Abstract

Smart grids require flexible data driven forecasting methods. We propose clustering tools for bottom-up short-term load forecasting. We focus on individual consumption data analysis which plays a major role for energy management and electricity load forecasting. The first section is dedicated to the industrial context and a review of individual electrical data analysis. Then, we focus on hierarchical time-series for bottom-up forecasting. The idea is to decompose the global signal and obtain disaggregated forecasts in such a way that their sum enhances the prediction. This is done in three steps: identify a rather large number of super-consumers by clustering their energy profiles, generate a hierarchy of nested partitions and choose the one that minimize a prediction criterion. Using a nonparametric model to handle forecasting, and wavelets to define various notions of similarity between load curves, this disaggregation strategy gives a 16% improvement in forecasting accuracy when applied to French individual consumers. Then, this strategy is implemented using R—the free software environment for statistical computing—so that it can scale when dealing with massive datasets. The proposed solution is to make the algorithm scalable combine data storage, parallel computing and double clustering step to define the super-consumers. The resulting software is openly available.

Highlights

  • We propose clustering tools for bottom-up short-term load forecasting

  • We focus on individual consumption data analysis which plays a major role for energy management and electricity load forecasting

  • We will focus on individual consumption data analysis which plays a major role for energy management and electricity load forecasting, designing marketing offers and commercial strategies, proposing new services as energy diagnostics and recommendations, detect and prevent non-technical losses

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Summary

Industrial Context

Energy systems are facing a revolution and many challenges. On the one hand, electricity production is moving to more intermittency and complexity with the increase of renewable energy and the development of small distributed production units such as photovoltaic panels or wind farms. A key component of the smart grids are smart meters They allow two-sided communication with the customers, real time measurement of consumption and a large scope of demand side management services. [5] mentions that Sweden and Italy have achieved full deployment and [6] that Italian distribution system operators are planning the second wave of roll-outs This results in new opportunities such as local optimisation of the grid, demand side management and smart control of storage devices. Massive data sets are and will be produced as explained in [7]: data from energy consumption measured by smart meters at a high frequency (every half minute instead of every 6 months); data from the grid management (e.g., Phasor Measurement Units); data from energy markets (prices and bidding, transmission and distribution system operators data, such as balancing and capacity); data from production units and equipments for their maintenance and control (sensors, periodic measures...). We will focus on individual consumption data analysis which plays a major role for energy management and electricity load forecasting, designing marketing offers and commercial strategies, proposing new services as energy diagnostics and recommendations, detect and prevent non-technical losses

Individual Electrical Consumption Data: A State-of-the-Art
Bottom-Up Forecasting from Smart Meter Data
Wavelets
From Discrete to Functional Time Series
Stationary Case
Beyond the Stationary Case
Clustering Electrical Load Curves
Clustering by Feature Extraction
Clustering Using a Dissimilarity Measure
Upscaling
Algorithm Description
Code Profiling
Proposed Solutions
Data Presentation
Numerical Experiments
Choice of Methods
Multiscale Modeling and Forecasting
Findings
How to Handle Non Stationarity?
Full Text
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