piet Aarden Files PDF Piet_Aarden_MSc_Thesis_Co ... ersion.pdf 4.96 MB Close viewer /islandora/object/uuid:aeda4001-7942-4a76-931d-f65dfff40f33/datastream/OBJ/view