Refine
Year of publication
Document Type
- Bachelor Thesis (98)
- Master's Thesis (31)
- Conference Proceeding (23)
- Article (12)
- Part of Periodical (10)
- Book (3)
- Report (3)
- Part of a Book (2)
- Doctoral Thesis (2)
- Working Paper (2)
Language
- German (144)
- English (41)
- Multiple languages (1)
Has Fulltext
- yes (186) (remove)
Is part of the Bibliography
- no (186)
Keywords
Institute
- Fachbereich 1 - Institut Informatik (59)
- Fachbereich 2 - Wirtschaftsinstitut (51)
- Fachbereich 4 - Institut Mess- und Senstortechnik (41)
- Fachbereich 3 - Institut Bauingenieurwesen (11)
- Fachbereich 1 - Institut Energiesysteme und Energiewirtschaft (10)
- Fachbereich 3 - Institut Maschinenbau (5)
- Fachbereich 4 - Institut Naturwissenschaften (1)
The goal of this empirical study is to answer whether predictions about stock price movements can be made with the use of machine learning in the energy sector and what influence contributions from social media have on its development. To answer the research
question, the social media platforms Twitter and Reddit, in terms of the suitability of the information, were studied and evaluated. Then, the sentiments of the posts from social media were collected and used in machine learning models. The models include the Gradient Boosted Regression Tree, Multilayer Perceptron, and Long Short-Term
i Memory, which predict a subsequent day's closing stock price. The study showed that deviations from predictions of stock price movements of 1.05 % are possible and further sentiment values do not show significant positive effect on reducing the error value. The
result shows that the collected sentiments from the social media platform Twitter have no positive effect on the stock price movements within the energy industry.
Keywords: stock market, stock prediction, artificial neural networks, machine learning,
energy market, sentiment analysis
Vergleich von Logistischer Regression und Deep Learning bei der Vorhersage von Schlaganfällen
(2022)
Die Bachelorarbeit befasst sich mit dem Vergleich von Logistischer
Regression und Deep Learning bei der Vorhersage von Schlaganfällen
hinsichtlich der Frage, ob in einer binären Klassifikationsaufgabe die
komplexe und aufwändige Methode des Deep Learnings sich bei
Anwendung auf kleine tabellarische Datensätze bewährt oder ob
Logistische Regression als Basismodell des Maschinellen Lernens
effizienter ist. Methodisch werden folgende Schritte ausgeführt:
Beschreibung beider Modelle, Durchführung der Datenvorbereitung unter
Verwendung des „Stroke Prediction Dataset“ von Kaggle, Implementierung
beider Methoden mit dem gleichen angepassten Datensatz. Der
abschließende Vergleich benennt als Fazit die Unterschiede in den
Ergebnissen und Voraussetzungen für den sinnvollen Einsatz beider
Methoden. Eine Schlussfolgerung angesichts der geringen
Ergebnisunterschiede hinsichtlich der Prognosegenauigkeit der
Schlaganfallrisikos dürfte sein, dass Deep Learning, um ökonomisch
sinnvoll bei tabellarischen in kleineren Datensätzen eingesetzt zu werden, aktuell noch nicht genügend bessere Ergebnisse vorweist.
Background:
Influential actors detection in social media such as twitter or Facebook can play a major role in gathering opinions on particular topics, improving the market
-
ing efficiency, predicting the trends, etc.
Proposed methods:
This work aims to extend our formally defined
T
measure to
present a new measure aiming to recognize the actor’s influence by the strength of
attracting new important actors into a networked community. Therefore, we propose a
model of the actor’s influence based on the attractiveness of the actor in relation to the
number of other attractors with whom he/she has established connections over time.
Results and conclusions:
Using an empirically collected social network for the
underlying graph, we have applied the above-mentioned measure of influence in
order to determine optimal seeds in a simulation of influence maximization. We study
our extended measure in the context of information diffusion because this measure is
based on a model of actors who attract others to be active members in a community.
This corresponds to the idea of the IC simulation model which is used to identify the
most important spreaders in a set of actors.
Keywords: Actor influence, Social media networks, Twitter, IC model, Information
diffusion, Independent cascade model, T measure
Die Digitalisierung des deutschen Gesundheitswesens ist im direkten Vergleich zu anderen Branchen und Gesundheitswesen deutlich im Rückstand. Ursachen für diesen Rückstand sollten identifiziert werden, um aus den gefundenen Faktoren Handlungsempfehlungen zu entwickeln, die dabei helfen sollen künftige Digitalisierungsprojekte effizienter zu gestalten. Zur Identifizierung wurde zunächst eine unstrukturierte Literaturrecherche durchgeführt, gefolgt von Experteninterviews, die den eigentlichen Kern der Arbeit darstellen. Die ausgewählten Probanden stellen Beteiligten des Projektes elektronische Arbeitsunfähigkeitsbescheinigung dar, dessen Projektverlauf evaluiert wurde, um aus den Herausforderungen zu lernen.
Efficient and reliable onsite inspection methods are gaining importance as the construc-tion of PV power plants is expanding. For large PV installations, time- and cost-efficient failure detection is essential for optimized operation and maintenance. For this purpose, various optical methods as Infrared thermography (IR), Electroluminescence (EL), Pho-toluminescence (PL) and Ultraviolet Fluorescence (UVF) are employed and under con-stant development. For each method, the camera, and eventually the light source, can be handheld, or mounted on a drone, also called unmanned aircraft vehicle (UAV), to achieve higher throughputs.
IR is the most widely used optical onsite PV inspection method, as many defects can be detected by the thermal radiation (heating) of the defect component. EL and PL reveal further information on the electrical behaviour of the Si-waver. They are also widely used and take the role of a complement to IR, showing electrically active/inactive areas of the semiconductor. On the other hand, UVF focuses on the degradation of the polymeric encapsulant of the Si-cell, most commonly consisting of EVA (ethylene-vinyl acetate). The degradation of the encapsulant can lead to its discoloration, also called yellow-ing/browning, which decreases the transmittance of visual light. UVF patterns can show this yellowing as well as humidity and oxygen entrances, which can lead to effects of corrosion. Both mechanisms (discoloration and corrosion) decrease the performance of the PV cell. The discoloration cannot be directly observed on IR or EL images, as the encapsulant is neither a heat source nor electroconductive. Using IR imagery, severe discoloration might be observed indirectly, as the reduced optical transmittance leads to changes in heat transfer mechanisms concerning the cell and the encapsulant.
Similarly, as long as corrosion does not lead to inactive cell areas or heating, it most likely will not be spotted using EL, PL or IR. So, UVF can fill the niche of inspecting the state of the encapsulant and detecting its defects due to climate impacts in early stages.
While a high number of studies on IR, EL, PL and some on UVF were performed in Europe and the USA, there are not yet many studies about the application of these tech-niques in South America (i.e., in Brazil). UVF mainly depends on climate factors (irradi-ation, temperature, humidity) and the operation time/”age” of the module. The UVF im-agery method has not yet been tested in climate and system conditions of Brazil. Fur-thermore, systems in Brazil are more recently installed. All this can affect differences in the results of UVF imagery applied in Europe, the USA and Brazil.
The present work focuses on the application of UVF imaging on PV power plants in Bra-zil, the creation of an experimental setup and the proposal of proceedings for the data analysis of the acquired images. The aim is to propose a method that is suitable for large-scale inspection.
Electro-magnetic acoustic transducers (EMATs) are intended as non-contact and non-destructive ultrasound transducers for metallic material. The transmitted intensities from EMATS are modest, particularly at notable lift off distances. Some time ago a concept for a “coil only EMAT” was presented, without static magnetic field. In this contribution, such compact “coil only EMATs” with effective areas of 1–5 cm2 were driven to excessive power levels at MHz frequencies, using pulsed power technologies. RF induction currents of 10 kA and tens of Megawatts are applied. With increasing power the electroacoustic conversion efficiency also increases. The total effect is of second order or quadratic, therefore non-linear and progressive, and yields strong ultrasound signals up to kW/cm2 at MHz frequencies in the metal. Even at considerable lift off distances (cm) the ultrasound can be readily detected. Test materials are aluminum, ferromagnetic steel and stainless steel (non-ferromagnetic). Thereby, most metal types are represented. The technique is compared experimentally with other non-contact methods: laser pulse induced ultrasound and spark induced ultrasound, both damaging to the test object’s surface. At small lift off distances, the intensity from this EMAT concept clearly outperforms the laser pulses or heavy spark impacts.
The virtual classroom continues to grow, but it is becoming more and more the norm, and it is fundamentally different from the vocational students at the Indonesian university. With the promised benefits of the virtual classroom, many challenges and difficulties come in the implementation. Although there are already successful design principles for virtual classrooms that support organizations in overcoming the challenges, the approach to implementing the design principles of virtual classroom at the vocational higher education in Indonesia is still lacking. In this study, we aim to answer the research gap and used the design sciences research by interviewing the lecturers to design the solutions. The proposed design approaches were implemented in a course and evaluated with students from two different groups. Overall, the evaluation of the proposed approaches shows1 significant results as an indicator of the benefits of the implementation of a virtual classroom for vocational students in Indonesia.
Digital transformation is a process of digitizing the working and living environment in which people are at the center of digitization. In this paper, we present a personas-based guideline for system developers on how the humanization of digital transformation integrates into the design process. The proposed guideline uses the positive personas from the beginning as a basis for the transformation of the working environment into the digital form. We used the literature research as a preliminary study for the process of wellbeing-driven digital transformation design, consisting of questions for structuring the required information in the positive personas as well as a potential method that could be integrated into the wellbeing-based design process.