Core Insights - The integration of artificial intelligence (AI) technology is accelerating within the oil and petrochemical industry, driving transformation across the entire value chain from exploration to production management [1] - The application of AI in industrial scenarios must be approached cautiously due to high safety requirements and low tolerance for errors, necessitating a "human-machine collaboration" strategy [2][3] - AI is transitioning from being an auxiliary tool to becoming a core support system in oil and gas field development, with significant potential to enhance recoverable reserves and reduce development costs [4] Group 1: AI Integration and Challenges - Experts emphasize the importance of a rational approach to AI adoption in the oil and petrochemical sector, balancing the potential to address knowledge asymmetries with the need to avoid blindly chasing new technologies [3] - The current mismatch in supply and demand for AI expertise in the industry is highlighted, with many companies lacking familiarity with industrial processes while AI-savvy firms lack industrial knowledge [2] - The establishment of platforms for AI-enabled industrial supply-demand matching is underway, facilitating over 300 offline connections and fostering successful case studies in various fields [2] Group 2: Technological Advancements - AI technologies are showing promising results in enhancing oil and gas field development, with studies indicating a potential 5% increase in recoverable reserves and a 10% to 30% reduction in development costs [4] - The development of autonomous and controllable technology systems is urgent, as over 90% of reservoir numerical simulation software is currently imported [4] - Innovative models and methods, such as the PINN-GCEM and the generalized connection unit method, have been developed to improve simulation speed and efficiency significantly [4] Group 3: Industry Initiatives - Major state-owned enterprises are leading the integration of AI and industrial internet applications, with China National Offshore Oil Corporation (CNOOC) implementing intelligent remote control production systems [6][7] - China Petroleum and Chemical Corporation (Sinopec) has developed a three-tier model system and a large model with significant parameters, enhancing data processing capabilities across various applications [7] - China National Petroleum Corporation (CNPC) has created a multi-layer architecture for its Kunlun model, significantly increasing the parameters of its language and visual models [8]
石油石化行业AI怎么从“可用”到“实用”