Analytical Instrumentation

The Petrochemical Industry: Balancing Demand with Sustainability through AI-Powered Analysis

Jul 31 2024

Author: Dr. Raj Shah, Angelina Mae Percilla and Aurea Barragan on behalf of Koehler Instrument Company

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1 Introduction

The petrochemical industry underpins global infrastructure, providing the essential building blocks for a vast array of products and processes. Petrochemicals are integral to modern society, from the widespread use of plastics to the essential role of fertilizers in food security [1]. However, this success story faces a pressing challenge: reconciling ever-increasing demand with environmental responsibility. Traditional methods of oil and gas extraction and utilization often incur significant environmental costs [2]. Greenhouse gas emissions, air and water pollution, and ecosystem disruption are just some of the concerning byproducts associated with these processes.

This challenge is further compounded by the relentless rise in global demand for petrochemical products. Driven by population growth and rising living standards, this demand is projected to grow from $ USD 649.16 billion in 2024 to USD 900.91 billion by 2032 at a CAGR of 4.2% [3]. Bridging the gap between this deaand establish a more sustainable path forward. This paper explores the transformative potent offer AI in petrochemical analysis, examining its key applications and the significant benefits it offers for a more balanced and responsible industry.

 

2 The Oil Industry

2.1 The evolution of the oil industry
The oil industry has undergone a dramatic transformation since its beginnings in 1859 with the drilling of the first commercial well in Pennsylvania [4]. A brief timeline in Table 1 shows the key milestones that helped establish the oil industry as it is today. Early exploration and analysis heavily relied on manual labor and rudimentary techniques. For example, surface prospecting, a method that identified potential oil reserves based on visible oil seeps, was a common practice throughout the 1860s and early in the age of oil [5]. These limitations hindered efficient resource discovery and extraction.
Throughout the years, technological advancements have revolutionized the oil industry. Seismic surveys in the 1930s, improved drilling techniques, and advanced lab analyses have made exploration and production much more precise and efficient [6, 7]. Despite these innovations, significant human expertise and investment are still required, creating an opportunity for AI to further optimize these processes.

2.2 The role of petrochemical analysis
Extracted crude oil, though valuable, is a raw material. To unlock its full potential and transform it into the vast array of petrochemical products relied upon globally, the oil industry depends on a crucial process: petrochemical analysis. This analysis involves a complex series of chemical tests that unveil the molecular composition of crude oil and its various derivatives [8].
Refineries leverage detailed analyses of crude oil composition in several ways. By understanding the complex makeup of the crude oil, they can optimize their processes to extract the maximum amount of the specific products needed. For instance, in the oil industry, if a refinery aims to produce more plastics, a detailed analysis will guide adjustments to the refining process to maximize the yield of naphtha, a key feedstock for plastic production. This involves identifying the right combination of hydrocarbons and refining conditions that enhance the production of polymers, which are the building blocks of plastics [9].
Petrochemical analysis also plays a vital role in ensuring that final products meet stringent quality standards set by organizations like ASTM International. Furthermore, a deeper understanding of crude oil’s composition allows refineries to reduce waste by optimizing processes and minimizing the creation of byproducts, therefore minimizing environmental impact.
Petrochemical analysis acts as the bridge between the raw material (crude oil) and the vast array of valuable products derived from it. However, traditional methods of analysis can be labor-intensive and time-consuming, limiting their effectiveness in a rapidly evolving industry. This is where AI steps in, offering a powerful solution to streamline and enhance petrochemical analysis.    

 

3 Integration of AI in Petrochemical Analysis

3.1 AI revolutionizing petrochemical analysis
Although petrochemical analysis is a powerful tool, the industry faces challenges such as reducing energy consumption and greenhouse gas emissions [10]. Traditionally, this process was labor-intensive, requiring significant human effort to interpret complex and often overwhelming datasets generated during oil exploration, production, and refining [11]. However, AI technologies are revolutionizing this field by offering superior capabilities:
•    Big Data Processing: Unlike traditional methods, AI excels at handling the massive volumes of data generated from sensors, well logs, and operational records across oil and gas companies [12-14].
•    Advanced Analytics: AI algorithms, particularly machine learning (ML), can sift through this data to identify hidden patterns and anomalies that human analysts might miss [15].
The field of AI encompasses a vast array of techniques that enable machines to simulate human intelligence. ML is a subfield of AI that focuses on algorithms that can learn and improve from data without being explicitly programmed. Deep Learning (DL) is a further specialization within ML, utilizing artificial neural networks with multiple layers to process complex data structures. Figure 1 illustrates the hierarchical rel ationship between these concepts, with DL building upon the foundation of ML, which itself is a subset of the broader field of AI.

Figure 1. Artificial intelligence vs. machine learning vs. deep learning.

AI applications in petrochemical analysis span diverse areas, leveraging advanced algorithms to enhance industry operations. Sensors on equipment feed data to ML algorithms, predicting maintenance needs and preventing costly downtime [16]. Meanwhile, AI optimizes production in real-time using neural networks, maximizing output [17, 18]. Even complex tasks like catalyst development are accelerated with DL techniques that analyze molecular models. AI can also monitor environmental data to predict emissions and ensure compliance, while optimizing supply chains through ML that considers market trends [17, 19]. Finally, AI bolsters safety by analyzing real-time information to identify potential hazards before incidents occur.
Recognizing the immense potential of AI, several major oil companies have formed strategic partnerships with IT giants to enhance their AI capabilities in the oil and gas industry. These collaborations aim to translate theoretical applications into real-world solutions. For example, Total collaborated with Google Cloud to improve subsurface data interpretation through advanced AI techniques like computer vision and natural language processing [20]. Shell partnered with Microsoft to develop the Geodesic platform for precise horizontal well trajectory control, thereby optimizing drilling efficiency [21]. Similarly, ExxonMobil is working with Microsoft on an integrated cloud platform for real-time oilfield data collection, enabling informed decision-making throughout the production process [22]. These are only a few examples of how industry leaders are leveraging AI through collaboration. Table 2 provides a comprehensive overview of AI strategies adopted by major oil companies and service providers globally, detailing their specific focus areas and technological implementations in the pursuit  of digital transformation with the oil industry.
 

3.2 Challenges

3.2.1 Talent acquisition and skill development
A significant challenge lies in the scarcity of skilled AI professionals specializing in petrochemical analysis. Effective implementation of AI solutions requires tailoring them to specific analytical contexts and unique datasets. This necessitates in-house teams with a blend of data science expertise and domain knowledge of the petrochemical industry. However, the competition for these professionals is fierce, with oil and gas companies facing stiff competition from tech giants [23].
The evolving role of petroleum engineers and analysts in the AI era requires significant adaptation. While AI will not eliminate their jobs, it necessitates that these professionals develop a strong foundation in data science and the ability to identify analytical tasks suitable for AI solutions [23]. Petroleum engineers must acquire skills in areas such as statistics, ML, data visualization, and programming to work alongside data scientists. This ensures that the right problems are identified for AI application, appropriate data is collected, and solutions align with physical and process realities.
Universities like the University of Kansas and Texas A&M University in the US have implemented educational programs that blend data science with petroleum studies to prepare the next generation of petroleum engineers. Soon, professionals will need to learn how to collaborate effectively with AI assistants specialized in industry applications, similar to consumer AI like Alexa or Siri but focused on oil and gas tasks. This adaptation is crucial for augmenting decision-making capabilities and ensuring that AI solutions are properly contextualized within the industry’s complex operational environment.

3.2.2 Data quality and management
AI thrives on high-quality, voluminous data. While petrochemical processes generate vast amounts of raw data, its quality and usefulness for AI applications can be inconsistent. Data accuracy and labeling issues are prevalent, hindering effective AI model training for analytical tasks [24].  
To address these issues, companies need to adopt a more systematic and precise approach to data collection in their analytical processes. This involves focusing on long-term, context-specific data gathering efforts, ensuring that data is collected consistently over time and under the same conditions. A case study by Al-Thuwaini et al. demonstrated the use of AI for history matching in oilfields, integrating geological and hydraulic data [25]. They used Self Organizing Maps (SOMs) to cluster grid blocks into regions based on multiple parameters, reducing simulation runs while maintaining geological consistency. Their approach introduced a “weighted RMS-error” calculation, allowing direct correlation between input changes and regional match quality improvements. This method improved efficiency in history matching, even for large-scale models with over 400 wells, significantly reducing the number of required simulation runs. Figure 2a illustrates the improvement in pressure matching for Well-1A over multiple iterations, while Figure 2b shows a marked improvement in water cut matching for Well-3C, with the final solution clearly outperforming initial sensitivity ranges.
Furthermore, data management practices must be revamped to create centralized, accessible data warehouses. These data warehouses will facilitate easy access and utilization by AI systems for petrochemical analysis [26]. For instance, Mohaghegh et al. utilized a top-down reverse modeling approach in shale reservoirs, where a cohesive model was created by integrating various data types through data mining techniques [27]. This approach not only enhanced predictive accuracy but also demonstrated the importance of having a well-managed, comprehensive data repository.

3.2.3 Technological and organizational integration
Seamlessly integrating AI with existing analytical technologies and organizational structures is a complex undertaking. AI applications must be compatible with current analytical systems and processes, which often necessitate significant modifications. Additionally, the industry’s traditional operational divisions can hinder the broader adoption of cross-functional AI use cases in analysis. Rethinking these divisions to leverage AI’s potential for improving efficiency and productivity across various analytical domains is essential [28].

3.2.4 Environmental sustainability considerations
The ecological impact of petrochemical processes adds another layer of complexity to AI integration in analysis. While AI and machine learning have the potential to develop more environmentally sustainable methods by improving analytical techniques and enhancing data interpretation, ensuring these technologies are environmentally responsible remains a challenge. The development of AI systems that minimize environmental impact while optimizing analytical processes is essential for the sustainable growth of AI applications in petrochemical analysis [19].

3.2.5 Cybersecurity concerns
The integration of AI systems in petrochemical analysis introduces new cybersecurity vulnerabilities. As these systems become more interconnected and rely on cloud computing and IoT devices, they become potential targets for cyberattacks. A successful attack could not only compromise sensitive data but also potentially disrupt critical operations, leading to safety hazards and environmental risks. Implementing robust cybersecurity measures, including AI-powered threat detection systems, becomes paramount to protect these critical infrastructures.

3.3 Applications of AI
The integration of AI in petrochemical analysis has significantly transformed the oil industry, driving advancements in efficiency, accuracy, and environmental monitoring.

3.3.1 Process optimization and control
Intelligent agents and multi-agent systems, a form of AI, have revolutionized process control and decision-making. For example, a system designed by Koumboulis et al. utilizes multiple agents to assist process operators by selecting and tuning controllers, choosing setpoints, and detecting faults [29]. This automation frees human operators for higher-level tasks, significantly improving efficiency and reducing human error in complex petrochemical operations. In oilfield development, multi-agent systems can also optimize production plans by integrating real-time data from various sources, allowing for adaptive control strategies that respond dynamically to changing conditions.
ML has also revolutionized Advanced Process Control (APC) systems. ML models like Random Forest and Support Vector Regression can analyze historical data to predict Controlled Variables (CVs) with high accuracy, ensuring these variables remain within desired ranges for optimal production [30]. For example, Al-Thuwaini et al. demonstrated the use of ANN combined with self-organizing maps (SOM) for history matching, which significantly improved matching quality and reduced the number of iterations needed to achieve target matching [25]. This method can oversee geological and hydraulic data, thereby enhancing the overall process control in oilfield operations.
In the same manner, ANN combined with optimization algorithms has shown to capture the nonlinearity of problems effectively, as evidenced by Costa et al., who validated their approach with synthetic reservoirs showing actual reservoir characteristics [18]. This combination reduces simulation times and improves fitting effects. For instance, in a case with 8 production wells, an ANN model trained on 250 data points achieved an overall 88% match with historical data, far better than the base case. As shown in Figure 3, the model accurately predicted water production rates for most wells, with some achieving nearly perfect matches. Importantly, by using strategic sampling and retraining techniques, similar results were achieved with fewer data points, demonstrating the method’s potential to reduce computational costs in reservoir modeling while maintaining high accuracy.

3.3.2 Environmental monitoring and sustainability
AI’s capabilities extend to environmental monitoring. A study in the Niger Delta employed self-organizing maps (SOMs) within artificial neural networks (ANNs) to analyze environmental samples [17]. This AI method, shown in Figure 4, effectively identified pollution patterns, pinpointing areas with high concentrations of harmful pollutants. These insights enabled targeted environmental remediation strategies, demonstrating AI’s potential to contribute to a more sustainable industry.
AI-powered predictive analytics are gaining traction for safety and environmental assessments. These systems analyze historical data and real-time monitoring to identify patterns that precede incidents, allowing for proactive measures to prevent environmental damage and accidents [19]. Studies suggest AI-enabled systems could potentially reduce carbon emissions in the petrochemical industry by up to 20% through optimized energy use.
    
3.3.3 Quality control and product development
AI is revolutionizing quality control in petrochemical production. ML algorithms, such as neural networks and support vector machines, can analyze spectroscopic data in real-time, ensuring product consistency and detecting impurities with unprecedented accuracy. Advanced neural network models, such as those implemented in systems like DiaSter, monitor and diagnose complex processes, identifying improper states and providing corrective advice to operators.
DiaSter, a software package developed by a consortium of Polish universities, exemplifies the power of AI in process control. It employs a locally recurrent neural network to model and diagnose industrial processes. In a case study involving a three-tank benchmark system, DiaSter’s neural network model demonstrated high accuracy in predicting liquid levels. The model used one hidden layer with seven neurons and a hyperbolic tangent activation function. Trained on 2000 samples using the adaptive random search algorithms, it achieved impressive performance metrics when tested on 13,000 samples (Sum of Squared Errors = 11.67, Mean Squared Error = 8.9 × 10-4) [31]. This level of precision in modeling and diagnostics significantly reduces the risk of defective products and enables proactive maintenance, reducing downtime.

 

4 Future Trends

The impact of AI in petrochemical analysis is poised to revolutionize the industry, with estimates suggesting it could add up to $1 trillion in value annually through efficiency gains and cost reductions across the oil and gas industry [31, 34]. This substantial value creation stems from multiple factors: higher product quality and consistency, reduced waste and increased production efficiency, accelerated innovation in product development, and optimized supply chain operations through AI-driven predictive analytics.
Looking ahead, the future of AI in petrochemical analysis presents exciting possibilities. One key area of development is closed-loop optimization, which involves integrating AI throughout the entire petrochemical value chain, from exploration to production. This comprehensive approach could enable holistic process optimization and ensure sustainability across the lifecycle of petrochemical products. Another promising avenue is the development of self-learning systems. These advanced systems would continuously learn and improve from operational data, further enhancing efficiency and adaptability within the petrochemical sector. As AI technologies mature, the realization of such self-learning systems is becoming increasingly feasible.
Establishing industry-wide standards for AI implementation in petrochemical analysis is also crucial for future growth. These standards would address data security, interoperability between different AI systems, and responsible development practices. By fostering collaboration and setting clear benchmarks, the industry can ensure that AI is harnessed for both economic growth and environmental sustainability. To fully realize these advancements, continued investment in AI technologies and skilled professionals is essential. Collaboration between industry stakeholders, academic institutions, and technology providers will be key to driving innovation and overcoming challenges.

 

5 Conclusion

By embracing these future trends and fostering a culture of innovation, the petrochemical industry can solidify its position as a key driver of economic growth and sustainability in the years to come. The integration of AI across all aspects of petrochemical analysis will not only enhance operational efficiency but also contribute to more sustainable practices, aligning the industry with global environmental goals. As AI technologies continue to evolve, their application in petrochemical analysis will undoubtedly unlock new opportunities for optimization, innovation, and sustainability, shaping the future of this industry.

 

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