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首页> 外文期刊>Journal of Intelligent Manufacturing >Prediction of drill flank wear using ensemble of co-evolutionary particle swarm optimization based-selective neural network ensembles
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Prediction of drill flank wear using ensemble of co-evolutionary particle swarm optimization based-selective neural network ensembles

机译:基于协同进化粒子群优化的选择性神经网络集成预测钻头侧面磨损

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摘要

Flank wear prediction plays an important role in achieving improved productivity and better quality of the product. This study presents an effective co-evolutionary particle swarm optimization-based selective neural network ensembles (E-CPSOSEN) enabled tool wear prediction model for flank wear prediction in drilling operations. The E-CPSOSEN algorithm utilized two populations of particle swarm optimizations (PSOs) that are co-evolved simultaneously, one discrete particle swarm optimizations for evolving the binary selection vector, and the other continuous particle swarm optimizations for evolving the real weight vector. The two PSOs interact with each other through the fitness evaluation. The E-CPSOSEN algorithm is first tested on four benchmark problems taken from the literature. Upon achieving good results for test cases, the E-CPSOSEN enabled tool wear prediction model was employed to three illustrative case studies of flank wear prediction in drilling operations. Significant improvement is also obtained in comparison to the results already reported in literatures, which further reveals that the E-CPSOSEN enabled tool wear prediction model has more wonderful prediction performance than conventional single ANN-based models in predicting the flank wear in drilling operations. Moreover, an investigation was also conducted to identity the effects of the major parameters of the E-CPSOSEN algorithm upon its prediction performance. From the given results, the proposed enabled tool wear prediction model may be a promising tool for the accurate and automatic prediction of flank wear in drilling operations.
机译:侧面磨损预测在提高生产率和产品质量方面起着重要作用。这项研究提出了一种有效的基于共同进化的粒子群优化的基于选择性神经网络集成(E-CPSOSEN)的工具磨损预测模型,用于预测钻井作业中的侧面磨损。 E-CPSOSEN算法利用了两个粒子群优化算法(PSO),这些粒子群同时协同演化,一个离散粒子群优化算法用于进化二元选择向量,另一个连续粒子群优化算法用于进化真实权重向量。这两个PSO通过适应性评估相互交互。 E-CPSOSEN算法首先针对来自文献的四个基准问题进行了测试。在为测试案例取得良好结果后,启用E-CPSOSEN的工具磨损预测模型被用于三个示例性钻探操作中侧面磨损预测的案例研究。与文献中已报道的结果相比,也获得了显着改善,这进一步表明,在预测钻井作业中的后刀面磨损方面,启用E-CPSOSEN的刀具磨损预测模型比传统的基于ANN的单个模型具有更出色的预测性能。此外,还进行了一项研究以确定E-CPSOSEN算法的主要参数对其预测性能的影响。根据给定的结果,建议的启用工具磨损预测模型可能是用于钻井作业中侧翼磨损的准确和自动预测的有前途的工具。

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