Multi-objective optimization of cable-road layouts in smart forestry

Int J For Eng. 2024 Aug 11;35(3):444-455. doi: 10.1080/14942119.2024.2380229. eCollection 2024.

Abstract

Current cable-road layouts for timber harvesting in steep terrain are often based on either manual planning or automated layouts generated from low-resolution GIS data, limiting potential benefits and informed decision-making. In this paper, we present a novel approach to improve cable-road design using multi-objective optimization based on realistic cable-road representations. We systematically compare the effectiveness of single-objective and multi-objective optimization methods for generating layouts using these representations. We implement and evaluate the performance of a weighted single-objective approach, the AUGMECON2 and NSGA-II multi-objective methods in comparison to a layout manually created by a forestry expert, taking into account installation costs, harvesting volumes, residual stand damage and lateral yarding workload. In addition to implementing the first linear programming multi-objective optimization for realistic cable-road representations by adapting AUGMECON2, we also present the first implementation of a multi-objective genetic algorithm (NSGA-II) with simulated annealing for this purpose and evaluate their respective strengths. We find that the use of multi-objective optimization provides advantages in terms of cost-effective, balanced and adaptable cable-road layouts while allowing economic and environmental considerations to be incorporated into the design phase.

Keywords: Non-linear optimization; cable yarding; layouts; smart forestry; timber harvesting.

Grants and funding

Open access funding provided by University of Natural Resources and Life Sciences Vienna (BOKU). This work has been funded by the Austrian Science Fund (FWF), Project: P-32554, explainable AI (XAI).