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Hydropower is the number one renewable energy source in the world—and the backbone of Swiss electricity. For more than a century, energy producer Alpiq has used hydropower to generate climate-friendly, sustainable electricity across Europe. This includes participating in the construction of the Nant de Drance power plant—one of the most powerful pumped storage plants in Europe, with a capacity of 900 MW.
Alpiq also manages shares in nuclear power plants, thermal plants, wind farms, and photovoltaic systems. They have more than 1,200 employees and are headquartered in Lausanne in Switzerland.
To keep energy flowing smoothly between producers and consumers, Alpiq had the ambition to optimize how they manage their pool of hydroelectric plants
in the short-term. A benefit of hydropower is that you can throttle it up and down quickly, turning turbines on and off in minutes. Unlike solar and wind, it’s highly controllable and more flexible than nuclear power.
Until now, Alpiq had modeled each power plant individually. Their new goal: Figure out a better way to coordinate and run a pool of assets at the right times. That meant balancing many technical constraints, such as:
To make this sort of complex modeling easier, analysts at Alpiq compared an array of commercial and open-source solvers. Above all, they needed flexibility, speed, and optimality. After testing several available tools against a representative model of their systems, they soon landed on Gurobi Optimization.
“We were looking for something that was highly customizable, quick, and feasible to execute within the constraints of our equipment and ever-evolving environment,” said Tye. “Gurobi stood out over other solutions because it was the most robust in terms of speed, optimality, and price. It matched up exactly with what we needed.”
Now, Alpiq is using their new solver as part of a highly customized model to optimize their pool of power plants—notably by capitalizing on their synergies. With Gurobi, they can more easily keep their asset running efficiently today, plus better predict how much energy they need to store and generate tomorrow.
Alpiq was also able to tap into the power of the Gurobi support team. “Working with the Gurobi engineers has helped us move even more quickly,” said Tye. “It’s an added value that we get a second set of eyes to double- check our configuration and confirm we’ve set everything up correctly.”
Moving forward, Alpiq plans to use a solver to model many other aspects of their power plants, too. “In our industry, there are many market processes as well
as technical challenges which need to be optimized,” said Tye. “A stochastic approach—for example of the forecast of market prices or natural inflows—helps us price our production and grasp market opportunities. Modeling helps us predict and respond quickly to market conditions outside of our control.”
We make it easy for students, faculty, and researchers to work with mathematical optimization.
When you face complex optimization challenges, you can trust our Gurobi Alliance partners for expert services.
Our global team of helpful, PhD-level experts are here to support you—with responses in hours, not days.
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