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Field test of neural-network based automatic bucket-filling algorithm for wheel-loaders

机译:基于神经网络的轮式装载机自动装桶算法的现场测试

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摘要

Automation of earth-moving industries (construction, mining and quarry) require automatic bucket-filling algorithms for efficient operation of front-end loaders. Autonomous bucket-filling is an open problem since three decades due to difficulties in developing useful earth models (soil, gravel and rock) for automatic control. Operators make use of vision, sound and vestibular feedback to perform the bucket-filling operation with high productivity and fuel efficiency. In this paper, field experiments with a small time-delayed neural network (TDNN) implemented in the bucket control-loop of a Volvo L180H front-end loader filling medium coarse gravel are presented. The total delay time parameter of the TDNN is found to be an important hyperparameter due to the variable delay present in the hydraulics of the wheel-loader. The TDNN network successfully performs the bucket-filling operation after an initial period (100 examples) of imitation learning from an expert operator. The demonstrated solution show only 26% longer bucket-filling time, an improvement over manual tele-operation performance.
机译:土方行业(建筑,采矿和采石场)的自动化需要自动铲斗填充算法,以使前端装载机高效运行。由于开发自动控制的有用土模型(土壤,砾石和岩石)遇到困难,因此自动铲斗填充已经存在了三十年,这是一个开放的问题。操作员利用视觉,声音和前庭反馈,以高生产率和燃油效率执行铲斗填充操作。本文介绍了在沃尔沃L180H前端装载机填充介质中粗碎石的铲斗控制回路中使用小型时延神经网络(TDNN)进行的现场试验。由于轮式装载机的液压系统中存在可变的延迟,因此发现TDNN的总延迟时间参数是一个重要的超参数。 TDNN网络在最初阶段(100例)从专家操作员那里学习了模仿后,成功地执行了桶填充操作。演示的解决方案仅将铲斗填充时间延长了26%,与手动遥控操作性能相比有所改善。

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