Al-Shafei Emad, Aljishi Ali, Albahar Mohammed, Alnasir Ali, Aljishi Mohammad
Research and Development Center, Saudi Aramco, Dhahran, Saudi Arabia.
Anal Sci. 2024 Oct;40(10):1899-1906. doi: 10.1007/s44211-024-00625-4. Epub 2024 Jul 2.
This study introduces a suite of robust models aimed to advance the determination of physiochemical properties in heavy oil refinery fractions. By integrating real-time analytical technique inside the refinery analysis, we have developed a single analyzer capable of employing six partial least square regression equations. These designed models enable to provide real-time prediction of critical petroleum properties, such as sulfur content, micro carbon residues (MCR), asphaltene content, heating value, and the concentrations of nickel and vanadium metals. Specifically tailored for heavy oil in refinery feeds with an American petroleum institute (API) gravity range of 3° to 32° and sulfur content of 2.8 to 5.5 wt%, the models streamline the analysis process within refinery operations, bridging the gap between catalytic and non-catalytic processes across refinery units. The accuracy of our physiochemical prediction models has been validated against American Society for Testing and Materials (ASTM) standards, demonstrating their capability to deliver precise real-time property values. This approach not only enhances the efficiency of refinery analysis but also sets a new standard for the monitoring and optimization of heavy oil processing in real-time approach.
本研究介绍了一套强大的模型,旨在推进重油精炼馏分中物理化学性质的测定。通过在炼油厂分析中集成实时分析技术,我们开发了一种能够采用六个偏最小二乘回归方程的单一分析仪。这些设计的模型能够实时预测关键的石油性质,如硫含量、微量残炭(MCR)、沥青质含量、热值以及镍和钒金属的浓度。这些模型专门针对美国石油学会(API)比重范围为3°至32°、硫含量为2.8至5.5 wt%的炼油厂进料中的重油进行了定制,简化了炼油厂操作中的分析过程,弥合了炼油装置中催化和非催化过程之间的差距。我们的物理化学预测模型的准确性已根据美国材料与试验协会(ASTM)标准进行了验证,证明了它们能够提供精确的实时性质值。这种方法不仅提高了炼油厂分析的效率,还为实时监测和优化重油加工设定了新的标准。