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Tool life prediction using Bayesian updating. Part 2: Turning tool life using a Markov Chain Monte Carlo approach

机译:使用贝叶斯更新的刀具寿命预测。第2部分:使用马尔可夫链蒙特卡洛方法车削刀具寿命

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According to the Taylor tool life equation, tool life reduces with increasing cutting speed following a power law. Additional factors can also be added, such as the feed rate, in Taylor-type models. Although these models are posed as deterministic equations, there is inherent uncertainty in the empirical constants and tool life is generally considered a stochastic process. In this work, Bayesian inference is applied to estimate model constants for both milling and turning operations while considering uncertainty. In Part 1 of the paper, a Taylor tool life model for milling that uses an exponent, n, and a constant, C, is developed. Bayesian inference is applied to estimate the two model constants using a discrete grid method. Tool wear tests are performed using an uncoated carbide tool and 1018 steel work material. Test results are used to update initial beliefs about the constants and the updated beliefs are then used to predict tool life using a probability density function. In Part 2, an extended form of the Taylor tool life equation is implemented that includes the dependence on both cutting speed and feed for a turning operation. The dependence on cutting speed is quantified by an exponent, p, and the dependence on feed by an exponent, q; the model also includes a constant, C. Bayesian inference is applied to estimate these constants using the Metropolis-Hastings algorithm of the Markov Chain Monte Carlo (MCMC) approach. Turning tests are performed using a carbide tool and MS309 steel work material. The test results are again used to update initial beliefs about the Taylor tool life constants and the updated beliefs are used to predict tool life via a probability density function.
机译:根据泰勒工具寿命方程,工具寿命会随着幂律的增加而降低。在泰勒型模型中,还可以添加其他因素,例如进给速度。尽管这些模型被作为确定性方程式提出,但是经验常数存在固有的不确定性,通常将刀具寿命视为随机过程。在这项工作中,在考虑不确定性的同时,贝叶斯推断被用于估计铣削和车削操作的模型常数。在本文的第1部分中,开发了使用指数n和常数C的泰勒铣削泰勒寿命模型。贝叶斯推断用于使用离散网格方法估计两个模型常数。使用未涂层的硬质合金刀具和1018钢工作材料进行刀具磨损测试。测试结果用于更新有关常数的初始置信度,然后使用概率密度函数将更新后的置信度用于预测工具寿命。在第2部分中,实现了泰勒工具寿命方程式的扩展形式,其中包括对切削速度和车削操作进给的依赖。对切​​削速度的依赖性由指数p量化,对进给的依赖性由指数q量化。该模型还包含一个常数C。使用马尔可夫链蒙特卡洛(MCMC)方法的Metropolis-Hastings算法,应用贝叶斯推断来估计这些常数。使用硬质合金刀具和MS309钢加工材料进行车削测试。测试结果再次用于更新有关泰勒工具寿命常数的初始置信度,更新后的置信度用于通过概率密度函数预测工具寿命。

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