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A featured contribution from Leadership Perspectives, a curated forum for energy sector leaders across utilities, oil and gas, and power generation, nominated by our subscribers and vetted by the Energy Business Review Editorial Board.



Algorithmic decision-making frees up time for high-value decision-making in complex trades where the best returns can be found
In this new landscape, forecasting becomes crucial. Power pricing is influenced by all sides: Brexit, the global commodity trade, and geopolitical actions alike cause fluctuations. Accurate forecasting mapped against weather patterns help mitigate negative effects of this influence by more accurately matching supply and demand—and in turn, supporting traders to achieve revenue. Smart traders are also making the most of assets that can play in multiple markets and “stack” to create healthy returns.
With smaller, more complex margins spread across numerous markets, human forecasting becomes less accurate and compromises returns, and this is where the digital data era is coming into its own. Artificial Intelligence (AI) and machine learning are now being used to inform algorithmic trading decisions, which in turn are automatically utilized in ETRM systems, thus reducing the reliance on the manual workload of traders. Algorithmic decision-making frees up time for high-value decision-making in complex trades where the best returns can be found. Fast data processing feeds machine learning to sharper weather and pricing forecasts that provide traders an edge with real-time data, tracking everything from the Net Imbalance Volume (NIV) to current power import and export status.
Data-driven decarbonization
With the markets evolving at an unprecedented pace and new technological advancements taking place every day, the use of predictive analytics and machine learning increase. We anticipate that AI will become progressively pertinent with IOT connected devices—from washing machines to EV chargers—using these to interact with real-time power markets. This sector moves quickly. Overnight, entire products have paused—like the Capacity Markets—and the assets we trade, including batteries, solar panels, wind turbines, and more, are being utilized in markets that were never designed to use them.
The next steps for this industry will develop as it embraces data skillsets as critical tools, not modern science fiction. For companies wanting to make the most of this technology, they need to select partners that are prepared to walk before they run: understanding the subtle ins and outs of power balancing and trading before technical programs are developed. With both industry knowledge and computing behind them, traders can truly harness the power of machines in modern energy trading, and maximize the financial returns on offer.
Forecasting for the future
Modernization isn’t happening in the trading corner of the energy industry alone. The rise of EVs, the move to electric-based heating, and increased action to fight against climate change, not to mention infrastructural changes such as the boom in data center needs, are contributing to an unprecedented electricity demand escalation and drastic changes to traditional demand patterns and peaks. AI and machine learning open up valuable tools to meet this demand, support national decarbonization, and capture the opportunity for revenue generation as the market evolves.