Aoshima K, Wadbro W and Servin M. Optimizing wheel loader performance -- an end-to-end approach. Automation 6(3):31 (2025).
doi:10.3390/automation603003 (2025). [
pdf]
Wheel loaders in mines and construction sites repeatedly load soil from a pile to load receivers. Automating this task presents a challenging planning problem since each loading’s performance depends on the pile state, which depends on previous loadings. We investigate an end-to-end optimization approach considering future loading outcomes and transportation costs between the pile and load receivers. To predict the evolution of the pile state and the loading performance, we use world models that leverage deep neural networks trained on numerous simulated loading cycles. A look-ahead tree search optimizes the sequence of loading actions by evaluating the performance of thousands of action candidates, which expand into subsequent action candidates under the predicted pile states recursively. Test results demonstrate that, over a horizon of 15 sequential loadings, the look-ahead tree search is 6% more efficient than a greedy strategy, which always selects the action that maximizes the current single loading performance, and 14% more efficient than using a fixed loading controller optimized for the nominal case.
The research was supported in part by Komatsu Ltd and Algoryx Simulation AB. We thank Erik Wallin and Arvid Fälldin for providing us the
valuable suggestions and implementation to improve the prediction speed.
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UMIT Research Lab, Digital Physics
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