Egloffstein, Germany

Dirk Schwarz


 

Average Co-Inventor Count = 6.0

ph-index = 1


Company Filing History:


Years Active: 2015

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1 patent (USPTO):Explore Patents

Title: Dirk Schwarz: Innovator in Mechanical-Electrical Machine Behavior Visualization

Introduction

Dirk Schwarz is a notable inventor based in Egloffstein, Germany. He has made significant contributions to the field of mechanical-electrical machine behavior modeling. His innovative approach focuses on enhancing the visualization of complex machine operations.

Latest Patents

Dirk Schwarz holds 1 patent for his invention titled "Non-linear time scale optimization for mechanical-electrical machine behavior model visualization." This patent presents a visual representation of a mechanical-electrical machine behavior model that utilizes a non-linear time scale. The aim is to illustrate multiple details occurring in a relatively short time frame without compromising the information contained in the complete model. By identifying and minimizing time periods without user-relevant details, the display space can adequately represent the actions of each machine. This innovative method allows for a clearer understanding of machine operations by 'folding' longer time periods into shorter lengths along the time axis.

Career Highlights

Dirk Schwarz is associated with Siemens Aktiengesellschaft, a leading global technology company. His work at Siemens has allowed him to apply his innovative ideas in practical settings, contributing to advancements in machine behavior visualization.

Collaborations

Dirk has collaborated with talented coworkers such as Oswin Noetzelmann and Marko Bogeljic. Their combined expertise has fostered a creative environment that encourages innovation and the development of cutting-edge technologies.

Conclusion

Dirk Schwarz's contributions to the field of mechanical-electrical machine behavior visualization exemplify the impact of innovative thinking in technology. His patent reflects a commitment to improving the understanding of complex systems, paving the way for future advancements in the industry.

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