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Analysis of classical and machine learning based short-term and mid-term load forecasting for smart grid

Sneha Rai, Mala De

2021International Journal of Sustainable Energy56 citationsDOI

Abstract

The evolution of advanced metering infrastructure (AMI) has increased the electricity consumption data in real-time manifolds. Using this massive data, the load forecasting methods have undergone numerous transformations. In this paper, short-term and mid-term load forecasting (STLF and MTLF) is proposed using smart-metered data acquired from a real-life distribution grid at the NIT Patna campus with different classical and machine learning methods. Data pre-processing is done to transform the raw data into an appropriate format by removing the outliers present in the datasets. The influential meteorological variables obtained by correlation analysis along with the past load are used to train the load forecasting model. The proposed support vector regression (SVR) produces the best forecasting performance for the test system with a minimum mean absolute percentage error (MAPE) and root mean square error (RMSE). The proposed method outperforms the existing approaches for STLF and MTLF by an average MAPE of 3.60.

Topics & Concepts

Mean absolute percentage errorTerm (time)Metering modeMean squared errorSupport vector machineOutlierSmart gridComputer scienceRaw dataGridArtificial intelligenceData miningArtificial neural networkStatisticsMachine learningEngineeringMathematicsPhysicsMechanical engineeringQuantum mechanicsGeometryElectrical engineeringEnergy Load and Power ForecastingSolar Radiation and PhotovoltaicsSmart Grid Energy Management
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