Abstract

A cornerstone of the worldwide transition to smart grids are smart meters. Smart meters typically collect and provide energy time series that are vital for various applications, such as grid simulations, fault-detection, load forecasting, load analysis, and load management. Unfortunately, these time series are often characterized by missing values that must be handled before the data can be used. A common approach to handle missing values in time series is imputation. However, existing imputation methods are designed for power time series and do not take into account the total energy of gaps, resulting in jumps or constant shifts when imputing energy time series. In order to overcome these issues, the present paper introduces the new Copy-Paste Imputation (CPI) method for energy time series. The CPI method copies data blocks with similar properties and pastes them into gaps of the time series while preserving the total energy of each gap. The new method is evaluated on a real-world dataset that contains six shares of artificially inserted missing values between 1 and 30%. It outperforms by far the three benchmark imputation methods selected for comparison. The comparison furthermore shows that the CPI method uses matching patterns and preserves the total energy of each gap while requiring only a moderate run-time.

Highlights

  • In the course of the worldwide transition to an energy system mainly based on renewable energy sources, a key is the implementation of smart grids [1]

  • The scaling is based on the actual energy and the imputed energy. Both can be determined because the Copy-Paste Imputation (CPI) method uses energy time series as input and can calculate the energy consumed during a gap

  • The present paper introduces a new Copy-Paste Imputation method for energy time series

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Summary

INTRODUCTION

In the course of the worldwide transition to an energy system mainly based on renewable energy sources, a key is the implementation of smart grids [1]. Other methods utilize even more additional data or information to impute missing values in smart meter time series. In the present paper, we propose the novel Copy-Paste Imputation (CPI) method for univariate energy time series It uses an energy time series as input and copies blocks of data with similar characteristics into gaps. By copying blocks of matching data, the inherent patterns of the time series are preserved, even in time series with pattern changes For this purpose, the CPI method utilizes the information about the total energy of each gap that energy time series contain in contrast to power time series.

NOVEL COPY-PASTE IMPUTATION METHOD
Linear Interpolation of Single Missing Values
Energy Consumption Estimation
Compilation of Available Complete Days
Calculation of Dissimilarity Between Days
Copy and Paste of Matching Days
EVALUATION
Dataset
Benchmark Methods
Experimental Setting
Results
CONCLUSION AND OUTLOOK
Full Text
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