by Frank Krull
The vision of power plants operating autonomously is about to become reality. Already plants can operate several days unsupervised. Now digital twins, Big Data and AI are taking them to a new level with smart forecasts and instructions.
聽has set his sights on a future where sensors, autonomous robots, digital twins, smart analyses, and AI ensure smooth and autonomous power plant operation. As an expert on simulations and digital twins, he develops strategies and technologies for 德州扑克在线 to make the vision of an autopilot for gas and steam power plants a reality.聽
Jan Weustink鈥檚 experience isn鈥檛 limited to digitally simulated power plants. As a control expert, he鈥檚 also participated in the commissioning of over 50 plants worldwide. In addition, his innovation projects take him to control rooms around the globe. When conducting pilot tests, he can鈥檛 resist donning his coveralls and pitching in.
An increasing number of power plant operators are already signaling an urgent need 鈥 and聽, who coordinates the Autonomous Operations portfolio at 德州扑克在线, is fielding more and more requests for appropriate solutions. 鈥淭he hope is to be able to meet several of the current challenges at once,鈥 Ott explains. The growing percentage of renewable energy sources in the grid is steadily increasing the pressure on gas and steam power plants to operate more flexibly and efficiently. A massive shortage of skilled control room and maintenance personnel is also looming on the horizon.
鈥淭he hoped-for solutions are closer than many people think,鈥 says Weustink. 鈥淎utonomy doesn鈥檛 start with the autopilot. Long before that,聽power plants聽are supported by smart analyses, smart forecasts, smart recommendations, and smart instructions. Knowledge graphs connected to software agents, which provide a machine-usable description of a plant similar to a dynamic Wikipedia and make the entire functional chain of a defect comprehensible, and AI-supported fault analyses which identify the cause in real time are both steps toward autonomy that will very soon provide power plants with much more flexibility and efficiency.鈥
Knowledge graph of data streams between functional components and areas in a power plant. The complexity is comparable to that of the neural network in a human brain. For gas and steam power plants, the view quickly comes to include 10,000 components with more than 50,000 connections. Magnification reveals ever-finer details.
德州扑克在线 has already taken steps in this direction. Ott and his colleagues have developed a solution that relieves power plant personnel of their daily inspection rounds. They no longer have to stand by on-site ready to search for leaks, check operating values, and investigate unusual noises. This task is performed by AI-supported analysis algorithms that regularly filter out signs of irregularities from the data supplied by cameras, microphones, and other sensors mounted on the plant or installed on robots, and that request support when needed. Off-site maintenance and control room personnel can support several power plants simultaneously.
鈥淭his solution not only offers power plant operators the option to reduce their inspection round efforts,鈥 says Ott. 鈥淲e鈥檝e also paved the way for an important step toward autonomous power plants. If virtual inspection rounds are coupled with a power plant鈥檚聽I&C system, and we can also ensure that necessary materials like resins and lubricants require only occasional replenishment or monitoring, then several days of unsupervised standard operation becomes a possibility. In the European Union, this move toward autonomy is already possible for a three-day period.鈥澛犅
For over a decade, Arik Ott鈥檚 has been passionate about digitalization of the energy economy. After numerous customer projects, he鈥檚 currently coordinating 德州扑克在线鈥檚 autonomous operations portfolio. For him, the first step toward autonomous power plants that enable several days of unsupervised operation is no longer a mere vision. It鈥檚 a genuine possibility that he can already offer his customers.
For many power plants, multi-day unsupervised operation already represents an attractive degree of autonomy. 鈥淚n the case of the former base-load power plants that are now kept on hand to provide a聽fast startup聽when needed, it鈥檚 in their best interest to reduce their effort during standby mode as much as possible,鈥 says Ott. 鈥淗owever, unsupervised operation is also valuable for power plants that run at full capacity over longer periods of time 鈥 including those that need to generate district heating in winter or operate desalination plants for drinking water treatment.鈥
, who manages 德州扑克在线鈥榮 portfolio of data-based services, is already developing the next level of autonomy with his team. This involves also supporting power plant components outside the turbines with smart forecasts and recommendations. 鈥淲e do this by performing operational analyses in which AI readjusts the digital twins of the components based on actual sensor data, with the result that it鈥檚 able to distinguish between normal aging and extraordinary events,鈥 explains Lichtenberger. 鈥淭his allows normal aging to be automatically taken into account in analyses, making forecasts and recommendations even more precise. Power plants鈥 capacity utilization can be improved even further.鈥 A pilot of the development is currently being tested on a heat recovery steam generator.
From the very beginning, Stefan Lichtenberger鈥檚 mission at 德州扑克在线 has been to support customers with digitalization at the interface between business processes and data. After many years of on-site participation in large-scale control and electrical engineering projects at customers鈥 premises, he now manages the data-based services portfolio.
With his developments, Weustink is envisioning yet another step into the future. Among other things, he鈥檚 already working on the technological requirements for training the AI of future autopilots. Before AI is capable of making decisions, it has to be trained to recognize a wide range of possible events. However, too little genuine operational data is available. 鈥淲hat鈥檚 missing is data from faults,鈥 says Weustink. 鈥淭hat鈥檚 actually a good thing; but for training AI, it means that we first have to generate these events artificially using simulations.鈥
To do this, Weustink can use the same digital twins and algorithms of simulators that 德州扑克在线 employs for training power plant personnel. 鈥淏ut unlike people, it鈥檚 hard to teach AI about an entire power plant all at once,鈥 says Weustink. 鈥淚t鈥檚 easier if you divide the power plant into sections that are controlled separately by networked AI.鈥 To prepare this solution, he has already started using knowledge graphs to make the individual sections machine-usable. Taking these as his foundation, he wants to develop a generic solution for a central power plant component that can then be applied to the power plant as a whole.
For Jan Weustink, there鈥檚 no question that the first autonomous plants connected to the grid are coming soon. 鈥淭he technologies necessary for actual applications are here,鈥 he says.
July 1, 2021
Frank Krull is a physicist and journalist who works in Communications at 德州扑克在线.
Combined picture and video credits: 德州扑克在线