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  • About
  • The Global ETD Search service is a free service for researchers to find electronic theses and dissertations. This service is provided by the Networked Digital Library of Theses and Dissertations.
    Our metadata is collected from universities around the world. If you manage a university/consortium/country archive and want to be added, details can be found on the NDLTD website.
71

PV self-consumption: Regression models and data visualization

Tóth, Martos January 2022 (has links)
In Sweden the installed capacity of the residential PV systems is increasing every year. The lack of feed-in-tariff-scheme makes the techno-economic optimization of the PV systems mainly based on the self-consumption. The calculation of this parameter involves hourly building loads and hourly PV generation. This data cannot be obtained easily from households. A predictive model based on already available data would be preferred and needed in this case. The already available machine learning models can be suitable and have been tested but the amount of literature in this topic is fairly low. The machine learning models are using a dataset which includes real measurement data of building loads and simulated PV generation data and the calculated self-consumption data based on these two inputs. The simulation of PV generation can be based on Typical Meteorological Year (TMY) weather file or on measured weather data. The TMY file can be generated quicker and more easily, but it is only spatially matched to the building load, while the measured data is matched temporally and spatially. This thesis investigates if the usage of TMY file leads to any major impact on the performance of the regression models by comparing it to the measured weather file model. In this model the buildings are single-family houses from south Sweden region.  The different building types can have different load profiles which can affect the performance of the model. Because of the different load profiles, the effect of using TMY file may have more significant impact. This thesis also compares the impact of the TMY file usage in the case of multifamily houses and also compares the two building types by performance of the machine learning models. The PV and battery prices are decreasing from year to year. The subsidies in Sweden offer a significant tax credit on battery investments with PV systems. This can make the batteries profitable. Lastly this thesis evaluates the performance of the machine learning models after adding the battery to the system for both TMY and measured data. Also, the optimal system is predicted based on the self-consumption, PV generation and battery size.  The models have high accuracy, the random forest model is above 0.9 R2for all cases. The results confirm that using the TMY file only leads to marginal errors, and it can be used for the training of the models. The battery model has promising results with above 0.9 R2 for four models: random forest, k-NN, MLP and polynomial. The prediction of the optimal system model has promising results as well for the polynomial model with 18% error in predicted payback time compared to the reference. / I Sverige ökar den installerade kapaciteten för solcellsanläggningarna för bostäder varje år. Bristen på inmatningssystem gör att den tekniska ekonomiska optimeringen av solcellssystemen huvudsakligen bygger på egen konsumtion. Beräkningen av denna parameter omfattar byggnadsbelastningar per timme och PV-generering per timme. Dessa uppgifter kan inte lätt erhållas från hushållen. En prediktiv modell baserad på redan tillgängliga data skulle vara att föredra och behövas i detta fall. De redan tillgängliga maskininlärningsmodellerna kan vara lämpliga och redan testade men mängden litteratur i detta ämne är ganska låg. Maskininlärningsmodellerna använder en datauppsättning som inkluderar verkliga mätdata från byggnader och simulerad PV-genereringsdata och den beräknade egenförbrukningsdata baserad på dessa två indata. Simuleringen av PV-generering kan baseras på väderfilen Typical Meteorological Year (TMY) eller på uppmätta väderdata. TMY-filen kan genereras snabbare och enklare, men den anpassas endast rumsligt till byggnadsbelastningen, medan uppmätta data är temporärt och rumsligt. Denna avhandling undersöker om användningen av TMY-fil leder till någon större påverkan på prestandan genom att jämföra den med den uppmätta väderfilsmodellen. I denna modell är byggnaderna småhus från södra Sverige. De olika byggnadstyperna kan ha olika belastningsprofiler vilket kan påverka modellens prestanda. På grund av dessa olika belastningsprofiler kan effekten av att använda TMY-fil ha mer betydande inverkan. Den här avhandlingen jämför också effekten av TMY-filanvändningen i fallet med flerfamiljshus och jämför också de två byggnadstyperna efter prestanda för maskininlärningsmodellerna. PV- och batteripriserna minskar från år till år. Subventionerna i Sverige ger en betydande skattelättnad på batteriinvesteringar med solcellssystem. Detta kan göra batterierna lönsamma. Slutligen utvärderar denna avhandling prestandan för maskininlärningsmodellerna efter att ha lagt till batteriet i systemet för både TMY och uppmätta data. Det optimala systemet förutsägs också baserat på egen förbrukning, årlig byggnadsbelastning, årlig PV-generering och batteristorlek. Modellerna har hög noggrannhet, den slumpmässiga skogsmodellen är över 0,9 R2 för alla fall. Resultaten bekräftar att användningen av TMY-filen endast leder till marginella fel, och den kan användas för träning av modellerna. Batterimodellen har lovande resultat med över 0,9 R2 för fyra modeller: random skog, k-NN, MLP och polynom. Förutsägelsen av den optimala systemmodellen har också lovande resultat för polynommodellen med 18 % fel i förutspådd återbetalningstid jämfört med referensen.
72

Rozpoznání hudebního slohu z orchestrální nahrávky za pomoci technik Music Information Retrieval / Recognition of music style from orchestral recording using Music Information Retrieval techniques

Jelínková, Jana January 2020 (has links)
As all genres of popular music, classical music consists of many different subgenres. The aim of this work is to recognize those subgenres from orchestral recordings. It is focused on the time period from the very end of 16th century to the beginning of 20th century, which means that Baroque era, Classical era and Romantic era are researched. The Music Information Retrieval (MIR) method was used to classify chosen subgenres. In the first phase of MIR method, parameters were extracted from musical recordings and were evaluated. Only the best parameters were used as input data for machine learning classifiers, to be specific: kNN (K-Nearest Neighbor), LDA (Linear Discriminant Analysis), GMM (Gaussian Mixture Models) and SVM (Support Vector Machines). In the final chapter, all the best results are summarized. According to the results, there is significant difference between the Baroque era and the other researched eras. This significant difference led to better identification of the Baroque era recordings. On the contrary, Classical era ended up to be relatively similar to Romantic era and therefore all classifiers had less success in identification of recordings from this era. The results are in line with music theory and characteristics of chosen musical eras.
73

Moderní řečové příznaky používané při diagnóze chorob / State of the art speech features used during the Parkinson disease diagnosis

Bílý, Ondřej January 2011 (has links)
This work deals with the diagnosis of Parkinson's disease by analyzing the speech signal. At the beginning of this work there is described speech signal production. The following is a description of the speech signal analysis, its preparation and subsequent feature extraction. Next there is described Parkinson's disease and change of the speech signal by this disability. The following describes the symptoms, which are used for the diagnosis of Parkinson's disease (FCR, VSA, VOT, etc.). Another part of the work deals with the selection and reduction symptoms using the learning algorithms (SVM, ANN, k-NN) and their subsequent evaluation. In the last part of the thesis is described a program to count symptoms. Further is described selection and the end evaluated all the result.

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