Conservative Confidence Interval Prediction in Fused Deposition Modeling Process With Linear Optimization Approach

Arup Dey, Nita Yodo
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引用次数: 2

Abstract

Regression models are widely used as data-driven methods for predicting a continuous target variable. From a set of input variables, regression models predict a deterministic point value for the target variable. But the deterministic point value prediction is not always sufficient because a target variable value often varies due to diverse sources of uncertainty. For instance, in the fused deposition modeling process, the inconsistent results of replications are associated with natural randomness, environmental condition, and noisy process parameters. The point value estimation is not sufficient to represent the variability in this kind of scenario. Instead of point estimation, the interval prediction of a target variable is more useful in this application. In this paper, linear optimization-based techniques are proposed to predict conservative confidence intervals for linear and polynomial regression models. Two linear optimization models, one for ordinary least squares (OLS) regression and the other for weighted least squares (WLS) regression, are proposed. The proposed methods are implemented on several datasets, including an experimental fused deposition modeling dataset to demonstrate the effectiveness of the proposed methods. The results show that the proposed method is useful for the fused deposition modeling process where the level of uncertainty or the lack of knowledge of uncertainty sources is high. The proposed method can also be leveraged to the Bayesian neural network (BNN), where the optimization techniques for interval prediction will be nonlinear optimization instead of linear optimization.
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基于线性优化方法的熔融沉积建模过程保守置信区间预测
回归模型被广泛用于预测连续目标变量的数据驱动方法。从一组输入变量中,回归模型预测目标变量的确定性点值。但是,确定性的点值预测并不总是足够的,因为目标变量的值往往会因不同的不确定性来源而变化。例如,在熔融沉积建模过程中,重复结果的不一致与自然随机性、环境条件和嘈杂的工艺参数有关。在这种情况下,点值估计不足以表示可变性。在此应用中,目标变量的区间预测比点估计更有用。本文提出了基于线性优化的技术来预测线性和多项式回归模型的保守置信区间。提出了普通最小二乘(OLS)回归和加权最小二乘(WLS)回归两种线性优化模型。在多个数据集上实现了所提出的方法,包括一个实验熔融沉积建模数据集,以证明所提出方法的有效性。结果表明,该方法适用于不确定程度高或不确定源缺乏知识的熔融沉积建模过程。该方法也可以应用于贝叶斯神经网络(BNN),其中区间预测的优化技术将是非线性优化而不是线性优化。
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来源期刊
CiteScore
5.20
自引率
13.60%
发文量
34
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