Learning Curves of Harvester Operators in a Simulator Environment

Author:

Polowy Krzysztof1ORCID,Rutkowski Dariusz2

Affiliation:

1. Department of Forest Economics and Technology, Faculty of Forestry and Wood Technology, Poznan University of Life Sciences, ul. Wojska Polskiego 28, 60-637 Poznan, Poland

2. Department of Forestry and Forest Ecology, Faculty of Agriculture and Forestry, University of Warmia and Mazury in Olsztyn, ul. Michała Oczapowskiego 2, 10-719 Olsztyn, Poland

Abstract

Simulator training helps provide safe and cost-effective training for operators of modern forestry machines that require high motor skills, constant concentration, and proper planning. The aim of the study was to analyze the learning curves of the trainees in order to determine the period during which most development takes place. In this study, 11 trainees were trained on a John Deere harvester simulator for approximately 15 h each. In each case, a clear learning curve could be identified, despite high inter- and intra-person variability. Effective time showed a steady decrease during training, with a group minimum at the end of training (1.25 min). Crane tip distance per tree dropped rapidly in the first 3–4 h, followed by a more gradual decrease to reach a minimum of 23.8 m. Crane control showed a significant increase from an initial 0.63 to a maximum of 0.8 by the 9th hour of training. A number of crane functions used simultaneously increased more rapidly to almost a maximum value (1.8) already in the 5th hour. The individual curves for each trainee were highly variable, showing a wide range of values and shapes. In conclusion, most personal development occurs during the first phase of simulator training, which typically takes approximately 9–10 h. It is important to consider significant inter-personal variability and tailor the duration of simulator training to individual needs.

Funder

University of Warmia and Mazury in Olsztyn, Faculty of Agriculture and Forestry

Publisher

MDPI AG

Reference41 articles.

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3. Yates, B. (2000, January 13). High Tech Training of a High Tech Workforce in the Forest Industry. Proceedings of the Canadian Woodlands Forum 81st Annual Meeting “Technologies for New Millennium Forestry”, Session 3B “Workforce Development and Issues”, Kelowna, BC, Canada.

4. Szewczyk, G., Spinelli, R., Magagnotti, N., Mitka, B., Tylek, P., Kulak, D., and Adamski, K. (2021). Perception of the Harvester Operator’s Working Environment in Windthrow Stands. Forests, 12.

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