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Robust Fuzzy Modeling and Symbolic Regression for Establishing Accurate and Interpretable Prediction Models in Supervising Tribological Systems

机译:鲁棒模糊建模与符号回归在摩擦学系统中建立准确和可解释的预测模型

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In this contribution, we discuss data-based methods for building regression models for predicting important characteristics of tribological systems (such as the friction coefficient), with the overall goal of improving and partially automatizing the design and dimensioning of tribological systems. In particular, we focus on two methods for synthesis of interpretable and potentially non-linear regression models: (i) robust fuzzy modeling and (ii) enhanced symbolic regression using genetic programming, both embedding new methodological extensions. The robust fuzzy modeling technique employs generalized Takagi-Sugeno fuzzy systems. Its learning engine is based on the Gen-Smart-EFS approach, which in this paper is (i) adopted to the batch learning case and (ii) equipped with a new enhanced regularized learning scheme for the rule consequent parameters. Our enhanced symbolic regression method addresses (i) direct gradient-based optimization of numeric constants (in a kind of memetic approach) and (ii) multi-objectivity by adding complexity as a second optimization criterion to avoid over-fitting and to increase transparency of the resulting models. The comparison of the new extensions with state-of-the-art non-linear modeling techniques based on nine different learning problems (including targets wear, friction coefficients, temperatures and NVH) shows indeed similar errors on separate validation data, but while (i) achieving much less complex models and (ii) allowing some insights into model structures and components, such that they could be confirmed as very reliable by the experts working with the concrete tribological system.
机译:在这方面的贡献,我们讨论了建立回归模型预测摩擦学系统的重要特征(如摩擦系数),以改善和部分automatizing设计和摩擦学系统的尺寸标注的总体目标基于数据的方法。特别是,我们专注于两种方法可解释和潜在的非线性回归模型的合成:(ⅰ)鲁棒模糊建模和(ii)增强符号回归使用遗传编程,都嵌入新的方法的扩展。坚固的模糊建模技术采用广义TS模糊系统。其学习引擎是基于根智能EFS方法,这在本文中为(i)通过向批量学习的情况下,和(ii)配备有用于规则的结论的参数的新的增强型正则学习方案。我们的增强符号回归方法地址(I)数字常量的直接基于梯度的优化(在一种模因方法的)和(ii)多客观性通过增加复杂性作为第二优化标准,以避免过拟合,并提高透明度所产生的模型。基于九个不同的学习的问题(包括目标的磨损,摩擦系数,温度和NVH)上单独的验证数据显示确实类似的错误与国家的最先进的非线性建模技术的新的扩展的比较,但在(ⅰ )实现更复杂的模型和(ii)使一些见解模型的结构和部件,这样他们可以确认为与混凝土摩擦学系统工作的专家们非常可靠。

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