dairy farm
Andrew Jackson's White House once hosted a cheese feeding frenzy
Andrew Jackson's White House once hosted a cheese feeding frenzy The seventh president's farewell party featured 1,400 pounds of cheddar. In 1835, a New York dairy farmer sent President Andrew Jackson a 1,400-pound cheddar cheese to celebrate the president's second inauguration. Two years later, it was finally eaten. Breakthroughs, discoveries, and DIY tips sent every weekday. It's February 1837, and the White House is about to bear witness to one of the greatest feeding frenzies in this nation's proud history of competitive consumption.
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Peer-to-Peer Energy Trading in Dairy Farms using Multi-Agent Reinforcement Learning
Shah, Mian Ibad Ali, Victorio, Marcos Eduardo Cruz, Duffy, Maeve, Barrett, Enda, Mason, Karl
The integration of renewable energy resources in rural areas, such as dairy farming communities, enables decentralized energy management through Peer-to-Peer (P2P) energy trading. This research highlights the role of P2P trading in efficient energy distribution and its synergy with advanced optimization techniques. While traditional rule-based methods perform well under stable conditions, they struggle in dynamic environments. To address this, Multi-Agent Reinforcement Learning (MARL), specifically Proximal Policy Optimization (PPO) and Deep Q-Networks (DQN), is combined with community/distributed P2P trading mechanisms. By incorporating auction-based market clearing, a price advisor agent, and load and battery management, the approach achieves significant improvements. Results show that, compared to baseline models, DQN reduces electricity costs by 14.2% in Ireland and 5.16% in Finland, while increasing electricity revenue by 7.24% and 12.73%, respectively. PPO achieves the lowest peak hour demand, reducing it by 55.5% in Ireland, while DQN reduces peak hour demand by 50.0% in Ireland and 27.02% in Finland. These improvements are attributed to both MARL algorithms and P2P energy trading, which together results in electricity cost and peak hour demand reduction, and increase electricity selling revenue. This study highlights the complementary strengths of DQN, PPO, and P2P trading in achieving efficient, adaptable, and sustainable energy management in rural communities.
- Energy > Renewable > Solar (1.00)
- Energy > Power Industry (1.00)
- Information Technology > Artificial Intelligence > Representation & Reasoning > Agents (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Reinforcement Learning (1.00)
- Information Technology > Artificial Intelligence > Machine Learning > Neural Networks > Deep Learning (0.46)
Fox News AI Newsletter: Nvidia announces plans to make AI supercomputers in US
Tech expert Kurt Knutsson discusses how robots can milk, feed and clean cows on dairy farms, boosting efficiency and comfort. Jensen Huang, co-founder and CEO of Nvidia Corp., gives a talk in Taipei, Taiwan. MADE IN AMERICA: Nvidia on Monday announced plans to manufacture its artificial intelligence supercomputers entirely in the U.S. for the first time. RIDEABLE 4-LEGGED ROOT: Kawasaki Heavy Industries has introduced something that feels straight out of a video game: CORLEO, a hydrogen-powered, four-legged robot prototype designed to be ridden by humans. JOB-KILLER ROBOT: This semi-humanoid robot combines advanced manipulation capabilities with intelligent delivery features, making it a significant innovation in the service robotics sector.
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- Asia > Taiwan > Taiwan > Taipei (0.27)
- Information Technology > Hardware (0.90)
- Media > News (0.70)
Smarter dairy farms where robots milk the cows
Tech expert Kurt Knutsson discusses how robots can milk, feed and clean cows on dairy farms, boosting efficiency and comfort. Picture this: A dairy barn full of cows being milked, fed and cleaned up after, but there's no farmer in sight. Sounds a bit unusual, right? Well, it's not as far-fetched as you might think. Thanks to cutting-edge agricultural robotics, this kind of scene is becoming more common.
The erasure of intensive livestock farming in text-to-image generative AI
Sheng, Kehan, Tuyttens, Frank A. M., von Keyserlingk, Marina A. G.
Generative AI (e.g., ChatGPT) is increasingly integrated into people's daily lives. While it is known that AI perpetuates biases against marginalized human groups, their impact on non-human animals remains understudied. We found that ChatGPT's text-to-image model (DALL-E 3) introduces a strong bias toward romanticizing livestock farming as dairy cows on pasture and pigs rooting in mud. This bias remained when we requested realistic depictions and was only mitigated when the automatic prompt revision was inhibited. Most farmed animal in industrialized countries are reared indoors with limited space per animal, which fail to resonate with societal values. Inhibiting prompt revision resulted in images that more closely reflected modern farming practices; for example, cows housed indoors accessing feed through metal headlocks, and pigs behind metal railings on concrete floors in indoor facilities. While OpenAI introduced prompt revision to mitigate bias, in the case of farmed animal production systems, it paradoxically introduces a strong bias towards unrealistic farming practices.
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- North America > Canada > British Columbia > Metro Vancouver Regional District > Vancouver (0.14)
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- Research Report > New Finding (0.93)
- Research Report > Experimental Study (0.93)
Mapping Methane -- The Impact of Dairy Farm Practices on Emissions Through Satellite Data and Machine Learning
Bi, Hanqing, Neethirajan, Suresh
This study investigates the correlation between dairy farm characteristics and methane concentrations as derived from satellite observations in Eastern Canada. Utilizing data from 11 dairy farms collected between January 2020 and December 2022, we integrated Sentinel-5P satellite methane data with critical farm-level attributes, including herd genetics, feeding practices, and management strategies. Initial analyses revealed significant correlations with methane concentrations, leading to the application of Variance Inflation Factor (VIF) and Principal Component Analysis (PCA) to address multicollinearity and enhance model stability. Subsequently, machine learning models - specifically Random Forest and Neural Networks - were employed to evaluate feature importance and predict methane emissions. Our findings indicate a strong negative correlation between the Estimated Breeding Value (EBV) for protein percentage and methane concentrations, suggesting that genetic selection for higher milk protein content could be an effective strategy for emissions reduction. The integration of atmospheric transport models with satellite data further refined our emission estimates, significantly enhancing accuracy and spatial resolution. This research underscores the potential of advanced satellite monitoring, machine learning techniques, and atmospheric modeling in improving methane emission assessments within the dairy sector. It emphasizes the critical role of farm-specific characteristics in developing effective mitigation strategies. Future investigations should focus on expanding the dataset and incorporating inversion modeling for more precise emission quantification. Balancing ecological impacts with economic viability will be essential for fostering sustainable dairy farming practices.
- Europe (0.68)
- North America > Canada > Nova Scotia (0.28)
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- Food & Agriculture > Agriculture (1.00)
- Energy > Oil & Gas > Upstream (0.46)
A Deep Reinforcement Learning Approach to Battery Management in Dairy Farming via Proximal Policy Optimization
Ali, Nawazish, Shaw, Rachael, Mason, Karl
Dairy farms consume a significant amount of electricity for their operations, and this research focuses on enhancing energy efficiency and minimizing the impact on the environment in the sector by maximizing the utilization of renewable energy sources. This research investigates the application of Proximal Policy Optimization (PPO), a deep reinforcement learning algorithm (DRL), to enhance dairy farming battery management. We evaluate the algorithm's effectiveness based on its ability to reduce reliance on the electricity grid, highlighting the potential of DRL to enhance energy management in dairy farming. Using real-world data our results demonstrate how the PPO approach outperforms Q-learning by 1.62% for reducing electricity import from the grid. This significant improvement highlights the potential of the Deep Reinforcement Learning algorithm for improving energy efficiency and sustainability in dairy farms.
- Food & Agriculture > Agriculture (1.00)
- Energy > Renewable > Solar (1.00)
- Energy > Power Industry (1.00)
- Energy > Energy Storage (1.00)
Informatics & dairy industry coalition: AI trends and present challenges
García-Méndez, Silvia, de Arriba-Pérez, Francisco, Somoza-López, María del Carmen
Artificial Intelligence (AI) can potentially transform the industry, enhancing the production process and minimizing manual, repetitive tasks. Accordingly, the synergy between high-performance computing and powerful mathematical models enables the application of sophisticated data analysis procedures like Machine Learning. However, challenges exist regarding effective, efficient, and flexible processing to generate valuable knowledge. Consequently, this work comprehensively describes industrial challenges where AI can be exploited, focusing on the dairy industry. The conclusions presented can help researchers apply novel approaches for cattle monitoring and farmers by proposing advanced technological solutions to their needs.
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- Information Technology > Data Science > Data Mining (0.93)
Reinforcement Learning Enabled Peer-to-Peer Energy Trading for Dairy Farms
Shah, Mian Ibad Ali, Barrett, Enda, Mason, Karl
Farm businesses are increasingly adopting renewables to enhance energy efficiency and reduce reliance on fossil fuels and the grid. This shift aims to decrease dairy farms' dependence on traditional electricity grids by enabling the sale of surplus renewable energy in Peer-to-Peer markets. However, the dynamic nature of farm communities poses challenges, requiring specialized algorithms for P2P energy trading. To address this, the Multi-Agent Peer-to-Peer Dairy Farm Energy Simulator (MAPDES) has been developed, providing a platform to experiment with Reinforcement Learning techniques. The simulations demonstrate significant cost savings, including a 43% reduction in electricity expenses, a 42% decrease in peak demand, and a 1.91% increase in energy sales compared to baseline scenarios lacking peer-to-peer energy trading or renewable energy sources.
A Reinforcement Learning Approach to Dairy Farm Battery Management using Q Learning
Ali, Nawazish, Wahid, Abdul, Shaw, Rachael, Mason, Karl
Dairy farming consumes a significant amount of energy, making it an energy-intensive sector within agriculture. Integrating renewable energy generation into dairy farming could help address this challenge. Effective battery management is important for integrating renewable energy generation. Managing battery charging and discharging poses significant challenges because of fluctuations in electrical consumption, the intermittent nature of renewable energy generation, and fluctuations in energy prices. Artificial Intelligence (AI) has the potential to significantly improve the use of renewable energy in dairy farming, however, there is limited research conducted in this particular domain. This research considers Ireland as a case study as it works towards attaining its 2030 energy strategy centered on the utilization of renewable sources. This study proposes a Q-learning-based algorithm for scheduling battery charging and discharging in a dairy farm setting. This research also explores the effect of the proposed algorithm by adding wind generation data and considering additional case studies. The proposed algorithm reduces the cost of imported electricity from the grid by 13.41%, peak demand by 2%, and 24.49% when utilizing wind generation. These results underline how reinforcement learning is highly effective in managing batteries in the dairy farming sector.
- Europe > Ireland (0.36)
- Oceania > Australia > South Australia (0.04)
- North America > United States > Pennsylvania (0.04)
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- Food & Agriculture > Agriculture (1.00)
- Energy > Renewable > Solar (1.00)
- Energy > Renewable > Wind (0.88)