power demand
The AI Race Is Pressuring Utilities to Squeeze More From Europe's Power Grids
The AI Race Is Pressuring Utilities to Squeeze More From Europe's Power Grids As data center developers queue up to connect to power grids across Europe, network operators are experimenting with novel ways of clearing room for them. European countries are racing to bring new data centers online as AI labs across the globe continue to demand more compute. The primary limiting factor is energy--and specifically, the ability to move it. Though Europe is on track to generate enough energy, utilities experts say, grid operators broadly lack the infrastructure needed to transport it to where it needs to go. That's throttling grid capacity and, by extension, the number of new power-hungry data centers that can connect without risking blackouts.
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- North America > United States > California > San Francisco County > San Francisco (0.04)
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- Information Technology > Services (1.00)
- Energy > Power Industry (1.00)
Prioritizing energy intelligence for sustainable growth
As AI drives extraordinary power demands, energy intelligence is rapidly becoming a core business metric. Loudoun County, Virginia, once known for its pastoral scenery and proximity to Washington, DC, has earned a more modern reputation in recent years: The area has the highest concentration of data centers on the planet. Ten years ago, these facilities powered email and e-commerce. Today, thanks to the meteoric rise in demand for AI-infused everything, local utility Dominion Energy is working hard to keep pace with surging power demands. The pressure is so acute that Dulles International Airport is constructing the largest airport solar installation in the country, a highly visible bid to bolster the region's power mix. Data center campuses like Loudoun's are cropping up across the country to accommodate an insatiable appetite for AI.
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- North America > United States > Massachusetts (0.05)
- Information Technology > Services (0.96)
- Transportation > Infrastructure & Services > Airport (0.55)
- Energy > Renewable > Solar (0.55)
Artificial intelligence approaches for energy-efficient laser cutting machines
Salem, Mohamed Abdallah, Ashour, Hamdy Ahmed, Elshenawy, Ahmed
This research addresses the significant challenges of energy consumption and environmental impact in laser cutting by proposing novel deep learning (DL) methodologies to achieve energy reduction. Recognizing the current lack of adaptive control and the open-loop nature of CO2 laser suction pumps, this study utilizes closed-loop configurations that dynamically adjust pump power based on both the material being cut and the smoke level generated. To implement this adaptive system, diverse material classification methods are introduced, including techniques leveraging lens-less speckle sensing with a customized Convolutional Neural Network (CNN) and an approach using a USB camera with transfer learning via the pre-trained VGG16 CNN model. Furthermore, a separate DL model for smoke level detection is employed to simultaneously refine the pump's power output. This integration prompts the exhaust suction pump to automatically halt during inactive times and dynamically adjust power during operation, leading to experimentally proven and remarkable energy savings, with results showing a 20% to 50% reduction in the smoke suction pump's energy consumption, thereby contributing substantially to sustainable development in the manufacturing sector.
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- Europe > Netherlands > South Holland > Dordrecht (0.04)
- Europe > Germany (0.04)
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- Energy (1.00)
- Materials > Chemicals > Commodity Chemicals > Petrochemicals > Polymers & Plastics (0.67)
Japan's power demand may grow by up to 40% by 2050
Japan's electricity demand is projected to grow by up to 40% from the 2019 level in 2050, if the wider use of generative artificial intelligence spurs the construction of more data centers, an industry organization said Wednesday. The Organization for Cross-Regional Coordination of Transmission Operators, which coordinates electricity supply and demand across Japan, warned in a report that supply shortages may occur even if nuclear power reactors and aging thermal power plants are rebuilt. The organization, which comprises power utilities nationwide, suggested several scenarios for electricity supply and demand in 2040 and 2050. According to the report, power demand is estimated to rise to between 900 billion and 1.1 trillion kilowatt-hours in 2040 and between 950 billion and 1.25 trillion kilowatt-hours in 2050, higher than the 2019 demand of 880 billion kilowatt-hours. Even if power companies make significant progress in replacing their nuclear and thermal power plants with newer models, the country's electricity supply is expected to fall short of demand by up to 23 million kilowatts in 2050.
Energy-Optimized Supercomputer Networks Using Wind Energy
Advances in the field of computer science, such as very complex simulations, data analysis, or machine learning (ML) in data-driven applications (for example, computational fluid dynamics, large language models) are leading to an increased demand of IT performance and data storage capacity. Therefore, the electricity demands of digital infrastructures in science and industry are increasing. High-performance computing (HPC) has become an enabling technology and a vital tool to greatly reduce the processing and execution time of advanced computing- or data-intensive tasks. An obvious consequence: HPC datacenters (DCs) require an enormous amount of electricity, have volatile demands, and produce notable amounts of waste heat. If not well located, built, and operated, such infrastructures generate a significant CO2 backpack, and the applications and products that use them inherit the backpack from the computing platform.
- Energy > Power Industry (0.93)
- Energy > Renewable > Wind (0.69)
AI could keep us dependent on natural gas for decades to come
The AI data center also promises to transform the state's energy future. Stretching in length for more than a mile, it will be Meta's largest in the world, and it will have an enormous appetite for electricity, requiring two gigawatts for computation alone (the electricity for cooling and other building needs will add to that). When it's up and running, it will be the equivalent of suddenly adding a decent-size city to the region's grid--one that never sleeps and needs a steady, uninterrupted flow of electricity. To power the data center, Entergy aims to spend 3.2 billion to build three large natural-gas power plants with a total capacity of 2.3 gigawatts and upgrade the grid to accommodate the huge jump in anticipated demand. In its filing to the state's power regulatory agency, Entergy acknowledged that natural-gas plants "emit significant amounts of CO2" but said the energy source was the only affordable choice given the need to quickly meet the 24-7 electricity demand from the huge data center.
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- North America > United States > California (0.16)
Data-Driven Energy Modeling of Industrial IoT Systems: A Benchmarking Approach
Kallis, Dimitris, Symeonides, Moysis, Dikaiakos, Marios D.
The widespread adoption of IoT has driven the development of cyber-physical systems (CPS) in industrial environments, leveraging Industrial IoTs (IIoTs) to automate manufacturing processes and enhance productivity. The transition to autonomous systems introduces significant operational costs, particularly in terms of energy consumption. Accurate modeling and prediction of IIoT energy requirements are critical, but traditional physics- and engineering-based approaches often fall short in addressing these challenges comprehensively. In this paper, we propose a novel methodology for benchmarking and analyzing IIoT devices and applications to uncover insights into their power demands, energy consumption, and performance. To demonstrate this methodology, we develop a comprehensive framework and apply it to study an industrial CPS comprising an educational robotic arm, a conveyor belt, a smart camera, and a compute node. By creating micro-benchmarks and an end-to-end application within this framework, we create an extensive performance and power consumption dataset, which we use to train and analyze ML models for predicting energy usage from features of the application and the CPS system. The proposed methodology and framework provide valuable insights into the energy dynamics of industrial CPS, offering practical implications for researchers and practitioners aiming to enhance the efficiency and sustainability of IIoT-driven automation.
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- Asia > China > Guangdong Province > Shenzhen (0.04)
Google is funding electrician training to help meet the power demands of AI
Google has announced that it's helping to financially support the electrical training ALLIANCe (etA), an organization formed by the National Electrical Contractors Association and the International Brotherhood of Electricians. The goal is to train "100,000 electrical workers and 30,000 new apprentices in the United States" to meet the growing power demands of AI. Using AI will unlock unspecified, but positive economic opportunities, Google's new white paper, "Powering a New Era of American Innovation," claims. In order to take advantage of them, though, the US power grid needs to become more capable and efficient. That's largely because the data centers used to run and train AI models require vast amounts of energy.
- Energy > Power Industry (0.77)
- Energy > Renewable (0.58)
Using matrix-product states for time-series machine learning
Moore, Joshua B., Stackhouse, Hugo P., Fulcher, Ben D., Mahmoodian, Sahand
Matrix-product states (MPS) have proven to be a versatile ansatz for modeling quantum many-body physics. For many applications, and particularly in one-dimension, they capture relevant quantum correlations in many-body wavefunctions while remaining tractable to store and manipulate on a classical computer. This has motivated researchers to also apply the MPS ansatz to machine learning (ML) problems where capturing complex correlations in datasets is also a key requirement. Here, we develop and apply an MPS-based algorithm, MPSTime, for learning a joint probability distribution underlying an observed time-series dataset, and show how it can be used to tackle important time-series ML problems, including classification and imputation. MPSTime can efficiently learn complicated time-series probability distributions directly from data, requires only moderate maximum MPS bond dimension $\chi_{\rm max}$, with values for our applications ranging between $\chi_{\rm max} = 20-150$, and can be trained for both classification and imputation tasks under a single logarithmic loss function. Using synthetic and publicly available real-world datasets, spanning applications in medicine, energy, and astronomy, we demonstrate performance competitive with state-of-the-art ML approaches, but with the key advantage of encoding the full joint probability distribution learned from the data. By sampling from the joint probability distribution and calculating its conditional entanglement entropy, we show how its underlying structure can be uncovered and interpreted. This manuscript is supplemented with the release of a publicly available code package MPSTime that implements our approach. The efficiency of the MPS-based ansatz for learning complex correlation structures from time-series data is likely to underpin interpretable advances to challenging time-series ML problems across science, industry, and medicine.
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Why artificial intelligence and clean energy need each other
To win the race, the US is going to need access to a lot more electric power to serve data centers. AI data centers could add the equivalent of three New York Cities' worth of load to the grid by 2026, and they could more than double their share of US electricity consumption--to 9%--by the end of the decade. Artificial intelligence will thus contribute to a spike in power demand that the US hasn't seen in decades; according to one recent estimate, that demand--previously flat--is growing by around 2.5% per year, with data centers driving as much as 66% of the increase. Energy-hungry advanced AI chips are behind this growth. Three watt-hours of electricity are required for a ChatGPT query, compared with just 0.3 watt-hours for a simple Google search.
- Information Technology > Services (1.00)
- Energy > Power Industry > Utilities (0.55)