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Real-time tool wear estimation using recurrent neural networks

机译:使用递归神经网络的实时刀具磨损估计

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This paper presents a robust strategy for estimating tool wear in metal cutting operations. The proposed estimation algorithm consists of two components: a recurrent neural network to model the tool wear dynamics, and a robust observer to estimate the tool wear from this model using measurements of cutting force. It is shown that the algorithm ensures that the tool wear estimation error is uniformly bounded in the presence of bounded unmodeled effects, and that the ultimate bound on this error can be made as small as desired. The proposed approach is applied to the problem of estimating tool wear in turning and is shown to provide wear estimates which are in close agreement with experimental results.
机译:本文提出了一种可靠的策略来估算金属切削操作中的刀具磨损。所提出的估算算法包括两个部分:一个用于对刀具磨损动力学建模的递归神经网络,以及一个使用切削力测量从该模型估算刀具磨损的鲁棒观察者。结果表明,该算法可确保在存在未建模的有限效应的情况下均匀地限制刀具磨损估计误差,并且可以使该误差的最终边界尽可能小。所提出的方法被应用于估计车削刀具磨损的问题,并被证明可以提供与实验结果非常吻合的磨损估计值。

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