Energy neutral by 2050: AI is helping to balance supply and demand
The whole of the built-up environment energy neutral by 2050. No more natural gas for residential or non-residential buildings. That is the destination we are aiming for, but it will be an enormous challenge. To achieve the targets set down in the Dutch Climate Agreement, we people could certainly use some assistance from artificial intelligence (AI).
Around 90 percent of homes in the Netherlands are connected to the natural gas network. However, this will change dramatically over the next three decades, which means we will have to find other ways to heat our homes. This will be a huge operation that will have a marked impact on built-up areas.
A lot of energy and not much demand (or vice versa)
At the same time, we are facing a different challenge, namely that our electricity grids are having to cope with ever-greater peak loads. This is because a lot of renewable energy is generated at certain times, mostly from the sun and the wind. In those circumstances, there is then a greater level of supply than demand. Conversely, there are times that we need more power precisely when little renewable energy is being generated.
Preventing peak loads, thanks to AI
We therefore need to head towards a situation in which we have more control over energy flows. That is why TNO is developing models for buildings which, with the help of AI, have greater control over users’ behaviour.
Firstly, the models help predict a building’s energy consumption and how much renewable energy it generates. But much more importantly, merging the models means that supply and demand can be balanced out at the level of an individual district. In this way, we can deploy artificial intelligence to help solve the problems of peak loads.
More accurate predictions at district level
All being well, the TNO models will soon be capable of predicting demand for energy in the next 8 to 24 hours at district level. They will of course have to be more accurate than the tools that are currently used.
Organisations responsible for managing electricity supplies at district level will then be better placed to anticipate any predicted fluctuations in supply and demand. And because they will know at an earlier stage how much energy they have to buy in, they will also be able to save on their procurement budgets. The models can also be used to predict other aspects, such as the state of maintenance and indoor environments, so that maintenance and management activities can be organised on a planned, rather than ad hoc, basis.
Putting theory into practice
A good example is the Syn.ikia project in Uden. Here, the housing corporation and contractor are going to build an apartment complex. The complex will produce energy.
As well as TNO, many other parties are also involved, including the Area housing corporation and the contractor, Hendriks Coppelmans. Working in partnership with heat pump manufacturer Itho, heat pumps will be read remotely for the purpose of monitoring the supply of and demand for energy at district level, in order to subsequently achieve a balance.
Christopher BrewsterFunctie:Senior scientist
Christopher Brewster is a Senior Scientist in the Data Science group and Professor of the Application of Emerging Tecnologies in the Institute of Data Science, Maastricht University. His research has focussed on the application of Semantic Technologies, Open and Linked Data, interoperability architectures and Data Governance, mostly to the food and agriculture domains.
Daniël WormFunctie:Senior consultant
Joris SijsFunction not known
Judith DijkFunctie:senior research scientist
Judith is specialised in extracting information from camera images. She now applies the subject of her PhD thesis in Physics, which she obtained 18 years ago, to her work as a research scientist at TNO, including in a research programme on camera systems for the Dutch Ministry of Defence.
Looking for another expert?View all experts
Responsible decision-making between people and machines
Bias in facial recognition and accidents with self-driving cars. AI must be developed further. The fastest way to do this is in close cooperation with people.
Knowledge representation and reasoning
Correct and unambiguous information is needed when making a decision. That is why we use AI technology called "knowledge representation & reasoning".
Natural language processing
What is natural language processing (NLP) and how do we use it intelligently? Find out how we use this AI technique to gather information from textual data.
Robotics and autonomous agents
Robotics brings a future-proof industry a big step closer. For example, we are working on automatic path planning with AI techniques.
Fair machine learning
Fair machine learning is relevant to all kinds of discrimination and bias arising from the use of biased data. Read more!