Refine
Year of publication
Document Type
- Article (545)
- Bachelor Thesis (376)
- Part of a Book (201)
- Conference Proceeding (119)
- Book (104)
- Other (72)
- Master's Thesis (49)
- Annotation (14)
- Working Paper (14)
- Report (9)
Language
- German (1156)
- English (356)
- Multiple languages (5)
- Spanish (2)
Keywords
- Soziale Arbeit (29)
- Pflege (18)
- Sozialarbeit (18)
- Ethik (14)
- Gesundheitsförderung (14)
- Behinderung (13)
- Inklusion (13)
- Altenpflege (12)
- Bildung (12)
- Alter (11)
Institute
- Institut für Gesundheits-und Pflegewissenschaften (IGP) (94)
- Institut für nachhaltige Energietechnik und Mobilität (INEM) (36)
- Virtual Automation Lab (VAL) (25)
- Weitere Projekte der Fakultät SABP (18)
- Institut für Intelligente Systeme (IIS) (11)
- Zuverlässigkeitstechnik und Prognostics and Health Management (9)
- Institut für Change Management und Innovation (CMI) (6)
- Fraunhofer Anwendungszentrum KEIM (3)
- Institut für Automobilmanagement (IAM) (3)
- Labor Kunststofftechnik (LKT) (3)
Application and machine learning methods for dynamic load point controls of electric vehicles (xEVs)
(2020)
From the customer's perspective, the appeal of electric vehicles depends on the simplicity and ease of their use, such as flexible access to electric power from the grid to recharge the batteries of their vehicles. Therefore, the expansion of charging infrastructure will be an important part of electric mobility. The related charging infrastructure is a big challenge for the load capacity of the grid connection without additional intelligent charge management: if the control of the charging process is not implemented, it is necessary to ensure the total of the maximum output of all xEVs at the grid connection point, which requires huge costs. This paper proposes to build a prediction module for forecasting dynamic charging load using machine learning (ML) techniques. The module will be integrated into a real charge management concept with optimization procedures for controlling the dynamic load point. The value of load forecasting through practical load data of a car park were taken to illustrate the proposed methods. The prediction performance of different ML methods under the same data condition (e.g., holiday data) are compared and evaluated.
Europäische Sozialpolitik
(2020)
Negotiations are a relevant and highly complex business skill. Therefore, extensive training is required to become a good negotiator. Such training is offered by universities for their students and by companies for their employees. The present paper designs gamified feedback features in electronic negotiation training and evaluates their potential and their effects. Following a design science research method, feedback mechanisms in electronic negotiation training are derived from literature. An assessment regarding their relevance for e-negotiation training shows a preparation quiz, set and track goals and expert reviews to be the most useful gamified feedback mechanisms. Dedicated mock-ups implementing these feedback mechanisms are designed and evaluated in semi-structured interviews showing their capability to improve relevant negotiation skills, as well as motivation and competence of the learners. Out of the three mock-ups, the interviewees prefer the feedback mechanisms “expert review” and “set and track goals”; both mechanisms provide a competence-confirming learning experience and an autonomous learning experience.
Plötzlich digital!?
(2020)
Power-to-Heat
(2020)