Abstract

Energy demand and generation are common variables that need to be forecast in recent years, due to the necessity for energy self-consumption via storage and Demand Side Management. This work studies multi-step time series forecasting models for energy with confidence intervals for each time point, accompanied by a demand optimization algorithm, for energy management in partly or completely isolated islands. Particularly, the forecasting is performed via numerous traditional and contemporary machine learning regression models, which receive as input past energy data and weather forecasts. During pre-processing, the historical data are grouped into sets of months and days of week based on clustering models, and a separate regression model is automatically selected for each of them, as well as for each forecasting horizon. Furthermore, the multi-criteria optimization algorithm is implemented for demand scheduling with load shifting, assuming that, at each time point, demand is within its confidence interval resulting from the forecasting algorithm. Both clustering and multiple model training proved to be beneficial to forecasting compared to traditional training. The Normalized Root Mean Square Error of the forecasting models ranged approximately from 0.17 to 0.71, depending on the forecasting difficulty. It also appeared that the optimization algorithm can simultaneously increase renewable penetration and achieve load peak shaving, while also saving consumption cost in one of the tested islands. The global improvement estimation of the optimization algorithm ranged approximately from 5% to 38%, depending on the flexibility of the demand patterns.

Highlights

  • Time series forecasting is useful in many applications [1,2]

  • The current paper presents first a generic forecasting algorithm, based on machine learning techniques, applied to predict aggregate demand and generation in three demonstrators (Orkney island, Ballen marina at Samsø and Madeira island)

  • It is worthless and time consuming to keep a finer resolution because all forecasting horizons are a multiple of 1 h and the algorithm is not required to be executed more frequently than once an hour, or even once a day)

Read more

Summary

Introduction

Time series forecasting is useful in many applications [1,2]. Before 1927, time series were forecast using extrapolation. The current paper presents first a generic forecasting algorithm, based on machine learning techniques, applied to predict aggregate demand and generation in three demonstrators (Orkney island, Ballen marina at Samsø and Madeira island). It was considered that the average demand across all timestamps of the interval should not be modified, and that the demand at each future timestamp always ranges within the respective confidence interval This optimization algorithm is generic and was implemented for each demonstrator using relevant data. The end user is an energy consumer who views the recommendations about the time points in the near future when energy consumption should be preferred according to the desired weighting factors of the three optimization criteria and the unit prices. Appendix A provides more information about the raw data

Related Work and Our Contribution
Methodology of the Forecasting Algorithm
Evaluation
Raw Data Used from Each Demonstrator
Algorithmic Specifications and Initial Pre-Processing
Input Variables Selection and Timestamps Clustering
Results from Training the Regression Models
The Optimization Algorithm
The Mathematical Viewpoint of the Optimization Method
Flexibility Analysis
Implementation Examples of the Optimization Algorithm and Discussion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.