基于模糊Petri网的发芽树生理应激评估

Parul Agarwal, Richa Gupta, M. Alam
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引用次数: 0

摘要

压力源对一个人的幸福感有着巨大的影响。如果不加以治疗,它会影响个人的身心健康。对这些应力的反应被称为应力反应。根据刺激的类型和严重程度,压力会影响身体的各种行为和功能,称为压力。这就解释了检测压力水平并妥善处理压力变得多么重要。对压力最好的治疗方法是找出造成压力的因素,并在最初阶段消除压力。已经提出了各种方法来检测应力水平。其中一种常见的方法是使用可穿戴设备来捕捉脑电图信号,并使用各种提出的算法来检测压力水平。然而,在某些情况下,非侵入性技术无法捕捉压力。此外,这些技术不能确定压力的产生因素。本文提出了一种方法来应对这种情况,并确定导致患者压力的因素。它还可以作为一种前线方法来检测候选人是否患有焦虑或压力。模糊逻辑在各种医疗保健领域的应用已经变得非常明显。这是因为它涉及一系列价值观。而Petri网是一个弧从一个地方延伸到另一个过渡点的网络,而不是在地方和过渡点之间。它是在系统的动态和并发活动中使用的最佳模型。因此,这两种逻辑的结合可以为计算推理过程的实现和具有不确定性的系统的建模提供非常有力的基础。于是,模糊Petri网(FPN)应运而生。本文建议使用FPN来设计一种方法来确定导致压力的因素,并进一步提高患者的压力水平。该方法是通过观察植物中食物转移的过程而发展起来的。作者还讨论了传入和传出应力路径。本文提出的方法采用模糊Petri网。本文设计的算法被作者命名为萌芽树算法。设计故障树是正确确定应力水平的第一步,也是非常重要的一步。使用Hamilton量表生成的分数被作为输入提供给AND/OR门系统,以接收压力源的值,从而绘制故障树。应用转换规则将故障树转换为FPN。然后,我们推导了产生式规则和可达性矩阵。这些规则有助于对通过故障树获得的值进行归一化,使其处于模糊逻辑的范围内。FPN计算确定性因子(CF),它表示个体的压力状态。因此,从FPN中获得的值将最终构建一棵树,该树被命名为萌芽树。本文提出的检测应力的方法是一种全新的方法。这项工作的未来是通过用正在处理的真实数据来实现所提出的算法,以观察其准确性。
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Sprouting Tree for Physiological Stress Assessment Using Fuzzy Petri Net
Stressors have a huge impact on ones well-being. It affects individual mental and physical health, if untreated. The response to these stresses is termed as a stress response. Based on the type and severity of the stimulus, stress can affect the various actions and functioning of the body called stress. This explains how important it becomes to detect the level of stress and treat it well. The best treatment for stress is to identify the factors causing stress and eliminate it in the initial stage. Various methods have been proposed to detect the level of stress. One of the common methods is by using wearable devices to capture EEG signals and use various proposed algorithms to detect the level of stress. However, there are cases where stress cannot be captured by non-invasive technologies. Besides, these technologies cannot determine the stress-causing factors. This paper proposes a methodology to cater to such cases and identify the factors causing stress in the patient. It can also act as a front line methodology to detect if the candidate is suffering from anxiety or stress. The use of fuzzy logic in various healthcare areas has become very evident. This is because it deals with a range of values. While, Petri nets is a network where the arc runs from place to transition and not between places and transitions. It is the best model to use in dynamic and concurrent activities of the system. Thus, combination of these 2 logics can provide an extremely competent basis for the implementation of computing reasoning processes and the modeling of systems with uncertainty. Thus, came Fuzzy Petri Nets (FPN). This paper proposes the use of FPN in designing a methodology for factors responsible for causing stress and furthers the level of stress in the patient. The methodology is developed by observing the process of food transfer in plants. The authors have also discussed afferent and efferent stress paths. This methodology proposed in this paper uses Fuzzy Petri Net. The algorithm designed in this paper has been named as the Sprouting tree algorithm by the authors. Designing the fault tree is the first and very important step for the correct determination of the level of the stress. The score generated using the Hamilton scale is fed as input to the AND/OR gate system to receive the value of stressor and thus drawing a fault tree. The transformation rules are applied to convert fault tree into the FPN. Then, we derive production rules and reachability matrix. These rules helps in normalizing the value obtained via fault tree so that they lie in range of fuzzy logic. FPN calculates the certainty factor (CF), which represents the state of stress in an individual. Therefore, the values obtained from FPN will finally build a tree which is named as Sprouting tree. The methodology proposed in this paper is absolutely new to detect the stress. The future of this work is to observe the accuracy of the proposed algorithm by implementing it with real data, which is under process.
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Current Psychiatry Research and Reviews
Current Psychiatry Research and Reviews Medicine-Psychiatry and Mental Health
CiteScore
0.60
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0.00%
发文量
51
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