Abstract

Heating load forecasting is the premise for guiding heating operation management and dispatching. Heating load forecasting is a time series prediction problem which requires us to predict the real-time heating loads in the next 24 hours using available historical records and weather information. In this paper, we propose a model for short-term heating load forecasting based on a properly designed strand-based long short term memory (LSTM) recurrent neural network. We present how the data are pre-processed, and the loss function is designed to improve the model's performance. Furthermore, an ensemble strategy is incorporated with the LSTM model to enhance its generalization and robustness. On offline (historical) testing data, the proposed model performs satisfactory predictions which meet the requirements of the local power plant. In addition to offline tests, we also implement the model to an online system of a power plant in Shandong province, China. The model made continuous forecasting without human interference for four months during the heating season of 2018. The model reported satisfactory online testing results that were comparable with the offline experiments using historical data.

Highlights

  • Load forecasting is essential for planning and optimizing operations for large energy systems

  • Because of the significant economic and environmental benefits, short-term forecasting has been widely used in energy fields, such as electric load forecasting [1], heating load forecasting [2], [3], etc

  • This paper is focused on heating load forecasting

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Summary

Introduction

Load forecasting is essential for planning and optimizing operations for large energy systems. It can assist in a reasonable dispatch of resources. Heating load forecasting is the premise for accurate guidance of heating operation management and heat dispatching. During the heating season in China, which usually starts in the middle of November and ends in March of year, an accurate heating load forecast can significantly improve the stability and production efficiency of central heating systems. On the one hand, heating load forecasting is essential to the stability of the power system. Renewable energy, such as wind power, is severely dependent on weather and

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