集成神经网络在义肢窝压力测量逆问题中的应用

P. Davenport, S. Noroozi, P. Sewell, S. Zahedi
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引用次数: 3

摘要

集成神经网络是一种常用的方法来提高人工智能应用程序的性能。通过整理在组成或训练上存在差异的多个网络的响应,从而产生一系列估计误差,可以全面改进对新问题数据的评估。在这项工作中,人工神经网络被用作反问题求解器,利用设备外表面的变形信息计算下肢假肢窝的内部压力分布。通过改变最大噪声变化参数来研究噪声注入的影响,并通过改变最大噪声值周围的方差来研究网络组成的差异。结果表明,网络集成的使用在整体性能上提供了有意义的改进。表现最好的集成的RMS误差占总应用负载的百分比为3.86%,而组成该集成的网络的平均性能为5.32%。尽管噪声注入导致典型网络对负载分布的估计有所改善,但在低噪声和网络训练模式之间的低方差下,集成表现更好。这些结果意味着集成已经在正在开发的研究工具中实现。
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Applying ensemble neural networks to an inverse problem solution to prosthetic socket pressure measurement
Ensemble neural networks are a commonly used as a method to boost performance of artificial intelligence applications. By collating the response of multiple networks with differences in composition or training and hence a range of estimation error, an overall improvement in the appraisal of new problem data can be made. In this work, artificial neural networks are used as an inverse-problem solver to calculate the internal distribution of pressures on a lower limb prosthetic socket using information on the deformation of the external surface of the device. Investigation into the impact of noise injection was studied by changing the maximum noise alteration parameter and the differences in network composition by altering the variance around this maximum noise value. Results indicate that use of ensembles of networks provides a meaningful improvement in overall performance. RMS error expressed as a percentage of the total applied load was 3.86% for the best performing ensemble, compared to 5.32% for the mean performance of the networks making up that ensemble. Although noise injection resulted in an improvement in typical network estimates of load distribution, ensembles performed better with low noise and low variance between network training patterns. These results mean that ensembles have been implemented in the research tool under development.
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