4.6 Article

Reliable Industry 4.0 Based on Machine Learning and IoT for Analyzing, Monitoring, and Securing Smart Meters

Journal

SENSORS
Volume 21, Issue 2, Pages -

Publisher

MDPI
DOI: 10.3390/s21020487

Keywords

smart systems; industry 4; 0; internet of things; machine learning

Funding

  1. Department of Electrical Engineering and Automation, Aalto University, Espoo, Finland
  2. Center for Cyber-Physical System Innovation from the Featured Areas Research Center Program in the Agenda of the Higher Education Sprout Project, Taiwan

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The modern control infrastructure is crucial for managing and monitoring communication between smart machines in industrial environments like smart grids. Cyber-physical systems play a key role in the fourth industrial revolution, known as industry 4.0, utilizing embedded software and IoT to control smart machines. However, challenges such as reliability and security are faced in implementing industry 4.0, making it essential to establish new infrastructure, like machine learning algorithms, for data analysis and monitoring to ensure data authenticity and address issues like data loss and inefficiency caused by external factors.
The modern control infrastructure that manages and monitors the communication between the smart machines represents the most effective way to increase the efficiency of the industrial environment, such as smart grids. The cyber-physical systems utilize the embedded software and internet to connect and control the smart machines that are addressed by the internet of things (IoT). These cyber-physical systems are the basis of the fourth industrial revolution which is indexed by industry 4.0. In particular, industry 4.0 relies heavily on the IoT and smart sensors such as smart energy meters. The reliability and security represent the main challenges that face the industry 4.0 implementation. This paper introduces a new infrastructure based on machine learning to analyze and monitor the output data of the smart meters to investigate if this data is real data or fake. The fake data are due to the hacking and the inefficient meters. The industrial environment affects the efficiency of the meters by temperature, humidity, and noise signals. Furthermore, the proposed infrastructure validates the amount of data loss via communication channels and the internet connection. The decision tree is utilized as an effective machine learning algorithm to carry out both regression and classification for the meters' data. The data monitoring is carried based on the industrial digital twins' platform. The proposed infrastructure results provide a reliable and effective industrial decision that enhances the investments in industry 4.0.

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