Остання редакція: 2025-04-23
Анотація
This paper presents the development of an automated oil purification system based on the integration of nanotechnology and optoelectronic sensor technologies. The use of nanomaterials—such as carbon nanotubes and metallic nanoparticles—enhances the efficiency and selectivity of the purification process, especially in aggressive environments. Optoelectronic sensors equipped with microscale laser and photodetection components enable real-time monitoring of oil quality parameters, including contaminant concentration, moisture content, and sulfur compounds. The system architecture incorporates adaptive control algorithms for dynamic regulation of operational conditions, thus improving energy efficiency and environmental safety. The proposed solution is applicable to both large-scale refineries and mobile purification units, contributing to the development of intelligent and sustainable technologies in the oil and gas sector.
Посилання
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