Mao Yin, Xiao Li
School of Electromechanical Engineering, Guangdong University of Technology, Guangzhou, 510006, China.
Sci Rep. 2025 Apr 22;15(1):13864. doi: 10.1038/s41598-025-97962-9.
To address the problem of obtaining optimal design parameters for existing artificial detrusors using single-objective optimization methods, this research proposed a machine learning-based artificial detrusor modeling and multi-objective optimization approach, which includes a thorough process from modeling to optimization. Extreme learning machine was used to model artificial detrusors in the suggested approach, and in order to increase modeling accuracy, a multi-strategy modified crayfish optimization algorithm for tuning the extreme learning machine's parameters was put forth in this research. The multi-objective grey wolf optimization algorithm was utilized to optimize the artificial detrusor based on the model. In order to validate the suggested approach, an artificial detrusor driven by a shape memory spring was finally built as an experimental platform. The results show that the improved crayfish optimization algorithm proposed in this paper can effectively avoid the defects of the original algorithm, and its optimization performance and convergence ability are better than the comparison algorithm. With a root mean square error of 1.51E-02, a coefficient of determination of 9.81E-01, a mean absolute error of 1.32E-02, and a mean absolute percentage error of 1.66E-01, the established artificial detrusor model predicts the shape memory spring-driven artificial detrusor's emptying rate. It also predicts the temperature increment with a root mean square error of 8.47E-01, a coefficient of determination of 9.81E-01, a mean absolute error of 5.81E-01, and a mean absolute percentage error of 7.23E-02. These predictions are superior to the comparison prediction model, indicating good predictive performance and stability. Additionally, the established artificial detrusor model also demonstrates outstanding performance in uncertainty and reliability analysis, thereby further confirming its superior comprehensive performance. The optimized artificial detrusor's computed values of emptying rate and temperature increment, as well as its experimental measurement values, have errors of 7.8% and 11.8%, respectively, which satisfy engineering design specifications. The artificial detrusor optimized by our proposed method exhibits significant performance enhancements over existing designs. Specifically, the optimized detrusor achieves an approximately 20% increase in emptying rate and a 62% reduction in temperature increment, successfully balancing urinary efficiency with mitigated risks of thermal tissue injury.
为了解决使用单目标优化方法为现有人工逼尿肌获取最优设计参数的问题,本研究提出了一种基于机器学习的人工逼尿肌建模与多目标优化方法,该方法包括从建模到优化的完整过程。在所提出的方法中,使用极限学习机对人工逼尿肌进行建模,并且为了提高建模精度,本研究提出了一种用于调整极限学习机参数的多策略改进小龙虾优化算法。基于该模型,利用多目标灰狼优化算法对人工逼尿肌进行优化。为了验证所提出的方法,最终构建了一个由形状记忆弹簧驱动的人工逼尿肌作为实验平台。结果表明,本文提出的改进小龙虾优化算法能够有效避免原算法的缺陷,其优化性能和收敛能力优于对比算法。所建立的人工逼尿肌模型预测形状记忆弹簧驱动的人工逼尿肌的排空率时,均方根误差为1.51E - 02,决定系数为9.81E - 01,平均绝对误差为1.32E - 02,平均绝对百分比误差为1.66E - 01。它还预测温度增量,均方根误差为8.47E - 01,决定系数为9.81E - 01,平均绝对误差为5.81E - 01,平均绝对百分比误差为7.23E - 02。这些预测优于对比预测模型,表明具有良好的预测性能和稳定性。此外,所建立的人工逼尿肌模型在不确定性和可靠性分析方面也表现出色,从而进一步证实了其卓越的综合性能。优化后的人工逼尿肌的排空率和温度增量的计算值与其实验测量值的误差分别为7.8%和11.8%,满足工程设计规范。我们提出的方法优化后的人工逼尿肌在性能上比现有设计有显著提升。具体而言,优化后的逼尿肌排空率提高了约20%,温度增量降低了62%,成功地在排尿效率和减轻热组织损伤风险之间取得了平衡。