| ชื่อเรื่อง | : | Grasping force estimation detecting slip by tactile sensor adopting machine learning techniques |
| นักวิจัย | : | Mazid, Abdul Md. , Ali, Shawkat. |
| คำค้น | : | Experimental development. , 970109 Expanding Knowledge in Engineering. , 090602 Control Systems, Robotics and Automation. , 090605 Photodetectors, Optical Sensors and Solar Cells. , 091007 Manufacturing Robotics and Mechatronics (excl. Automotive Mechatronics) , Robots, Industrial. , Robots , Regression analysis. , 86 Manufacturing. , Tactile sensor -- Surface roughness -- Intelligent grasping -- Slip detection -- Support vector machine |
| หน่วยงาน | : | Central Queensland University, Australia |
| ผู้ร่วมงาน | : | - |
| ปีพิมพ์ | : | 2551 |
| อ้างอิง | : | http://hdl.cqu.edu.au/10018/27965 , http://dx.doi.org/10.1109/TENCON.2008.4766846 , cqu:4287 |
| ที่มา | : | Mazid, A & Ali, A B M 2008, "Grasping force estimation detecting slip by tactile sensor adopting machine learning techniques", TENCON 2008, IEEE Region 10 Conference, 18-21st Nov 2008, Hyderabad, India. http:/dx.doi.org/10.1109/TENCON.2008.4766846 |
| ความเชี่ยวชาญ | : | - |
| ความสัมพันธ์ | : | Proceedings : IEEE Region 10 Conference : Innovative technologies for societal transformation, November 18-21 2008, Hyderabad, India. USA. : IEEE , 2008. p. 1-6 6 pages Refereed 9781424424085 , ACQUIRE [electronic resource] : Central Queensland University Institutional Repository. |
| ขอบเขตของเนื้อหา | : | - |
| บทคัดย่อ/คำอธิบาย | : | Abstract— Adequate grasping force estimation and slip detection is a vital problem in wider applications of robots and manipulators in industries as well as in our everyday life. In this paper, a new methodology for slip detection during grasping by robot grippers/end-effectors using tactile sensor has been presented. During the object slippage, the tactile sensor in touch with the object surface travels along the peaks and valleys of surface texture of the object which creates vibratory motions in the tactile. A newly developed mathematical model is used to compute the scattered energy of vibrations, which contains parameters of surface texture geometry as well as trial grasping force, and other relevant parameters. Using the scattered energy of vibrations predicted by soft computing techniques, an attempt to instantly estimate the adequate grasping force has been reasonably successful. Surface texture data, for experimental estimation of grasping force, were collected from a huge number of machined specimens and were used to build four different machine learning estimation techniques. Experimental results using Linear Regression (LR), Simple Linear Regression (SLR), Pace Regression (PR) and Support Vector Machine (SVM) demonstrate a relatively better technique for industrial applications. |
| บรรณานุกรม | : |
Mazid, Abdul Md. , Ali, Shawkat. . (2551). Grasping force estimation detecting slip by tactile sensor adopting machine learning techniques.
กรุงเทพมหานคร : Central Queensland University, Australia. Mazid, Abdul Md. , Ali, Shawkat. . 2551. "Grasping force estimation detecting slip by tactile sensor adopting machine learning techniques".
กรุงเทพมหานคร : Central Queensland University, Australia. Mazid, Abdul Md. , Ali, Shawkat. . "Grasping force estimation detecting slip by tactile sensor adopting machine learning techniques."
กรุงเทพมหานคร : Central Queensland University, Australia, 2551. Print. Mazid, Abdul Md. , Ali, Shawkat. . Grasping force estimation detecting slip by tactile sensor adopting machine learning techniques. กรุงเทพมหานคร : Central Queensland University, Australia; 2551.
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