Data Analytics for Low Voltage Electrical Grids

At the consumer level in the electrical grid, the increase in distributed power generation from renewable energy resources creates operational challenges for the DSOs. Nowadays, grid data is only used for billing purposes. Intelligent management tools can facilitate enhanced control of the power system, where the first step is the ability to monitor the grid state in near-real-time. Therefore, the concepts of smart grids and Internet of Things can enable future enhancements via the application of smart analytics. This paper introduces a use case for low voltage grid observability. The proposal involves a state estimation algorithm (DSSE) that aims to eliminate errors in the received meter data and provide an estimate of the actual grid state by replacing missing or insufficient data for the DSSE by pseudo-measurements acquired from historical data. A state of the art of historical and near-real-time analytics techniques is further presented. Based on the proposed study model and the survey, the team near-real-time is defined. The proposal concludes with an evaluation of the different analytical methods and a subsequent set of recommendations best suited for low voltage grid observability.

[1]  Rahmat-Allah Hooshmand,et al.  A New Pseudo Load Profile Determination Approach in Low Voltage Distribution Networks , 2018, IEEE Transactions on Power Systems.

[2]  J.C.S. Souza,et al.  Preserving data redundancy in state estimation through a predictive database , 1999, PowerTech Budapest 99. Abstract Records. (Cat. No.99EX376).

[3]  Francisco C. Pereira,et al.  Using pattern recognition to identify habitual behavior in residential electricity consumption , 2012 .

[4]  R.D. Findlay,et al.  A new approach using artificial neural network and time series models for short term load forecasting , 2003, CCECE 2003 - Canadian Conference on Electrical and Computer Engineering. Toward a Caring and Humane Technology (Cat. No.03CH37436).

[5]  Juri Jatskevich,et al.  Distribution System State Estimation Based on Nonsynchronized Smart Meters , 2015, IEEE Transactions on Smart Grid.

[6]  Alan W. McMorran,et al.  An Introduction to IEC 61970-301 & 61968-11 : The Common Information Model , 2007 .

[7]  A. G. Expósito,et al.  Power system state estimation : theory and implementation , 2004 .

[8]  Per Hallberg,et al.  Active distribution system management , 2013 .

[9]  George K. Karagiannidis,et al.  Big Data Analytics for Dynamic Energy Management in Smart Grids , 2015, Big Data Res..

[10]  Ram Rajagopal,et al.  Smart Meter Driven Segmentation: What Your Consumption Says About You , 2013, IEEE Transactions on Power Systems.

[11]  Rasmus L. Olsen,et al.  Visualization Techniques for Electrical Grid Smart Metering Data: A Survey , 2017, 2017 IEEE Third International Conference on Big Data Computing Service and Applications (BigDataService).

[12]  Graeme Burt,et al.  Enhanced Load Profiling for Residential Network Customers , 2014, IEEE Transactions on Power Delivery.

[13]  José Luis Díez,et al.  Dynamic clustering segmentation applied to load profiles of energy consumption from Spanish customers , 2014 .

[14]  Rosario Miceli,et al.  A Perspective on the Future of Distribution: Smart Grids, State of the Art, Benefits and Research Plans , 2013 .

[15]  Scott A. Neumann,et al.  CIM interoperability challenges , 2010, IEEE PES General Meeting.

[16]  Houda Daki,et al.  Big Data management in smart grid: concepts, requirements and implementation , 2017, Journal of Big Data.

[17]  Albert Y. Zomaya,et al.  A study on using uncertain time series matching algorithms for MapReduce applications , 2013, Concurr. Comput. Pract. Exp..

[18]  Lukasz Golab,et al.  Smart Meter Data Analytics , 2017, ACM Trans. Database Syst..

[19]  Florin Iov,et al.  Observability of low voltage grids: Actual DSOs challenges and research questions , 2017, 2017 52nd International Universities Power Engineering Conference (UPEC).

[20]  Abbas Khosravi,et al.  A review on artificial intelligence based load demand forecasting techniques for smart grid and buildings , 2015 .

[21]  Itziar Angulo,et al.  State of the Art and Trends Review of Smart Metering in Electricity Grids , 2016 .