Article citationsMore>>
Ni, Y., Li, B., Lam, K., Zhu, D., Wang, Y., Lynch, J. and Law, K. (2011) In-Construction Vibration Monitoring of a Super-Tall Structure Using a Long-Range Wireless Sensing System. Smart Structures and Systems, 7, 83-102.
https://doi.org/10.12989/sss.2011.7.2.083
has been cited by the following article:
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TITLE:
An Intelligent System for Real-Time Condition Monitoring of Tower Cranes
AUTHORS:
Aaron K. Adik, Wilson Wang
KEYWORDS:
Adaptive Neuro-Fuzzy Systems, Machine Learning, Diagnostics, Pattern Classification, Tower Cranes, Smart Sensors
JOURNAL NAME:
Intelligent Control and Automation,
Vol.10 No.4,
November
26,
2019
ABSTRACT: Reliability and safety are major issues in tower crane applications. A new adaptive neurofuzzy system is developed in this work for real-time health condition monitoring of tower cranes, especially for hoist gearboxes. Vibration signals are measured using a wireless smart sensor system. Fault detection is performed gear-by-gear in the gearbox. A new diagnostic classifier is proposed to integrate strengths of several signal processing techniques for fault detection. A hybrid machine learning method is proposed to facilitate implementation and improve training convergence. The effectiveness of the developed monitoring system is verified by experimental tests.