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How predictive AI will help achieve net-zero emissions

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Release: 2024-04-22 12:10:01
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How predictive AI will help achieve net-zero emissions

Predictive artificial intelligence (AI) is a cousin of productive artificial intelligence that uses patterns in historical data to predict future outcomes or classify future events. Experts say the technology can be used to provide actionable insights and aid decision-making and strategy development. Predictive AI leverages large-scale data analytics and machine learning algorithms to discover hidden patterns and trends in historical data and apply them to future scenarios. By understanding past patterns, we can better understand what may happen in the future and strategize accordingly. Predictive AI has applications in various fields, such as

Over the past year or so, we have seen many new and exciting predictive AI applications emerge in the energy industry to better Maintain and optimize energy resource assets. In fact, the technology is advancing very rapidly. The challenge is to provide the "right" data to make them valid. And thanks to the broader digital transformation of the energy industry, this problem is starting to be solved.

Today, we are not only seeing the application of predictive AI in assessing the risk of asset damage and when preventive maintenance is required, but also how it is best combined with weather and traffic data to support the dispatch of engineers. Go to the scene. This, in turn, helps improve the reliability of the overall energy system.

Changing Demand Patterns

While the further transition to net zero emissions is laudable, it does disrupt both the supply and demand sides of the energy system. Electric vehicles (EVs), residential solar and electric heating are all changing demand patterns. At the same time, the increase in renewable energy on the grid has led to fluctuations in supply capacity. After all, without wind, wind farms are of no particular use, and without the sun, solar farms are of no particular use.

In addition, we are seeing more and more extreme weather events. The number of extreme weather events has increased dramatically in the past 30 years and now affects every corner of the world. These weather events affect both supply and demand, so supply and demand patterns can be particularly challenging.

Many of the headlines in the media right now are about leveraging predictive AI to learn these new patterns and rapidly deploy models to support demand flexibility. However, matching demand with available supply is the inverse of traditional energy systems.

By better predicting when the energy system will experience imbalances in supply and demand, charging of electric vehicles can be better scheduled to ensure a balanced grid. The reward is more convenient electricity for everyone. Furthermore, if charging times coincide with renewable energy supply times, the CO2 emissions associated with this demand can also be reduced, so it’s a win-win.

REDUCING RISK

Of course, one of the big risks facing the energy industry is energy imbalances, as this can lead to blackouts. The ability to accurately forecast is critical to addressing supply and demand imbalances.

Extreme weather not only affects supply and demand conditions, but also damages transmission lines and prevents power plants from operating normally. Thankfully, there are already innovative projects, such as one undertaken by Scottish Power, that aim to better predict when and where extreme weather events will cause blackouts by providing enhanced intelligence across the system.

Balance Matter

Balancing energy systems has always relied on being able to accurately predict customer behavior. But this is always at an aggregate level, as suppliers can increase or decrease energy supply at will. Now, however, as distribution grids become more active and distributed energy resources cause power to flow in both directions, the grid is increasingly finely balanced and the need for local predictability is growing.

Thankfully, with the help of predictive artificial intelligence, it is now possible to understand customer demand patterns not only at the individual consumer level, but even at the device level.

Although not yet widely used, predictive AI is increasingly being used to support demand-side flexibility, particularly in areas such as electric heating and electric vehicles – which are often homes or buildings maximum load.

If a building is equipped with an energy storage system, that system is also more likely to be equipped with optimization algorithms powered by predictive artificial intelligence, which can learn usage patterns to schedule the import and export of batteries.

Ensuring new forecasting models are up to par

Predictive AI is already driving renewable energy forecasting, grid operations and optimization, and coordination of distributed energy assets, according to a recent report from GlobalData and bring significant improvements in demand-side management in the energy industry. Furthermore, it predicts that the technology will play an important role in enhancing asset optimization and customer segmentation in the coming years.

There’s no doubt it’s changing the energy industry for the better, whether it’s detecting and fixing faults, better predicting weather patterns, or providing more accurate usage monitoring. The development prospects of this technology in the next few years are worth looking forward to.

While the future is exciting, it is still an emerging technology and requires overcoming the challenges often encountered when scaling up. To be truly successful, new governance procedures will also need to be added to ensure that the quality of the data used to train new predictive models is up to par.

It is important to confirm the integrity of all training data through detailed logging, audit trails, validation frameworks, and supervision procedures. The data set is then continuously evaluated to uncover new questions.

Therefore, this is exactly the focus of the future digitalization of the energy industry. For example, the industry has begun to envision digital twins of energy systems, where predictive artificial intelligence and open data are combined to better plan and operate more decentralized and flexible energy systems.

Summary

Predictive artificial intelligence (AI) has an important role to play in achieving net zero emissions. First, AI can accurately predict and optimize the energy system through big data analysis and machine learning algorithms, helping companies and governments to formulate more effective emission reduction strategies. Secondly, the application of AI in the energy production and utilization process, such as smart grid management, wind and solar power generation forecasting, etc., can improve energy utilization efficiency and reduce carbon emissions.

In addition, AI can also realize intelligent management and reduce energy consumption and emissions in fields such as transportation, industrial production, and architectural design. Most importantly, AI can also promote energy transformation and innovation, promote the development and application of low-carbon technologies such as renewable energy and clean energy, and provide technical support and path planning to achieve net-zero emission goals. Therefore, the widespread application of predictive artificial intelligence will provide important support and guarantee for achieving net-zero emissions goals.

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source:51cto.com
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