Abstract

For efficient and effective energy management, accurate energy consumption forecasting is required in energy management systems (EMSs). Recently, several artificial intelligence-based techniques have been proposed for accurate electric load forecasting; moreover, perfect energy consumption data are critical for the prediction. However, owing to diverse reasons, such as device malfunctions and signal transmission errors, missing data are frequently observed in the actual data. Previously, many imputation methods have been proposed to compensate for missing values; however, these methods have achieved limited success in imputing electric energy consumption data because the period of data missing is long and the dependency on historical data is high. In this study, we propose a novel missing-value imputation scheme for electricity consumption data. The proposed scheme uses a bagging ensemble of multilayer perceptrons (MLPs), called softmax ensemble network, wherein the ensemble weight of each MLP is determined by a softmax function. This ensemble network learns electric energy consumption data with explanatory variables and imputes missing values in this data. To evaluate the performance of our scheme, we performed diverse experiments on real electric energy consumption data and confirmed that the proposed scheme can deliver superior performance compared to other imputation methods.

Highlights

  • A typical energy management system (EMS) is equipped with smart meters (SMs) that measure the amount of electric energy consumed [1,2]

  • Based on the experiments using real electric energy consumption data, we report that the proposed scheme can deliver better performance than those of other missing-value imputation methods

  • We proposed a missing-value imputation method using an ensemble scheme based on multilayer perceptrons (MLPs) and several explanatory variables

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Summary

Introduction

A typical energy management system (EMS) is equipped with smart meters (SMs) that measure the amount of electric energy consumed [1,2]. These meters collect such information from diverse targets such as houses, buildings, and cities, and the EMS performs appropriate operations based on the information. Malfunctions of the device and signal transmission errors are typical sources of missing data [8] This missing value problem decreases the prediction accuracy and results in inferior performance for the forecasting methods that are based on consecutive values, such as the autoregressive integrated moving average [9,10].

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