Artificial General Intelligence (AGI) Applications and Prospect in Oil and Gas Reservoir Development
Abstract
:1. Introduction
1.1. Oil and Gas Reservoir Development: Challenges and Technological Demands
- Resource depletion: As conventional reserves are exhausted, the industry is increasingly turning to more complex and costly unconventional resources such as shale, deepwater, and Arctic oil. Extracting these resources demands higher technical expertise and more advanced technologies;
- Operational inefficiency: The oil and gas sector faces substantial inefficiencies, with significant energy waste, equipment failure rates, and lengthy downtime. Traditional methods of monitoring and optimizing production often result in suboptimal performance and high operational costs;
- Safety and risk management: Oil and gas operations are inherently risky, with potential for catastrophic accidents such as oil spills, equipment failures, and explosions. The sector requires advanced risk assessment and safety management tools to mitigate these hazards;
- Environmental concerns: With growing global concern about climate change and sustainability, oil and gas reservoir development faces increased scrutiny. Regulatory compliance, reducing carbon emissions, and managing environmental impacts have become central to industry operations;
- These challenges present an urgent need for innovation, particularly in the areas of data processing, predictive maintenance, operational optimization, and risk management. Artificial intelligence, and more specifically AGI, has the potential to address these issues through its ability to process large volumes of complex data and generate actionable insights in real time.
1.2. Artificial Intelligence and AGI
1.3. Current Applications of AGI in Oil and Gas Reservoir Development
- Exploration and geophysics: Exploration is the first and perhaps most critical stage in the oil and gas value chain. Traditional exploration methods, such as seismic surveys and geological modeling, often generate large volumes of data that require expert interpretation. AGIs can assist in this domain by automating the interpretation of geophysical reports, seismic data, and geological surveys, providing insights that would take human experts significantly longer to analyze. Additionally, AGIs can be used to predict the potential location of new oil and gas reserves by identifying patterns in historical exploration data [37,41,42,43];
- Production optimization and maintenance: Once an oil or gas field is operational, the focus shifts to optimizing production and ensuring the efficiency of the extraction process. AGIs can assist in the analysis of real-time sensor data, predicting potential equipment failures, and recommending corrective actions. They can process vast amounts of operational data to identify patterns that indicate potential inefficiencies or risks, such as machinery wear, pressure fluctuations, or irregular temperature readings. By providing predictive maintenance capabilities, AGIs can significantly reduce downtime, extend the lifespan of critical equipment, and increase overall production efficiency [44,45,46,47,48];
- Refining and distribution: In the refining process, oil and gas companies face the challenge of managing complex chemical processes to maximize yields and reduce costs. AGIs can be deployed to analyze process data, predict the outcome of refining operations, and optimize production schedules. By automating real-time decision-making, AGIs can help refineries improve product quality and reduce energy consumption. Additionally, AGIs can aid in optimizing supply chains by predicting demand fluctuations and adjusting distribution schedules to minimize operational costs [49,50,51].
2. The Current Status and Key Technologies of AGI
2.1. Current Status of AGI
2.2. Transformer Model Architecture
2.3. Retrieval-Augmented Generation (RAG)
3. Applications of AGI in Oil and Gas Reservoir Development
3.1. Data Analysis and Interpretation
3.2. Operational Optimization
3.3. Knowledge Management and Employee Training
4. Prospect of AGI in Oil and Gas Reservoir Development
5. Conclusions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Model | Arena Elo | Coding | Vision | Arena Hard | MMLU | Votes | Organization | License |
---|---|---|---|---|---|---|---|---|
chocolate (early Grok 3) | 1402 | 1399 | 7829 | xAI | Proprietary | |||
Gemini-2.0-Flash-Thinking-Exp-01-21 | 1385 | 1368 | 1280 | 13,336 | Proprietary | |||
Gemini-2.0-Pro-Exp-02-05 | 1379 | 1372 | 1252 | 11,197 | Proprietary | |||
ChatGPT-4o-latest (29 January 2025) | 1377 | 1360 | 1276 | 10,529 | OpenAI | Proprietary | ||
DeepSeek-R1 | 1361 | 1362 | 5079 | DeepSeek | MIT | |||
Gemini-2.0-Flash-001 | 1356 | 1353 | 1243 | 9092 | Proprietary | |||
ChatGPT-o1-2024-12-17 | 1353 | 1363 | 90.4 | 15,437 | OpenAI | Proprietary | ||
Qwen2.5-Max | 1332 | 1335 | 7370 | Alibaba | Proprietary | |||
DeepSeek-V3 | 1317 | 1317 | 17,717 | DeepSeek | Proprietary | |||
Qwen2.5-Plus-0125 | 1313 | 1316 | 3682 | Alibaba | Proprietary | |||
Gemini-2.0-Flash-Lite-Preview-02-05 | 1310 | 1322 | 1153 | 8465 | Proprietary | |||
GLM-4-Plus-0111 | 1308 | 1291 | 4171 | Zhipu | Proprietary |
Model | Strengths | Weaknesses |
---|---|---|
chocolate (early Grok 3) | Creative outputs, rapid prototyping | Limited multimodal support, unstable API |
Gemini-2.0-Flash-Thinking-Exp-01-21 | Fast response time, cost-effective | Limited context retention, basic reasoning |
Gemini-2.0-Pro-Exp-02-05 | High accuracy, strong reasoning | Slower inference, higher resource usage |
ChatGPT-4o-latest (29 January 2025) | Multimodal integration, updated training | High computational cost, licensing fees |
DeepSeek-R1 | Strong math/logic focus, open-source | Weak multilingual support, niche use cases |
Gemini-2.0-Flash-001 | Low latency, scalable for simple tasks | Struggles with ambiguity, shallow outputs |
ChatGPT-o1-2024-12-17 | Stable API, conversational fluency | Outdated knowledge, lacks newer features |
Qwen2.5-Max | Robust for complex tasks, large context | High inference cost, slow for real time |
DeepSeek-V3 | Optimized for code/STEM, fine-tuned | Limited creativity, rigid responses |
Qwen2.5-Plus-0125 | Balanced performance, API-friendly | Moderate accuracy in niche domains |
Gemini-2.0-Flash-Lite-Preview-02-05 | Lightweight, mobile-friendly | Minimal customization, low-depth analysis |
GLM-4-Plus-0111 | Strong Chinese NLP, affordable | Limited non-Chinese support, fewer tools |
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Wang, J.; Luo, X.; Zhang, X.; Du, S. Artificial General Intelligence (AGI) Applications and Prospect in Oil and Gas Reservoir Development. Processes 2025, 13, 1413. https://doi.org/10.3390/pr13051413
Wang J, Luo X, Zhang X, Du S. Artificial General Intelligence (AGI) Applications and Prospect in Oil and Gas Reservoir Development. Processes. 2025; 13(5):1413. https://doi.org/10.3390/pr13051413
Chicago/Turabian StyleWang, Jiulong, Xiaotian Luo, Xuhui Zhang, and Shuyi Du. 2025. "Artificial General Intelligence (AGI) Applications and Prospect in Oil and Gas Reservoir Development" Processes 13, no. 5: 1413. https://doi.org/10.3390/pr13051413
APA StyleWang, J., Luo, X., Zhang, X., & Du, S. (2025). Artificial General Intelligence (AGI) Applications and Prospect in Oil and Gas Reservoir Development. Processes, 13(5), 1413. https://doi.org/10.3390/pr13051413