An Artificial Neural Network Modeling for Force Control System of a Robotic Pruning Machine Cover Image

An Artificial Neural Network Modeling for Force Control System of a Robotic Pruning Machine
An Artificial Neural Network Modeling for Force Control System of a Robotic Pruning Machine

Author(s): Ali Hashemi, Keyvan Asefpour Vakilian, Javad Khazaei, Jafar Massah
Subject(s): ICT Information and Communications Technologies
Published by: Fakultet organizacije i informatike, Sveučilište u Zagrebu
Keywords: power consumption; sensitivity coefficient; back-propagation; rotational speed;

Summary/Abstract: Nowadays, there has been an increasing application of pruning robots for planted forests due to the growing concern on the efficiency and safety issues. Power consumption and working time of agricultural machines have become important issues due to the high value of energy in modern world. In this study, different multi-layer back-propagation networks were utilized for mapping the complex and highly interactive of pruning process parameters and to predict power consumption and cutting time of a force control equipped robotic pruning machine by knowing input parameters such as: rotation speed, stalk diameter, and sensitivity coefficient. Results showed significant effects of all input parameters on output parameters except rotational speed on cutting time. Therefore, for reducing the wear of cutting system, a less rotational speed in every sensitivity coefficient should be selected.

  • Issue Year: 38/2014
  • Issue No: 1
  • Page Range: 35-41
  • Page Count: 7
  • Language: English
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