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首页> 外文期刊>Journal of Medical Imaging and Health Informatics >Insole System-Based Neural Network Model to Evaluate Force Risk in Cube Method: Application to Pepper Farming Tasks
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Insole System-Based Neural Network Model to Evaluate Force Risk in Cube Method: Application to Pepper Farming Tasks

机译:基于鞋垫系统的神经网络模型,以评估立方体方法的力量风险:辣椒农业任务的应用

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摘要

Most agricultural workers are exposed to musculoskeletal disorders due to the characteristics of agricultural work performed manually. As observational methods to prevent musculoskeletal disorders, a cube method has been proposed that considers the risk factors of posture, time and force workload simultaneously. However, force workload could evaluate using the weight of an object or qualitative measurement to prevent interfering with a worker's occupation. The purpose of this study is to propose a novel method for evaluating quantitatively the risk factor of force in agricultural field using insole system and artificial neural network model. Agricultural simulated experiments were performed on ten healthy adult males and six observers were recruited to evaluate the risk factors of force for the experiments. The model was constructed using the signals measured in the insole system and the consensus among observers about evaluation results. To verify the performance of the model, the performance measurement was calculated using 10-fold cross-validation. The results of the proposed method are compared with those of the observers to verify reproducibility and usefulness. The model showed more than 97% prediction accuracy in all risk levels, and the proposed method showed 1.59%, 0.99 and 0.98 in the coefficient of variation, proportion agreement index, Cohen's kappa coefficient, and high reproducibility and usefulness when compared with the observers' evaluation. The method of quantitatively evaluating the risk factor of force proposed in this study is possible to be applied to various agricultural works using observational methods.
机译:由于手动进行的农业工作的特征,大多数农业工人面临肌肉骨骼障碍。作为预防肌肉骨骼障碍的观察方法,已经提出了一种立方方法,以同时考虑姿势,时间和力量工作量的危险因素。然而,强制工作量可以使用物体的重量或定性测量来评估,以防止干扰工人的职业。本研究的目的是提出一种使用鞋垫系统和人工神经网络模型来评估农业领域武力风险因素的新方法。农业模拟实验在十个健康的成年男性中进行,招募了六个观察者,以评估实验的危险因素。使用在鞋垫系统中测量的信号和观察者之间的共识构建该模型。为了验证模型的性能,使用10倍交叉验证计算性能测量。将所提出的方法的结果与观察者的结果进行比较,以验证可重复性和有用性。该模型在所有风险水平中显示出超过97%的预测精度,并且所提出的方法在变异系数,比例协议指数,Cohen的Kappa系数和高再重现性和有用性时显示了1.59%,0.99和0.98。与观察员相比评估。定量评估本研究提出的力的风险因子的方法可以使用观察方法应用于各种农业作品。

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