Construction of Data Driven Decomposition Based Soft Sensors with Auto Encoder Deep Neural Network for IoT Healthcare Applications

M. Sowmya, Sunil Sharma, Akash Kumar Bhagat, Pooja Verma, Sunny Verma, Durgesh Wadhwa
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Abstract

The architecture of IoT healthcare is motivated towards the data-driven realization and patient-centric health models, whereas the personalized assistance is provided by deploying the advanced sensors. According to the procedures in surgery, in the emergency unit, the patients are monitored till they are stable physically and then shifted to ward for further recovery and evaluation. Normally evaluation done in ward doesn’t suggest continuous parameters monitoring for physiological condition and thus relapse of patients are common. In real-time healthcare applications, the vital parameters will be estimated through dedicated sensors, that are still luxurious at the present situation and highly sensitive to harsh conditions of environment. Furthermore, for real-time monitoring, delay is usually present in the sensors. Because of these issues, data-driven soft sensors are highly attractive alternatives. This research is motivated towards this fact and Auto Encoder Deep Neural Network (AutoEncDeepNN) is proposed depending on Health Framework in the internet assisting the patients with trigger-based sensor activation model to manage master and slave sensors. The advantage of the proposed method is that the hidden information are mined automatically from the sensors and high representative features are generated by multiple layer’s iteration. This goal is consistently achieved and thus the proposed model outperforms few standard approaches which are considered like Hierarchical Extreme Learning Machine (HELM), Convolutional Neural Network (CNN) and Long Short-Term Memory (LSTM). It is found that the proposed AutoEncDeepNN method achieves 94.72% of accuracy, 41.96% of RMSE, 34.16% of RAE and 48.68% of MAE in 74.64 ms.
基于自编码器深度神经网络的数据驱动分解软传感器构建
物联网医疗的架构是朝着数据驱动的实现和以患者为中心的健康模型发展的,而个性化的帮助是通过部署先进的传感器来提供的。根据外科的程序,在急诊科,对患者进行监测,直到他们身体稳定,然后转移到病房进行进一步的恢复和评估。通常在病房内进行的评估不建议对生理状况进行连续的参数监测,因此患者复发是常见的。在实时医疗应用中,关键参数将通过专用传感器进行估计,这些传感器在目前的情况下仍然是豪华的,对恶劣的环境条件非常敏感。此外,对于实时监测,延迟通常存在于传感器。由于这些问题,数据驱动的软传感器是非常有吸引力的替代品。基于这一事实,本研究提出了基于互联网健康框架的自动编码器深度神经网络(AutoEncDeepNN),通过基于触发的传感器激活模型来帮助患者管理主、从传感器。该方法的优点是自动从传感器中挖掘隐藏信息,并通过多层迭代生成高代表性特征。这一目标是一致实现的,因此所提出的模型优于一些标准方法,如层次极限学习机(HELM),卷积神经网络(CNN)和长短期记忆(LSTM)。结果表明,该方法在74.64 ms内,准确率达到94.72%,RMSE达到41.96%,RAE达到34.16%,MAE达到48.68%。
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