LGMLJun 26, 2020

Online 3D Bin Packing with Constrained Deep Reinforcement Learning

arXiv:2006.14978v5165 citations
Originality Incremental advance
AI Analysis

This addresses a practical logistics and robotics problem for industries requiring efficient real-time packing, though it is incremental as it builds on existing DRL approaches.

The paper tackles the online 3D bin packing problem with limited information and immediate packing constraints, proposing a constrained deep reinforcement learning method that significantly outperforms state-of-the-art methods and achieves human-level performance.

We solve a challenging yet practically useful variant of 3D Bin Packing Problem (3D-BPP). In our problem, the agent has limited information about the items to be packed into the bin, and an item must be packed immediately after its arrival without buffering or readjusting. The item's placement also subjects to the constraints of collision avoidance and physical stability. We formulate this online 3D-BPP as a constrained Markov decision process. To solve the problem, we propose an effective and easy-to-implement constrained deep reinforcement learning (DRL) method under the actor-critic framework. In particular, we introduce a feasibility predictor to predict the feasibility mask for the placement actions and use it to modulate the action probabilities output by the actor during training. Such supervisions and transformations to DRL facilitate the agent to learn feasible policies efficiently. Our method can also be generalized e.g., with the ability to handle lookahead or items with different orientations. We have conducted extensive evaluation showing that the learned policy significantly outperforms the state-of-the-art methods. A user study suggests that our method attains a human-level performance.

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