Title of article :
Calibration of a Hall effect displacement measurement system for complex motion analysis using a neural network
Author/Authors :
G.W. Northey، نويسنده , , M.L. Oliver، نويسنده , , D.M. Rittenhouse، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2006
Abstract :
Biomechanics studies often require the analysis of position and orientation. Although a variety of transducer and camera systems can be utilized, a common inexpensive alternative is the Hall effect sensor. Hall effect sensors have been used extensively for one-dimensional position analysis but their non-linear behavior and cross-talk effects make them difficult to calibrate for effective and accurate two- and three-dimensional position and orientation analysis. The aim of this study was to develop and calibrate a displacement measurement system for a hydraulic-actuation joystick used for repetitive motion analysis of heavy equipment operators. The system utilizes an array of four Hall effect sensors that are all active during any joystick movement. This built-in redundancy allows the calibration to utilize fully connected feed forward neural networks in conjunction with a Microscribe™ 3D digitizer. A fully connected feed forward neural network with one hidden layer containing five neurons was developed. Results indicate that the ability of the neural network to accurately predict the x, y and z coordinates of the joystick handle was good with r2 values of 0.98 and higher. The calibration technique was found to be equally as accurate when used on data collected 5 days after the initial calibration, indicating the system is robust and stable enough to not require calibration every time the joystick is used. This calibration system allowed an infinite number of joystick orientations and positions to be found within the range of joystick motion.
Keywords :
calibration , Hall effect sensors , Displacement measurement , Joystick , artificial neural network
Journal title :
Journal of Biomechanics
Journal title :
Journal of Biomechanics