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Intelligent Monitoring System of Cremation Equipment Based on Internet of Things

  • Lin Tian
  • Fengguang Huang
  • Lingyu Fang
  • Yu Bai
Conference paper
Part of the Lecture Notes in Electrical Engineering book series (LNEE, volume 528)

Abstract

The cremation of the remains and the burning of relics and sacrifices are the core and key to the funeral and funeral services. With the development of computer and numerical computation, the research of cremation process is becoming more and more important. Changing the traditional combustion method is of great significance for efficient operation of equipment and energy saving and emission reduction. In this paper, we transmit the combustion data collected by the smart sensor to the remote server terminal in real time through GPRS data transmission technology. Then we set up a database for data storage. Logistic regression, random forest, XGBoost algorithm three data analysis models were used to establish a multi-input and multi-output simulation model of cremation equipment. And the actual working conditions in the process of cremation equipment were simulated to provide guidance. An intelligent monitoring system for cremation equipment is established, which integrates computer technology, sensing technology, automatic control technology, network technology and communication technology. This is of great significance for promoting the scientific development of modern funeral business.

Keywords

Cremation equipment Database Logistic regression Random forest XGBoost 

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Copyright information

© Springer Nature Singapore Pte Ltd. 2019

Authors and Affiliations

  • Lin Tian
    • 1
  • Fengguang Huang
    • 1
  • Lingyu Fang
    • 2
  • Yu Bai
    • 2
  1. 1.The 101 Research Institute of Ministry of Civil AffairsBeijingChina
  2. 2.School of Automation and Electrical EngineeringUniversity of Science and Technology BeijingBeijingChina

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