Future-proof flexible charging

Electric vehicles (EVs) can significantly contribute to reducing air and noise pollution in metropolitan regions. Charging EVs, however, can put significant strain on local distribution grids. Fortunately, flexibility in the charging process can be exploited to reduce this strain.

Use of Artificial Intelligence

We advocate smart planning algorithms to coordinate such flexible power consumption several hours into the –inherently uncertain— future. In our URSES research project GCP we found that state-of-the-art stochastic optimization as well as algorithms for sequential decision-making under uncertainty can construct such plans for a single flexible load and/or generator. Based on this, we have developed algorithms and mechanisms that allow i) scaling to many loads or generators while ii) taking network congestion into account.

What challenge does it solve?

These algorithms provide a foundation for planning EV charging under current market regulations. This context gives rise to new and challenging research questions, such as which algorithms give the most acceptable results for an aggregator for charging EVs? how to coordinate the charging of many EVs within physical limitations of the distribution network? and what is the effect of these advanced algorithms in practice?

We will answer these questions by extending our earlier algorithms. We will first test these extended versions in a realistic simulation environment for EV charging. We will then bring our algorithms into practice at a concrete pilot location in Amsterdam. This will involve an implementation compliant with USEF and current hardware, taking network limits into account. In particular, we will quantify the cost reduction our advanced algorithms bring.

Made possible by

This is a follow-up on our GCP project with main project partner Jedlix.

More information

For further information, contacts, or more projects of this kind, please refer to the Energy and Sustainability Working Group. For this, visit:

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Building blocks

The NL AIC collaborates on the necessary common knowledge and expertise, resulting in five themes, also called building blocks. Those are important for a robust impact in economic and social sectors.

Sectors

AI is a generic technology that is ultimately applicable in all sectors. For the development of knowledge and experience in the use of AI in the Netherlands, it is essential to focus on specific industries that are relevant to our country. These industries can achieve excellent results, and knowledge and experience that can be leveraged for application in other sectors.

Become a participant

The Netherlands AI Coalition is convinced that active collaboration with a wide range of stakeholders is essential to stimulate and connect initiatives in Artificial Intelligence. Within fields of expertise and with other stakeholders in the ecosystem to achieve the most significant result possible in the development and application of AI in the Netherlands. Representatives from the business community (large, small, start-up), government, research and educational institutions and civil society organisations can participate.
Interested? For more information, see the page about participation.