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Open AccessJournal ArticleDOI

An Ensemble Energy Consumption Forecasting Model Based on Spatial-Temporal Clustering Analysis in Residential Buildings

Anam-Nawaz Khan, +4 more
- 23 May 2021 - 
- Vol. 14, Iss: 11, pp 3020
TLDR
A spatial and temporal ensemble forecasting model for short-term electric consumption forecasting that has efficiently captured the dynamic electric consumption characteristics to exploit ensemble model diversities and achieved lower forecasting error is presented.
Abstract
Due to the availability of smart metering infrastructure, high-resolution electric consumption data is readily available to study the dynamics of residential electric consumption at finely resolved spatial and temporal scales. Analyzing the electric consumption data enables the policymakers and building owners to understand consumer’s demand-consumption behaviors. Furthermore, analysis and accurate forecasting of electric consumption are substantial for consumer involvement in time-of-use tariffs, critical peak pricing, and consumer-specific demand response initiatives. Alongside its vast economic and sustainability implications, such as energy wastage and decarbonization of the energy sector, accurate consumption forecasting facilitates power system planning and stable grid operations. Energy consumption forecasting is an active research area; despite the abundance of devised models, electric consumption forecasting in residential buildings remains challenging due to high occupant energy use behavior variability. Hence the search for an appropriate model for accurate electric consumption forecasting is ever continuing. To this aim, this paper presents a spatial and temporal ensemble forecasting model for short-term electric consumption forecasting. The proposed work involves exploring electric consumption profiles at the apartment level through cluster analysis based on the k-means algorithm. The ensemble forecasting model consists of two deep learning models; Long Short-Term Memory Unit (LSTM) and Gated Recurrent Unit (GRU). First, the apartment-level historical electric consumption data is clustered. Later the clusters are aggregated based on consumption profiles of consumers. At the building and floor level, the ensemble models are trained using aggregated electric consumption data. The proposed ensemble model forecasts the electric consumption at three spatial scales apartment, building, and floor level for hourly, daily, and weekly forecasting horizon. Furthermore, the impact of spatial-temporal granularity and cluster analysis on the prediction accuracy is analyzed. The dataset used in this study comprises high-resolution electric consumption data acquired through smart meters recorded on an hourly basis over the period of one year. The consumption data belongs to four multifamily residential buildings situated in an urban area of South Korea. To prove the effectiveness of our proposed forecasting model, we compared our model with widely known machine learning models and deep learning variants. The results achieved by our proposed ensemble scheme verify that model has learned the sequential behavior of electric consumption by producing superior performance with the lowest MAPE of 4.182 and 4.54 at building and floor level prediction, respectively. The experimental findings suggest that the model has efficiently captured the dynamic electric consumption characteristics to exploit ensemble model diversities and achieved lower forecasting error. The proposed ensemble forecasting scheme is well suited for predictive modeling and short-term load forecasting.

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Citations
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Journal ArticleDOI

An Ensemble of Prediction and Learning Mechanism for Improving Accuracy of Anomaly Detection in Network Intrusion Environments

Imran, +2 more
- 08 Sep 2021 - 
TL;DR: The performance comparison results show that the proposed ensemble model-based intrusion detection significantly improves the intrusion detection accuracy.
Journal ArticleDOI

When Blockchain Meets the AEC Industry: Present Status, Benefits, Challenges, and Future Research Opportunities

TL;DR: The results indicated that research on blockchain applications is still relatively new and fragmented with regard to several topics, and guidelines for further research on Blockchain applications in the AEC industry were provided.
Journal ArticleDOI

A Novel Short-Term Residential Electric Load Forecasting Method Based on Adaptive Load Aggregation and Deep Learning Algorithms

TL;DR: In this article, an optimal number of households would be selected adaptively, and the total aggregated residential load of the selected households is used for load prediction, and ordering points to identify the clustering structure (OPTICS) algorithm is also selected to cluster households with similar power consumption patterns adaptively.
Journal ArticleDOI

Methods of Forecasting Electric Energy Consumption: A Literature Review

TL;DR: In this article , the authors provide an overview of the methods used to predict electricity supply requirements to different objects, taking into account the forecast classification according to the anticipation period, in this way, methods used in operative, short-term, medium-term and long-term forecasting have been considered.
Journal ArticleDOI

A machine-learning ensemble model for predicting energy consumption in smart homes

TL;DR: In this paper , the authors performed an overall analysis of energy consumption in smart homes by deploying machine learning models, such as Decision Trees (DT), Random Forest (RF), eXtreme Gradient Boosting (XGBoost), and k-Nearest Neighbor (KNN) for predicting the power consumption of multiple datasets.
References
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Combining Probabilistic Load Forecasts

TL;DR: A constrained quantile regression averaging (CQRA) method to create an improved ensemble from several individual probabilistic forecasts, which can reduce the pinball score by 4.39% and demonstrates superior performance over nine other benchmark ensembles.
Journal ArticleDOI

A Survey on Data Mining Techniques Applied to Electricity-Related Time Series Forecasting

TL;DR: This work explores the application of data mining techniques to time series forecasting and reviews the latest works of time series forecast and, as case study, those related to electricity price and demand markets.
Journal ArticleDOI

An Improved Quantile Regression Neural Network for Probabilistic Load Forecasting

TL;DR: An improved QRNN (iQRNN) is proposed to address the issues of traditional QRNN, which incorporates popular techniques in deep learning areas and can generate remarkably superior quantile forecasts than state-of-the-art methods.
Journal ArticleDOI

Stacking Ensemble Learning for Short-Term Electricity Consumption Forecasting

TL;DR: Results show that an approach for short-term electricity consumption forecasting based on ensemble learning can help in combining predictions produced by weaker learning methods in order to obtain superior results, and that using an ensemble scheme can achieve very accurate predictions.
Journal ArticleDOI

Green Energy Scheduling for Demand Side Management in the Smart Grid

TL;DR: A more efficient and reliable communication infrastructure in smart grid based on cognitive radio technology is constructed and a game theory-based distributed energy management scheme is developed in DSM without leaking user privacy, which is used as inner optimization in the proposed distributed energy storage planning approach.
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