针对起重机减速齿轮箱的磨损过程具有非线性与时变性,传统磨损趋势预测方法无法有效兼顾预测精度与执行效率的问题,提出了一种基于组合核函数的在线支持向量机回归(online support vector regression,OSVR)预测算法。OSVR的在线学习算...针对起重机减速齿轮箱的磨损过程具有非线性与时变性,传统磨损趋势预测方法无法有效兼顾预测精度与执行效率的问题,提出了一种基于组合核函数的在线支持向量机回归(online support vector regression,OSVR)预测算法。OSVR的在线学习算法能够适应时间序列的时变性并提高执行效率,同时可利用不同的核函数性能,通过组合模型提高预测精度。采用实际齿轮箱铁谱数据对预测算法进行验证,结果表明,基于组合核函数的OSVR预测算法具有很好的预测精度和适应性,能有效预测起重机齿轮箱的磨损故障,且相比于单一OSVR算法和灰色神经网络组合算法有更高的效率和预测精度。展开更多
As optimization of parameters affects prediction accuracy and generalization ability of support vector regression(SVR) greatly and the predictive model often mismatches nonlinear system model predictive control,a mult...As optimization of parameters affects prediction accuracy and generalization ability of support vector regression(SVR) greatly and the predictive model often mismatches nonlinear system model predictive control,a multi-step model predictive control based on online SVR(OSVR) optimized by multi-agent particle swarm optimization algorithm(MAPSO) is put forward. By integrating the online learning ability of OSVR, the predictive model can self-correct and adapt to the dynamic changes in nonlinear process well.展开更多
文摘针对起重机减速齿轮箱的磨损过程具有非线性与时变性,传统磨损趋势预测方法无法有效兼顾预测精度与执行效率的问题,提出了一种基于组合核函数的在线支持向量机回归(online support vector regression,OSVR)预测算法。OSVR的在线学习算法能够适应时间序列的时变性并提高执行效率,同时可利用不同的核函数性能,通过组合模型提高预测精度。采用实际齿轮箱铁谱数据对预测算法进行验证,结果表明,基于组合核函数的OSVR预测算法具有很好的预测精度和适应性,能有效预测起重机齿轮箱的磨损故障,且相比于单一OSVR算法和灰色神经网络组合算法有更高的效率和预测精度。
基金the National Natural Science Foundation of China(No.60905066)the Natural Science Foundation of Chongqing(No.cstc2018jcyjA0667)
文摘As optimization of parameters affects prediction accuracy and generalization ability of support vector regression(SVR) greatly and the predictive model often mismatches nonlinear system model predictive control,a multi-step model predictive control based on online SVR(OSVR) optimized by multi-agent particle swarm optimization algorithm(MAPSO) is put forward. By integrating the online learning ability of OSVR, the predictive model can self-correct and adapt to the dynamic changes in nonlinear process well.