Decision Tree Machine Learning to Determine Direction of Steering Force for Hospital Bed Push Handle System

Bahareh Chimehi, Bruce Wallace
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Abstract

This work demonstrates the use of Decision Tree and Random Forest machine learning to determine the direction of desired movement from the forces applied to two push-handles on a novel patient transfer system the Able Innovations ALTA™ patient transfer system provides a replacement transfer method for residents in care that cannot transfer on their own that have limited mobility. This new system is significantly heavier that a hospital gurney because of the weight of the mechatronics and healthcare professionals will need power assist to transport and position the system. In this work, two loadcell sensor-based prototypes have been used to measure the input forces and direction applied by a user to two handles. These two prototypes have been placed on a hospital bed to simulate the two handles on the right and left provided to hospital staff to push the system. Machine learning is used to analyze sensor measurements from each handle to predict the movement intent. The results are presented for test pushes in 6 directions that include forward and reverse in each of straight, left, and right turns. Two models of Machine Learning (decision tree classifier and random forest classifier) have been used for 8 and 14 features and are shown to be able to predict the direction of push with high accuracy. The accuracy for 8 features using decision tree and random forest has been measured 93.5% and 97.0% respectively.
决策树机器学习确定病床推把系统转向力的方法
这项工作展示了决策树和随机森林机器学习的使用,以确定在一种新型患者转移系统上,从施加在两个推手上的力来确定所需运动的方向。Able Innovations ALTA™患者转移系统为无法自行转移且行动不便的住院患者提供了一种替代转移方法。这个新系统比医院的轮床要重得多,因为机电一体化的重量和医疗保健专业人员需要动力辅助来运输和定位系统。在这项工作中,使用了两个基于称重传感器的原型来测量用户对两个手柄施加的输入力和方向。这两个原型被放置在医院病床上,以模拟左右两个把手,提供给医院工作人员推动系统。机器学习用于分析每个手柄的传感器测量值,以预测运动意图。测试结果呈现在6个方向上,包括前进和后退,每一个直线,左,右转弯。两种机器学习模型(决策树分类器和随机森林分类器)已用于8和14个特征,并被证明能够高精度地预测推送的方向。使用决策树和随机森林对8个特征的准确率分别达到93.5%和97.0%。
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