# Short Term Power Demand Prediction Using Stochastic Gradient Boosting

**Authors:** Ali Bou Nassif

arXiv: 1701.07021 · 2017-01-26

## TL;DR

This paper presents a stochastic gradient boosting model for short-term power demand prediction in Sharjah, UAE, demonstrating improved accuracy over existing models used by local authorities.

## Contribution

The paper introduces a novel application of stochastic gradient boosting for short-term power demand forecasting in a specific regional context.

## Key findings

- Model outperforms existing SEWA model
- Provides accurate short-term demand forecasts
- Supports efficient resource allocation

## Abstract

Power prediction demand is vital in power system and delivery engineering fields. By efficiently predicting the power demand, we can forecast the total energy to be consumed in a certain city or district. Thus, exact resources required to produce the demand power can be allocated. In this paper, a Stochastic Gradient Boosting (aka Treeboost) model is used to predict the short term power demand for the Emirate of Sharjah in the United Arab Emirates (UAE). Results show that the proposed model gives promising results in comparison to the model used by Sharjah Electricity and Water Authority (SEWA).

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Source: https://tomesphere.com/paper/1701.07021