Short-Term Load Forecasting Based on Deep Learning for End-User Transformer Subject to Volatile Electric Heating Loads

Short-Term Load Forecasting (STLF) for End-User Transformer Level (EUTL) is challenging due to the high penetration of Electric Heating Loads (EHLs), which exhibit significant uncertainty, nonlinearity, and variability. In this paper, a STLF model is proposed based on the Stacked Auto-Encoder Extrem...

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Main Authors: Qifang Chen, Mingchao Xia, Teng Lu, Xichen Jiang, Wenxia Liu, Qinfei Sun
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8883177/
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spelling doaj-3299658b5d6046dd9385601a53da3e362021-03-30T00:55:00ZengIEEEIEEE Access2169-35362019-01-01716269716270710.1109/ACCESS.2019.29497268883177Short-Term Load Forecasting Based on Deep Learning for End-User Transformer Subject to Volatile Electric Heating LoadsQifang Chen0https://orcid.org/0000-0002-5106-9417Mingchao Xia1https://orcid.org/0000-0003-2110-5699Teng Lu2Xichen Jiang3Wenxia Liu4Qinfei Sun5School of Electrical Engineering, Beijing Jiaotong University, Beijing, ChinaSchool of Electrical Engineering, Beijing Jiaotong University, Beijing, ChinaSchool of Electrical Engineering, Beijing Jiaotong University, Beijing, ChinaDepartment of Engineering and Design, Western Washington University, Bellingham, WA, USAState Key Laboratory of Alternate Electrical Power System with Renewable Energy Sources, North China Electric Power University, Beijing, ChinaState Grid Beijing Electric Power Company, Beijing, ChinaShort-Term Load Forecasting (STLF) for End-User Transformer Level (EUTL) is challenging due to the high penetration of Electric Heating Loads (EHLs), which exhibit significant uncertainty, nonlinearity, and variability. In this paper, a STLF model is proposed based on the Stacked Auto-Encoder Extreme Learning Machine (SAE-ELM) deep learning framework, which can be used to extract hidden features from the time series load data. In order to improve the capability of extracting deep and diverse features from the data and generate a useful knowledge representation structure, a novel specialized feature indices set is proposed to construct the training sample set. The sliding trend, fluctuation rate, grade of change, and smoothness of the time series are considered and quantified as elements of the training sample set. Then, deep nonlinear features are extracted by using the SAE-ELM with no iterative parameter tuning needed. To illustrate the validity of the proposed model, five numerical cases are conducted. Comparison of results shows that the proposed model improves the capability and sensitivity of dealing with load volatility and forecasting accuracy.https://ieeexplore.ieee.org/document/8883177/Short-term load forecastingfeature representationdeep learningstacked auto-encoderextreme learning machine
collection DOAJ
language English
format Article
sources DOAJ
author Qifang Chen
Mingchao Xia
Teng Lu
Xichen Jiang
Wenxia Liu
Qinfei Sun
spellingShingle Qifang Chen
Mingchao Xia
Teng Lu
Xichen Jiang
Wenxia Liu
Qinfei Sun
Short-Term Load Forecasting Based on Deep Learning for End-User Transformer Subject to Volatile Electric Heating Loads
IEEE Access
Short-term load forecasting
feature representation
deep learning
stacked auto-encoder
extreme learning machine
author_facet Qifang Chen
Mingchao Xia
Teng Lu
Xichen Jiang
Wenxia Liu
Qinfei Sun
author_sort Qifang Chen
title Short-Term Load Forecasting Based on Deep Learning for End-User Transformer Subject to Volatile Electric Heating Loads
title_short Short-Term Load Forecasting Based on Deep Learning for End-User Transformer Subject to Volatile Electric Heating Loads
title_full Short-Term Load Forecasting Based on Deep Learning for End-User Transformer Subject to Volatile Electric Heating Loads
title_fullStr Short-Term Load Forecasting Based on Deep Learning for End-User Transformer Subject to Volatile Electric Heating Loads
title_full_unstemmed Short-Term Load Forecasting Based on Deep Learning for End-User Transformer Subject to Volatile Electric Heating Loads
title_sort short-term load forecasting based on deep learning for end-user transformer subject to volatile electric heating loads
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description Short-Term Load Forecasting (STLF) for End-User Transformer Level (EUTL) is challenging due to the high penetration of Electric Heating Loads (EHLs), which exhibit significant uncertainty, nonlinearity, and variability. In this paper, a STLF model is proposed based on the Stacked Auto-Encoder Extreme Learning Machine (SAE-ELM) deep learning framework, which can be used to extract hidden features from the time series load data. In order to improve the capability of extracting deep and diverse features from the data and generate a useful knowledge representation structure, a novel specialized feature indices set is proposed to construct the training sample set. The sliding trend, fluctuation rate, grade of change, and smoothness of the time series are considered and quantified as elements of the training sample set. Then, deep nonlinear features are extracted by using the SAE-ELM with no iterative parameter tuning needed. To illustrate the validity of the proposed model, five numerical cases are conducted. Comparison of results shows that the proposed model improves the capability and sensitivity of dealing with load volatility and forecasting accuracy.
topic Short-term load forecasting
feature representation
deep learning
stacked auto-encoder
extreme learning machine
url https://ieeexplore.ieee.org/document/8883177/
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