Design of intelligent pipeline monitoring header based on embedded system

JIANG Hongjie, HUO Chunbao, HONG Hao

Integrated Circuits and Embedded Systems ›› 2025, Vol. 25 ›› Issue (7) : 57-62.

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Integrated Circuits and Embedded Systems ›› 2025, Vol. 25 ›› Issue (7) : 57-62. DOI: 10.20193/j.ices2097-4191.2025.0027
Research Paper

Design of intelligent pipeline monitoring header based on embedded system

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Abstract

With the rapid development of Industrial Internet of Things (IIoT) and smart sensing technologies, the importance of pipeline pressure monitoring has become increasingly prominent in fields such as oil, natural gas, water utilities, and urban heating. This paper designs an intelligent pipeline monitoring meter head, aiming to achieve high-precision, real-time, and intelligent pipeline pressure monitoring. The monitoring meter head integrates advanced sensor technology, a low-power wireless communication module, and an embedded data processing system, enabling real-time collection, transmission, and analysis of pipeline pressure data. The monitoring meter head employs a high-precision MEMS pressure sensor combined with a temperature compensation algorithm to ensure measurement accuracy and stability. It is equipped with an embedded microprocessor capable of data preprocessing and anomaly detection. Additionally, it supports the RS485 communication protocol and standardized interfaces, facilitating integration with other systems. The experimental results demonstrate that the intelligent pipeline monitoring meter head achieves superior performance in measurement accuracy, communication range, and power consumption, meeting the practical requirements of industrial applications.

Key words

intelligent pipeline monitoring / MEMS sensors / embedded systems / RS485

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JIANG Hongjie , HUO Chunbao , HONG Hao. Design of intelligent pipeline monitoring header based on embedded system[J]. Integrated Circuits and Embedded Systems. 2025, 25(7): 57-62 https://doi.org/10.20193/j.ices2097-4191.2025.0027

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