Detection and Classification of Internal Leakage in Hydraulic Cylinders
Mehrbod Zarifi, Mohamad Amin Jamshidi, Zolfa Anvari, Hamed Ghafarirad, Mohammad Zareinejad

TL;DR
This paper presents an LSTM-based algorithm for real-time detection and classification of internal leakage in hydraulic cylinders, achieving 96% accuracy and enabling proactive maintenance to improve system reliability.
Contribution
It introduces a novel LSTM neural network approach for internal leakage detection in hydraulic cylinders, enhancing detection speed and accuracy over traditional methods.
Findings
Achieved 96% accuracy in classifying leakage types.
Enabled real-time, online fault diagnosis for hydraulic systems.
Reduced maintenance costs and extended system lifespan.
Abstract
Hydraulic systems have been one of the most used technologies in many industries due to their reliance on incompressible fluids that facilitate energy and power transfer. Within such systems, hydraulic cylinders are prime devices that convert hydraulic energy into mechanical energy. Some of the genuine and very common problems related to hydraulic cylinders are leakages. Leakage in hydraulic systems can cause a drop in pressure, general inefficiency, and even complete failure of such systems. The various ways leakage can occur define the major categorization of leakage: internal and external leakage. External leakage is easily noticeable, while internal leakage, which involves fluid movement between pressure chambers, can be harder to detect and may gradually impact system performance without obvious signs. When leakage surpasses acceptable limits, it is classified as a fault or…
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