Research and Application of High-Precision Intelligent Control Technology for Hydraulic Power Machinery
DOI:
https://doi.org/10.62051/ijmee.v4n3.07Keywords:
Hydraulic Power Machinery, High-precision Intelligent Control, Fault Diagnosis, Adaptive ControlAbstract
The high-precision intelligent control technology for hydraulic power machinery is of great significance in improving the automation level of the equipment manufacturing industry. This study addresses issues such as low precision and poor reliability in traditional hydraulic control systems by developing a high-precision control technology solution based on intelligent algorithms. The research adopts a control strategy combining adaptive PID and fuzzy neural networks, establishing a real-time monitoring and fault diagnosis system to achieve intelligent control of the system. Engineering applications show that this technology significantly improves equipment control precision and system stability, reduces equipment failure rates and operational costs, and enhances production efficiency and product quality, providing good economic benefits and application value for promotion.
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