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Mit zunehmender Dynamik im Forschungsumfeld – Digitalisierung der Produktentwicklung – steigen neben der Komplexität auch die technischen Anforderungen an die künftigen Entscheidungsprozesse. Die Einführung von neuen IT-Systemen zur Automation von Entscheidungen haben Anpassungen in den derzeitigen Geschäftsprozessen der Unternehmen zur Folge. Für eine erfolgreiche Implementierung neuer IT-Informationstools gilt es im Voraus mögliche Auswirkungen auf die bisherigen Anwendersysteme genauer zu untersuchen. Neue Technologien, KI-Informationssysteme oder auch neues Wissen entstehen in der Wissenschaft oft durch Interpretation und Synthese von bestehendem Wissen. Aus diesem Grund nimmt die Qualität von Literaturanalysen eine immer größere Relevanz in der Ingenieur- und Informatikwissenschaft ein. Neben der Anzahl an Publikationen wächst auch der Aufwand für die strukturierte Literaturrecherche (SLA). Die Autoren stellen in diesem Paper den Rechercheprozess und die Ergebnisse einer SLA vor. Mit dieser Arbeit soll der derzeitige Forschungsstand zur Entscheidungsunterstützung in der Produktentwicklung von Klein- und mittelständischen Unternehmen sowie Großunternehmen in der
Automobilbranche ermittelt und nach Analyse sowie Bewertung mögliche Forschungslücken zu automatisierten Entscheidungsunterstützungssystemen (aEUS) aufgezeigt werden.
Advancing mental health diagnostics: AI-based method for depression detection in patient interviews
(2023)
In this paper, we present a novel artificial intelligence (AI) application for depression detection, using advanced transformer networks to analyse clinical interviews. By incorporating simulated data to enhance traditional datasets, we overcome limitations in data protection and privacy, consequently improving the model’s performance. Our methodology employs BERT-based models, GPT-3.5, and ChatGPT-4, demonstrating state-of-the-art results in detecting depression from linguistic patterns and contextual information that significantly outperform previous approaches. Utilising the DAIC-WOZ and Extended-DAIC datasets, our study showcases the potential of the proposed application in revolutionising mental health care through early depression detection and intervention. Empirical results from various experiments highlight the efficacy of our approach and its suitability for real-world implementation. Furthermore, we acknowledge the ethical, legal, and social implications of AI in mental health diagnostics. Ultimately, our study underscores the transformative potential of AI in mental health diagnostics, paving the way for innovative solutions that can facilitate early intervention and improve patient outcomes.
In clothing e-commerce, the challenge of optimally recommending clothing that suits a user’s unique characteristics remains a pressing issue. Many platforms simply recommend best-selling or popular clothing, without taking into account important attributes like user’s face color, pupil color, face shape, age, etc. To solve this problem, this paper proposes a personalized clothing recommendation algorithm that incorporates the established 4-Season Color System and user-specific biological characteristics. Firstly, the attributes and colors of clothing are classified by Fnet network, that can learn disjoint label combinations and mitigate the issue of excessive labels. Secondly, on the basis of the 4-Season Color System, the user’s face color model is trained by combined MobileNetV3_DTL, which ensures the model’s generalization and improves the training speed. Thirdly, user’s face shape and age are divided into different categories by an Inception network. Finally, according to the users’ face color, age, face shape and other information, personalized clothing is recommended in a coarse-to-fine manner. Experiments on five datasets demonstrate that the algorithm proposed in this paper achieves state-of-the-art results.
With the rapid development of globalization, the demand for translation between different languages is also increasing. Although pre-training has achieved excellent results in neural machine translation, the existing neural machine translation has almost no high-quality suitable for specific fields. Alignment information, so this paper proposes a pre-training neural machine translation with alignment information via optimal transport. First, this paper narrows the representation gap between different languages by using OTAP to generate domain-specific data for information alignment, and learns richer semantic information. Secondly, this paper proposes a lightweight model DR-Reformer, which uses Reformer as the backbone network, adds Dropout layers and Reduction layers, reduces model parameters without losing accuracy, and improves computational efficiency. Experiments on the Chinese and English datasets of AI Challenger 2018 and WMT-17 show that the proposed algorithm has better performance than existing algorithms.
In kleinen und mittleren Unternehmen (KMU) werden Energieeffizienz-Potentiale in geringerem Maße ausgeschöpft als in Großunternehmen. Zugleich bilden KMU den überwältigenden Anteil deutscher Unternehmen. Die Steigerung der Energieeffizienz verspricht einen substanziellen Beitrag zur Umweltentlastung. Energiemanagement wird gemeinhin als wesentlicher Treiber von Energieeffizienz Maßnahmen in Deutschland betrachtet. Im Kontext von Unternehmen wird Energiemanagement üblicherweise synonym mit dem Energiemanagement-standard ISO 50001 betrachtet. Problematisch zeigt sich diese Perspektive mit Blick auf KMU, für die eine aufwändige Implementierung eines solchen System in den überwiegenden Fällen nicht infrage kommt. Vor diesem Hintergrund darf sich eine Förderung von Energiemanagement in KMU jedoch nicht entmutigen lassen. Im Rahmen des Projekts wurde ein bedarfsgerechtes und an den Bedürfnissen von KMU orientiertes Konzept von Energiemanagement für KMU entwickelt. Die Ausarbeitung erfolgte in einem sogenannten Reallabor, das gleichsam als Partner-Netzwerk die Ergebnisse des Projekts kooperativ produziert hat. Das Reallabor setzte sich zusammen aus den koordinierenden Partnern aus der Wissenschaft (REZ Hochschule Reutlingen, Institut für Energieeffizienz in der Produktion EEP), sechs KMU aus der Region Reutlingen und einem Sounding-Board bestehend aus vier weiteren Partnern.
Im Rahmen des Reallabors wurden jene Bausteine definiert, die Energiemanagement für KMU ausmachen. Sensibilität und Basiswissen ist für KMU unumgänglich in den Bereichen: 1. Motivation für Energieeffizienz & Klimaneutralität, 2. Organisation-Entscheiden-Verhalten, 3. Energie-Daten Management und 4. Energieeffizienz-Maßnahmen (Querschnitt-Technologien). Den vier festgelegten Bausteinen wurden unterschiedliche Inhalte Schwerpunkte zugeordnet. Die Bausteine und Schwerpunkte wurden jeweils begründet und mit konkreten Lehr-, Lern- und Sensibilisierungszielen benannt. Parallel zur Festlegung der Bausteine und Schwerpunkte von Energiemanagement wurden Lehr-, Lern- und Sensibilisierungs-Materialien ausgearbeitet, bestehend aus Leitfäden und Checklisten. Die Ausarbeitung wurde jeweils mit Themen-Workshops parallel begleitet. Die entwickelten Lehr-, Lern- und Sensibilisierungs-Materialien wurden in und mit den Partnerunternehmen getestet. Alle Materialien stehen mit Abschluss des Projekts für die Verbreitung zur freien Verfügung.
Der zukünftige Beitrag zur Umweltentlastung hängt von der breiten Umsetzung außerhalb des Projektkontexts ab. Die Sensibilisierung und Qualifizierung für Energiemanagement schafft eine nachhaltige Energiesparkultur in KMU. Eine breite Anwendung des entwickelten Konzepts im Rahmen von moderierten Unternehmens-Netzwerken fördert die nachhaltige Befähigung von KMU Energieeffizienz zu planen und umzusetzen.
Analog integrated circuit sizing still relies heavily on human expert knowledge as previous automation approaches have not found wide-spread acceptance in industry. One strand, the optimization-based automation, is often discarded due to inflated constraining setups, infeasible results or excessive run times. To address these deficits, this work proposes a alternative optimization flow featuring a designer’s intuition for feasible design spaces through integration of expert knowledge based on the gm/ID-method. Moreover, the extensive run times of simulation-based optimization flows are overcome by incorporating computationally efficient machine learning methods. Neural network surrogate models predicting eleven performance parameters increase the evaluation speed by 3 400× on average compared to a simulator. Additionally, they enable the use of optimization algorithms dependent on automatic differentiation, that would otherwise be unavailable in this field. First, an up to 4× more efficient way for sampling training data based on the aforementioned space is detailed. After presenting the architecture and training effort regarding the surrogate models, they are employed as part of the objective function for sizing three operational amplifiers with three different optimization algorithms. Additionally, the benefits of using the gm/ID-method become evident when considering technology migration, as previously found solutions may be reused for other technologies.
Projektbasiertes Lernen (PBL) ist eine ideale Methode, um Studierenden an Hochschulen praktische Projektmanagement-Kompetenzen zu vermitteln. Selbst anspruchsvolle Projekte werden hierdurch möglich. Jedoch ist die Balance zwischen den angestrebten Lernzielen und der praktischen Projektdurchführung in der Hochschulpraxis herausfordernd. Mit Hilfe des ‚PBL-Gold Standards‘ lassen sich PBL-Projekte zielgerichtet entwerfen und auf Effektivität hinsichtlich der Lernziele überprüfen. Am Beispiel des Projekts ‚IP Plane‘ der Hochschule Reutlingen, dem Bau eines Motorflugzeugs durch Studierende, wird die praktische Umsetzung eines PBL-Projektes demonstriert.
Most Question-answering (QA) systems rely on training data to reach their optimal performance. However, acquiring training data for supervised systems is both time-consuming and resource-intensive. To address this, in this paper, we propose TFCSG, an unsupervised similar question retrieval approach that leverages pre-trained language models and multi-task learning. Firstly, topic keywords in question sentences are extracted sequentially based on a latent topic-filtering algorithm to construct unsupervised training corpus data. Then, the multi-task learning method is used to build the question retrieval model. There are three tasks designed. The first is a short sentence contrastive learning task. The second is the question sentence and its corresponding topic sequence similarity judgment task. The third is using question sentences to generate their corresponding topic sequence task. The three tasks are used to train the language model in parallel. Finally, similar questions are obtained by calculating the cosine similarity between sentence vectors. The comparison experiment on public question datasets that TFCSG outperforms the comparative unsupervised baseline method. And there is no need for manual marking, which greatly saves human resources.
Patterns are virtually simulated in 3D CAD programs before production to check the fit. However, achieving lifelike representations of human avatars, especially regarding soft tissue dynamics, remains challenging. This is mainly since conventional avatars in garment CAD programs are simulated with a continuous hard surface and not corresponding to the human physical and mechanical body properties of soft tissue. In the real world, the human body’s natural shape is affected by the contact pressure of tight-fitting textiles. To verify the fit of a simulated garment, the interactions between the individual body shape and the garment must be considered. This paper introduces an innovative approach to digitising the softness of human tissue using 4D scanning technology. The primary objective of this research is to explore the interactions between tissue softness and different compression levels of apparel, exerting pressure on the tissue to capture the changes in the natural shape. Therefore, to generate data and model an avatar with soft body physics, it is essential to capture the deform ability and elasticity of the soft tissue and map it into the modification options for a simulation. To aim this, various methods from different fields were researched and compared to evaluate 4D scanning as the most suitable method for capturing tissue deformability in vivo. In particular, it should be considered that the human body has different deformation capabilities depending on age, the amount of muscle and body fat. In addition, different tissue zones have different mechanical properties, so it is essential to identify and classify them to back up these properties for the simulation. It has been shown that by digitising the obtained data of the different defined applied pressure levels, a prediction of the deformation of the tissue of the exact person becomes possible. As technology advances and data sets grow, this approach has the potential to reshape how we verify fit digitally with soft avatars and leverage their realistic soft tissue properties for various practical purposes.
In recent years, the demand for accurate and efficient 3D body scanning technologies has increased, driven by the growing interest in personalised textile development and health care. This position paper presents the implementation of a novel 3D body scanner that integrates multiple RGB cameras and image stitching techniques to generate detailed point clouds and 3D mesh models. Our system significantly enhances the scanning process, achieving higher resolution and fidelity while reducing the cost, time and effort required for data acquisition and processing. Furthermore, we evaluate the potential use cases and applications of our 3D body scanner, focusing on the textile technology and health sectors. In textile development, the 3D scanner contributes to bespoke clothing production, allowing designers to construct made-to-measure garments, thus minimising waste and enhancing customer satisfaction through fitting clothing. In mental health care, the 3D body scanner can be employed as a tool for body image analysis, providing valuable insights into the psychological and emotional aspects of self-perception. By exploring the synergy between the 3D body scanner and these fields, we aim to foster interdisciplinary collaborations that drive advancements in personalisation, sustainability, and well-being.