Sensor Fusion System Using Recurrent Fuzzy Inference

被引:0
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作者
Futoshi Kobayashi
Fumihito Arai
Toshio Fukuda
Koji Shimojima
Makoto Onoda
Norimasa Marui
机构
[1] Nagoya University,Graduate School of Engineering
[2] Nagoya University,Center of Cooperative Research in Advanced Science & Technology
[3] Agency of Industrial Science and Technology,National Industrial Research Institute of Nagoya
[4] MITI,Production Machinery R & D Center
[5] NTN corporation,undefined
关键词
recurrent fuzzy inference; radial basis function; the steepest descent method; incremental learning; sensor fusion;
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中图分类号
学科分类号
摘要
In robotic and manufacturing systems, it is difficult to measure the state of systems accurately because of many uncertain factors and noise, and it is very important to estimate the state of systems. We must measure the phenomena of systems by multiple sensors and estimate the state of systems by acquiring information of sensors. However, we can not acquire all of sensor information synchronically, because each sensor has particular sensor information and measuring time. For estimating the state of systems by multiple sensors, a multi-sensor fusion system fusing various sensory information is needed. In this paper, we propose a Recurrent Fuzzy Inference (RFI) with recurrent inputs and apply it to a multi-sensor fusion system for estimating the state of systems. The membership functions of RFI are expressed by Radial Basis Function (RBF) with insensitive ranges. The shape of the membership functions can be adjusted by a learning algorithm. The learning algorithm is based on the steepest descent method and incremental learning which can add new fuzzy rules. The effectiveness of the multi-sensor fusion system using RFI will be shown through a numerical experiment of moving robot and estimation of surface roughness in grinding process.
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页码:201 / 216
页数:15
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