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Unmanned Operation of Load-Haul-Dump Vehicles in Mining Environments

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Unmanned Operation of Load-Haul-Dump Vehicles

in Mining Environments

av

Johan Larsson

Akademisk avhandling

Avhandling för teknologie doktorsexamen i datavetenskap, som enligt beslut av rektor kommer att försvaras offentligt

onsdagen den 14 december 2011 kl. 13.15, Hörsal T, Örebro universitet Opponent: Docent Thomas Hellström,

Institutionen för datavetenskap, Umeå Universitet Örebro universitet Akademin för naturvetenskap och teknik 701 82 ÖREBRO

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Abstract

Underground mines typically do not represent the best working conditions for hu-mans, and many mining companies have the intent to remove all humans from the ore extraction areas. To achieve this goal automation of the mining machinery is required. One of the riskier jobs in a mine is to operate the Load-Haul-Dump (LHD) vehicles that are used to transport the ore from the blast site to a truck, lorry or directly to a crusher. Today these vehicles are typically controlled by an on-board manual op-erator. The purpose of the work presented in this thesis is to develop and evaluate algorithms and methods to enable high productivity unmanned operation of LHDs, including two different operating modes.

The first mode is fully autonomous navigation, applicable to static environments, where the LHDs are repeatedly driven along the same paths for extended periods. Here, an existing framework for reactive navigation based on fuzzy logic has been extended with novel feature detection algorithms for tunnel following and topolog-ical localisation based on 2D laser range scanner data. These algorithms have been verified in quantitative tests to be fast, reliable and tolerant to noise in the sensor data. Moreover, the whole navigation system has been evaluated in qualitative tests in indoor environments using an ordinary research robot. The autonomous navigation system for LHDs currently commercialized by Atlas Copco is partly based on the experiences gained from the work presented here.

The second mode explored is semi-autonomous operation, where local-autonomy functionality on-board the machine assists a tele-remote operator in driving the ve-hicle along a collision-free path. This mode is intended for mines where the driving path of the machine changes frequently, so the setup needed for a fully autonomous system becomes impractical. In this part of the work a user study in a real mine has been performed, showing that local autonomy has the potential to significantly improve the productivity of a tele-remote operated LHD. Based on these results, a commercial tele-operating system for underground mines has been extended with a novel local autonomy functionality, inspired by existing autonomous navigation sys-tems. The performance of this system has been verified in experiments performed on a real 38 tonnes LHD in a test mine, and in simulations aimed to show that the system works in arbitrary underground mine environments.

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