Sarker Baneswar, Chakraborty Shankar, Čep Robert, Kalita Kanak
Department of Industrial and Systems Engineering, Indian Institute of Technology, Kharagpur, India.
Department of Production Engineering, Jadavpur University, Kolkata, India.
Sci Rep. 2024 Oct 7;14(1):23299. doi: 10.1038/s41598-024-74291-x.
This paper proposes development of optimized heterogeneous ensemble models for prediction of responses based on given sets of input parameters for wire electrical discharge machining (WEDM) processes, which have found immense applications in many of the present-day manufacturing industries because of their ability to generate complicated 2D and 3D profiles on hard-to-machine engineering materials. These ensembles are developed combining predictions of the three base models, i.e. random forest, support vector machine and ridge regression. These three base models are first framed utilizing the training datasets, providing predictions for all the responses under consideration. Based on these predictions, two optimization problems are formulated for each of the responses, while minimizing root mean squared error and mean absolute error, for subsequent development of two optimized ensembles whose predictions are the weighted sum of the predictions of the base models. The prediction performance of all the five models is ascertained through nine statistical metrics, after which a cumulative quality loss-based multi-response signal-to-noise (MRSN) ratio for each model is computed, for each of the responses, where a higher MRSN ratio indicates greater accuracy in prediction. This study is conducted using two experimental datasets of WEDM process. Overall, the optimized ensemble models having higher MRSN ratios than the base models are indicated to deliver better prediction accuracy.
本文提出了基于线切割加工(WEDM)过程给定输入参数集开发优化的异构集成模型,用于预测响应。由于其能够在难加工的工程材料上生成复杂的二维和三维轮廓,线切割加工在当今许多制造业中得到了广泛应用。这些集成模型是结合随机森林、支持向量机和岭回归这三种基本模型的预测结果开发而成的。首先利用训练数据集构建这三种基本模型,为所有考虑的响应提供预测。基于这些预测,针对每个响应制定两个优化问题,同时最小化均方根误差和平均绝对误差,随后开发两个优化的集成模型,其预测结果是基本模型预测结果的加权和。通过九个统计指标确定所有五个模型的预测性能,之后针对每个响应计算每个模型基于累积质量损失的多响应信噪比(MRSN),其中较高的MRSN比值表示预测准确性更高。本研究使用线切割加工过程的两个实验数据集进行。总体而言,结果表明具有比基本模型更高MRSN比值的优化集成模型能够提供更好的预测准确性。