This report deals with the fundamental behavior of friction dampers for piping systems installed in industrial facilities. Energy dissipating effect depends on sliding displacement and friction force. If the sliding motion increases, the effect of energy dissipation is expected to rise. In this report, a ball screw-type magnetic friction damper is proposed to adapt on piping systems. In order to increase the frictional sliding, this damper converts an axial motion to a rotating motion by a ball screw. Frictional behavior occurs between a rotation disk and a fixed disk on the frame of damper. Friction force depends on the permanent magnets located on the fixed disk. The fundamental characteristics such as load-displacement curves, damping force at the ball bearing and inertia force of the rotation disk are obtained by experiments and a calculation model is made from the experimental data. The calculated responses are, then, compared with the results from the experiment. The calculation model is applied to a one-degree-of-freedom-system in order to investigate the response reduction effect of the system. An electromagnet is applied on the damper instead of the permanent magnet to control friction force and the controlled behavior is evaluated.
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February 2004
Technical Papers
Experimental Study on Ball Screw Type Magnetic Friction Damper: Semiactive Control Using Electromagnet
Tetsuya Watanabe,
Tetsuya Watanabe
Department of Mechanical Engineering, Saitama University, Saitama, Japan
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Kohei Suzuki,
Kohei Suzuki
Department of Mechanical Engineering, Tokyo Metropolitan University, Tokyo, Japan
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Fumiya Iiyama,
Fumiya Iiyama
Test & Research Department, Sanwa Tekki Corporation, Tochigi, Japan
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Hiroshi Sodeyama
Hiroshi Sodeyama
Test & Research Department, Sanwa Tekki Corporation, Tochigi, Japan
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Tetsuya Watanabe
Department of Mechanical Engineering, Saitama University, Saitama, Japan
Kohei Suzuki
Department of Mechanical Engineering, Tokyo Metropolitan University, Tokyo, Japan
Fumiya Iiyama
Test & Research Department, Sanwa Tekki Corporation, Tochigi, Japan
Hiroshi Sodeyama
Test & Research Department, Sanwa Tekki Corporation, Tochigi, Japan
Contributed by the Pressure Vessels and Piping Division for publication in the JOURNAL OF PRESSURE VESSEL TECHNOLOGY. Manuscript received by the PVP Division November 7, 2002; revision received April 24, 2003. Associate Editor: G. C. Slagis.
J. Pressure Vessel Technol. Feb 2004, 126(1): 110-114 (5 pages)
Published Online: February 26, 2004
Article history
Received:
November 7, 2002
Revised:
April 24, 2003
Online:
February 26, 2004
Citation
Watanabe, T., Suzuki, K., Iiyama , F., and Sodeyama, H. (February 26, 2004). "Experimental Study on Ball Screw Type Magnetic Friction Damper: Semiactive Control Using Electromagnet ." ASME. J. Pressure Vessel Technol. February 2004; 126(1): 110–114. https://doi.org/10.1115/1.1634585
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