Chitkara University Institute of Engineering and Technology, Chitkara University, Punjab, India.
IMS Engineering College, Ghaziabad, India.
J Healthc Eng. 2021 Nov 3;2021:8106467. doi: 10.1155/2021/8106467. eCollection 2021.
The novel paradigm of Internet of Things (IoT) is gaining recognition in the numerous scenarios promoting the pervasive presence of smart things around us through its application in various areas of society, which includes transportation, healthcare, industries, and agriculture. One more such application is in the smart office to monitor the health of devices via machine learning (ML) that makes the equipment more efficient by allowing real-time monitoring of their health. It guarantees indoor comfort as per the user's satisfaction as it emphasizes on fault prediction in real-life devices. Early identification of various types of faults in IoT devices is the key requirement in smart offices. IoT devices are becoming ubiquitous and provide an assistant to supervise an office that is regulated by ML and data received from sensors is stored in cloud. A recommender system facilitates the selection of an appropriate solution for faults in IoT-enabled devices to mitigate faults. The architecture proposed in this paper is used to monitor each and every office appliance connected via IoT technology using ML technique, and recommender system is used to recommend solutions for fault patterns without much human intervention. The ultrasonic motion sensor is used to fetch the information of employee availability in cubicles and data is sent to the cloud through the WiFi module. ATmega8 is used to control electrical appliances in the office environment. The significance of this work is to forecast the faults in IoT appliances which will have an impact on life and reliability of IoT appliances. The main objective is to design a prototype of a smart office using IoT that can control and automate workplace devices and forecast whether the device needs repairing or replacing, thus reducing the overall burden on the employee and helping out in increasing physical as well as mental health of the person.
物联网(IoT)的新范式在众多场景中得到认可,通过在社会的各个领域中的应用,推动了我们周围智能事物的普及。这包括交通、医疗保健、工业和农业。在智能办公室中也有这样的应用,通过机器学习(ML)监测设备的健康状况,使设备更高效,实现对其健康状况的实时监测。它保证了室内舒适度,满足用户的满意度,因为它强调对实际设备中的故障进行预测。早期识别物联网设备中的各种类型的故障是智能办公室的关键要求。物联网设备变得无处不在,通过机器学习和从传感器接收的数据存储在云中,为监督办公室提供了帮助。推荐系统有助于为物联网设备中的故障选择合适的解决方案以减轻故障。本文提出的架构用于使用 ML 技术监控通过物联网技术连接的每个办公室设备,并使用推荐系统在无需人工干预的情况下为故障模式推荐解决方案。超声波运动传感器用于获取员工在小隔间中的可用性信息,并通过 Wi-Fi 模块将数据发送到云端。ATmega8 用于控制办公环境中的电器。这项工作的意义在于预测物联网设备中的故障,这将对物联网设备的寿命和可靠性产生影响。主要目标是设计一个使用物联网的智能办公室原型,可以控制和自动化工作场所设备,并预测设备是否需要维修或更换,从而减轻员工的整体负担,并帮助提高人员的身体和心理健康。