Mathur Neha, Glesk Ivan, Buis Arjan
Department of Electronic and Electrical Engineering, University of Strathclyde, 204 George Street, Glasgow G11XW, UK .
Department of Electronic and Electrical Engineering, University of Strathclyde, 204 George Street, Glasgow G11XW, UK.
Med Eng Phys. 2016 Oct;38(10):1083-9. doi: 10.1016/j.medengphy.2016.07.003. Epub 2016 Jul 21.
Monitoring of the interface temperature at skin level in lower-limb prosthesis is notoriously complicated. This is due to the flexible nature of the interface liners used impeding the required consistent positioning of the temperature sensors during donning and doffing. Predicting the in-socket residual limb temperature by monitoring the temperature between socket and liner rather than skin and liner could be an important step in alleviating complaints on increased temperature and perspiration in prosthetic sockets. In this work, we propose to implement an adaptive neuro fuzzy inference strategy (ANFIS) to predict the in-socket residual limb temperature. ANFIS belongs to the family of fused neuro fuzzy system in which the fuzzy system is incorporated in a framework which is adaptive in nature. The proposed method is compared to our earlier work using Gaussian processes for machine learning. By comparing the predicted and actual data, results indicate that both the modeling techniques have comparable performance metrics and can be efficiently used for non-invasive temperature monitoring.
监测下肢假肢皮肤层面的界面温度非常复杂。这是因为所使用的界面衬垫具有柔韧性,在穿脱过程中会妨碍温度传感器所需的一致定位。通过监测接受腔与衬垫之间而非皮肤与衬垫之间的温度来预测接受腔内残肢温度,可能是缓解对假肢接受腔温度升高和出汗问题投诉的重要一步。在这项工作中,我们提议实施一种自适应神经模糊推理策略(ANFIS)来预测接受腔内残肢温度。ANFIS属于融合神经模糊系统家族,其中模糊系统被纳入一个本质上具有自适应能力的框架。将所提出的方法与我们早期使用高斯过程进行机器学习的工作进行了比较。通过比较预测数据和实际数据,结果表明这两种建模技术具有可比的性能指标,并且可以有效地用于非侵入式温度监测。