Neural Network-Based Exercise Training and Limb Function Evaluation System for Traditional Chinese Medicine Guiding Technique

IF 0.7 4区 工程技术 Q4 ENGINEERING, MARINE International Journal of Maritime Engineering Pub Date : 2024-07-27 DOI:10.5750/ijme.v1i1.1389
Y H Li, Y J Wang, L J Xu, J Li, Di Zhang, Y P Wang, C W Li, Y C Chen
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Abstract

Exercise training plays a pivotal role in enhancing limb function and overall physical performance. Through targeted and progressive exercise regimes, individuals can improve strength, flexibility, coordination, and endurance in their limbs. This paper presents a novel Neural Network-Based Exercise Training and Limb Function Evaluation System tailored for Traditional Chinese Medicine (TCM) guiding techniques. This paper constructed a novel Multi-Layer Fuzzy Pattern Neural Network (MLFPNN) for the estimation of limbs for exercise training. The proposed MLFPNN model acquires information about the limb muscles through the acquired information features are normalized. With the normalized features, TCM is evaluated for the computation of the feature for the exercise training in MLFPNN. The proposed model uses the multilayer fuzzy for the estimation of the limb features associated with the limb function. The estimated features of the limb are applied over the pattern network for the classification of limb function based on TCM with MLFPNN. The proposed MLFPNN model evaluates the 10 features in the limb muscle estimation for TCM-based exercise training. Experimental analysis is conducted for the proposed MLFPNN to achieve a higher prediction based on the actual values. The comparative analysis demonstrated that the proposed MLFPNN model achieves an accuracy of 92.5% while conventional SVM, RF, and k-NN achieve a classification accuracy of 88.3%, 90.7%, and 87.6% respectively. The findings stated that the proposed MLFPNN model is significant for the limb function estimation for the TCM-based training.
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基于神经网络的中医导引术运动训练和肢体功能评估系统
运动训练在增强肢体功能和整体体能表现方面发挥着举足轻重的作用。通过有针对性和循序渐进的运动训练,个人可以提高肢体的力量、柔韧性、协调性和耐力。本文针对中医导引技术,提出了一种基于神经网络的新型运动训练和肢体功能评估系统。本文构建了一个新颖的多层模糊模式神经网络(MLFPNN),用于运动训练的肢体估计。所提出的多层模糊模式神经网络模型通过对获取的信息特征进行归一化处理来获取肢体肌肉信息。利用归一化特征,对 TCM 进行评估,以计算 MLFPNN 中用于运动训练的特征。建议的模型使用多层模糊来估计与肢体功能相关的肢体特征。估算出的肢体特征被应用于模式网络,以 MLFPNN 进行基于中医的肢体功能分类。提议的 MLFPNN 模型评估了基于中医运动训练的肢体肌肉估计中的 10 个特征。实验分析表明,所提出的 MLFPNN 可根据实际值实现更高的预测。对比分析表明,提议的 MLFPNN 模型达到了 92.5% 的准确率,而传统 SVM、RF 和 k-NN 的分类准确率分别为 88.3%、90.7% 和 87.6%。研究结果表明,所提出的 MLFPNN 模型对于基于中医训练的肢体功能估计具有重要意义。
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来源期刊
CiteScore
1.20
自引率
0.00%
发文量
18
审稿时长
>12 weeks
期刊介绍: The International Journal of Maritime Engineering (IJME) provides a forum for the reporting and discussion on technical and scientific issues associated with the design and construction of commercial marine vessels . Contributions in the form of papers and notes, together with discussion on published papers are welcomed.
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