Economic Evaluation and Performance of a Tree Planting Machine Performing in Two Different Slope Classes and Conditions of Harvesting Slash

Author:

Soler Rafael Ribeiro1,Sebastião Guerra Saulo Phillipe1,Oguri Guilherme2,Rodrigues Sérgio Augusto3

Affiliation:

1. School of Agronomical Sciences, Department of Rural Engineering and Socioeconomics

2. Forestry Science and Research Institute, Cooperative Program for Forestry Machine and Automation

3. Sao Paulo State University, School of Agronomical Sciences, Department of Bioprocess and Biotechnology

Abstract

In recent years, fully mechanized planters have gained attention in Brazil on flat to steep terrain. A field study was conducted to analyze the potential of a planting machine composed of a hydraulic crawler excavator and a planter unit to perform soil preparation and planting in two slope classes and two conditions of slash presence. The experimental area was divided according to slope – undulating (8% to 20%) and strong undulating (20% to 45%) – and the presence of slash. Slope class did not significantly affect productivity, nor was there a significant interaction effect between the slope and slash factors. The presence of slash proved to be statistically different, with mean productivity of 236 seedlings hour-1 when reloading the carousel in an area without harvesting slash. Tree planting machine utilization was 75.13%, and the mechanical availability was 79.6%. The presence of slash significantly reduced the tree planting machine productivity, including the seedling reloading time, suggesting a newer research line for fasters reloading seedling systems.

Publisher

Faculty of Forestry, University of Zagreb

Subject

Forestry

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