Cookies Policy
The website need some cookies and similar means to function. If you permit us, we will use those means to collect data on your visits for aggregated statistics to improve our service. Find out More
Accept Reject
  • Menu
About

About

Fabian Heymann received his B.Sc. and M.Sc. Degrees in 2011 and 2014 respectively.

During his career, he was highly involved in strategic consultancy studies to municipal up to internationally active clients (e.g. the German Corporation for International Cooperation - GIZ) including major energy utilities (e.g. a Top4 German Energy Utility) and the participation in EU projects.

In 2016, he began his Doctoral research on the synergetic uses of electric mobility and distributed renewable generation within the MIT Portugal consortium at the Engineering Faculty of the University of Porto. He is also with the research center INESC TEC.

Interest
Topics
Details

Details

  • Name

    Fabian Heymann
  • Role

    External Research Collaborator
  • Since

    01st April 2014
Publications

2017

Spatial Load Forecasting of Electric Vehicle Charging using GIS and Diffusion Theory

Authors
Heyman, F; Pereira, C; Miranda, V; Soares, FJ;

Publication
2017 IEEE PES INNOVATIVE SMART GRID TECHNOLOGIES CONFERENCE EUROPE (ISGT-EUROPE)

Abstract
The uptake of electric vehicles (EV) will require important modifications in traditional grid planning and load forecasting techniques. Existing literature suggests that the integration of EVs will be more adversarial to elements of the existing electricity infrastructure in terms of power supply (kW) than energy (kWh) delivery. While several studies analyzed the grid impact of electric vehicle fleets, few consider the adoption process itself which may lead to strong spatial variations of the utilization of charging infrastructure. The presented approach extends spatial load forecasting, introducing diffusion theory elements to analyze spatio-temporal clustering of EV charging demand. Using open-access census and grid data, this work develops a deterministic framework to forecast spatial patterns of EV charging applied to a real-world environment. Outcomes suggest substantial spatial clustering of EV adoption patterns, showing substation overrating for EV penetration rates of 25% and above with 7.4kW charging power.

2015

Power-to-Gas potential assessment of Portugal under special consideration of LCOE

Authors
Heymann, F; Bessa, R;

Publication
2015 IEEE Eindhoven PowerTech, PowerTech 2015

Abstract
Power-to-Gas can contribute with valuable balancing power and seasonal storage capacity to future power systems. In Portugal, forecasts for 2020 show significant excess of renewable energy generation that can be transformed by power-to-gas technology and fed into the natural gas infrastructure. This work suggests an innovative approach to assess future power-togas integration potentials at the national level, focusing on wind power. Following a geographical distance analysis, a first economical estimation of future energy transformation costs is made with the help of Levelized Costs of Energy (LCOE). © 2015 IEEE.