Title :
Extraction of Energy Information From Analog Meters Using Image Processing
Author :
Yachen Tang ; Chee-Wooi Ten ; Chaoli Wang ; Parker, Gordon
Author_Institution :
Dept. of Electr. & Comput. Eng., Michigan Technol. Univ., Houghton, MI, USA
Abstract :
There has been an ongoing effort to increase the number of advanced metering infrastructure (AMI) devices to improve system observability. When deployed across distribution secondary networks, AMI provides building-level load and consumption information, which can be used to improve grid management strategies. A barrier to implementation is the significant upgrade costs associated with retrofitting existing meters with network-capable sensing. One economic way is to use image processing methods to extract usage information from images of the existing meters. This paper presents a solution that uses online data exchange of power consumption information to a cloud server without modifying the existing electromechanical analog meters. In this framework, a systematic approach to extract energy data from images is applied to replace the manual reading process. A case study is presented where the digital imaging approach is compared to the averages determined by visual readings over a one-month period.
Keywords :
cloud computing; distribution networks; image processing; observability; power consumption; power engineering computing; power grids; power system management; smart meters; AMI device; advanced metering infrastructure; building-level load consumption information extraction; cloud server; digital imaging approach; distribution secondary network; electromechanical analog meter; energy information extraction; grid management strategy improvement; image processing; online data exchange; power consumption information; system observability improvement; Buildings; Data mining; Image processing; Internet; Mobile handsets; Real-time systems; Smart meters; Advanced metering infrastructure (AMI); electromechanical analog meters; image data extraction; time-activity curves;
Journal_Title :
Smart Grid, IEEE Transactions on
DOI :
10.1109/TSG.2015.2388586