Quality versus speed in energy demand prediction for district heating
systems
- URL: http://arxiv.org/abs/2205.07863v1
- Date: Tue, 10 May 2022 15:47:48 GMT
- Title: Quality versus speed in energy demand prediction for district heating
systems
- Authors: Witold Andrzejewski and Jedrzej Potoniec and Maciej Drozdowski and
Jerzy Stefanowski and Robert Wrembel and Pawe{\l} Stapf
- Abstract summary: Energy demand prediction is essential in combined heat power systems when offering electrical energy in competitive electricity markets.
We propose two sets of algorithms: (1) a novel extension to the algorithm proposed by E. Dotzauer and (2) an autoregressive predictor based on hour-of-week adjusted linear regression on moving averages of energy consumption.
These two methods are compared against state-of-the-art artificial neural networks.
- Score: 3.4057682528839237
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In this paper, we consider energy demand prediction in district heating
systems. Effective energy demand prediction is essential in combined heat power
systems when offering electrical energy in competitive electricity markets. To
address this problem, we propose two sets of algorithms: (1) a novel extension
to the algorithm proposed by E. Dotzauer and (2) an autoregressive predictor
based on hour-of-week adjusted linear regression on moving averages of energy
consumption. These two methods are compared against state-of-the-art artificial
neural networks. Energy demand predictor algorithms have various computational
costs and prediction quality. While prediction quality is a widely used measure
of predictor superiority, computational costs are less frequently analyzed and
their impact is not so extensively studied. When predictor algorithms are
constantly updated using new data, some computationally expensive forecasting
methods may become inapplicable. The computational costs can be split into
training and execution parts. The execution part is the cost paid when the
already trained algorithm is applied to predict something. In this paper, we
evaluate the above methods with respect to the quality and computational costs,
both in the training and in the execution. The comparison is conducted on a
real-world dataset from a district heating system in the northwest part of
Poland.
Related papers
- Benchmarks and Custom Package for Energy Forecasting [55.460452605056894]
Energy forecasting aims to minimize the cost of subsequent tasks such as power grid dispatch.
In this paper, we collected large-scale load datasets and released a new renewable energy dataset.
We conducted extensive experiments with 21 forecasting methods in these energy datasets at different levels under 11 evaluation metrics.
arXiv Detail & Related papers (2023-07-14T06:50:02Z) - Comparison and Evaluation of Methods for a Predict+Optimize Problem in
Renewable Energy [42.00952788334554]
This paper presents the findings of the IEEE-CIS Technical Challenge on Predict+ for Renewable Energy Scheduling," held in 2021.
We present a comparison and evaluation of the seven highest-ranked solutions in the competition.
The winning method predicted different scenarios and optimized over all scenarios using a sample average approximation method.
arXiv Detail & Related papers (2022-12-21T02:34:12Z) - Online Search with Predictions: Pareto-optimal Algorithm and its
Applications in Energy Markets [32.50099216716867]
This paper develops learning-augmented algorithms for energy trading in volatile electricity markets.
We incorporate machine-learned predictions to design competitive algorithms for online search problems.
arXiv Detail & Related papers (2022-11-12T04:12:10Z) - Scalable computation of prediction intervals for neural networks via
matrix sketching [79.44177623781043]
Existing algorithms for uncertainty estimation require modifying the model architecture and training procedure.
This work proposes a new algorithm that can be applied to a given trained neural network and produces approximate prediction intervals.
arXiv Detail & Related papers (2022-05-06T13:18:31Z) - Physics Informed Shallow Machine Learning for Wind Speed Prediction [66.05661813632568]
We analyze a massive dataset of wind measured from anemometers located at 10 m height in 32 locations in Italy.
We train supervised learning algorithms using the past history of wind to predict its value at a future time.
We find that the optimal design as well as its performance vary with the location.
arXiv Detail & Related papers (2022-04-01T14:55:10Z) - Non-Clairvoyant Scheduling with Predictions Revisited [77.86290991564829]
In non-clairvoyant scheduling, the task is to find an online strategy for scheduling jobs with a priori unknown processing requirements.
We revisit this well-studied problem in a recently popular learning-augmented setting that integrates (untrusted) predictions in algorithm design.
We show that these predictions have desired properties, admit a natural error measure as well as algorithms with strong performance guarantees.
arXiv Detail & Related papers (2022-02-21T13:18:11Z) - A Novel Prediction Setup for Online Speed-Scaling [3.3440413258080577]
It is fundamental to incorporate energy considerations when designing (scheduling) algorithms.
This paper attempts to obtain the best of both worlds for the classical, deadline based, online speed-scaling problem.
arXiv Detail & Related papers (2021-12-06T14:46:20Z) - The impact of online machine-learning methods on long-term investment
decisions and generator utilization in electricity markets [69.68068088508505]
We investigate the impact of eleven offline and five online learning algorithms to predict the electricity demand profile over the next 24h.
We show we can reduce the mean absolute error by 30% using an online algorithm when compared to the best offline algorithm.
We also show that large errors in prediction accuracy have a disproportionate error on investments made over a 17-year time frame.
arXiv Detail & Related papers (2021-03-07T11:28:54Z) - Learning Augmented Energy Minimization via Speed Scaling [11.47280189685449]
We study a variant of the classic online speed scaling problem, in which machine learning predictions about the future can be integrated naturally.
Inspired by recent work on learning-augmented online algorithms, we propose an algorithm which incorporates predictions in a black-box manner and outperforms any online algorithm if the accuracy is high.
arXiv Detail & Related papers (2020-10-22T11:58:01Z) - Physics-Informed Gaussian Process Regression for Probabilistic States
Estimation and Forecasting in Power Grids [67.72249211312723]
Real-time state estimation and forecasting is critical for efficient operation of power grids.
PhI-GPR is presented and used for forecasting and estimating the phase angle, angular speed, and wind mechanical power of a three-generator power grid system.
We demonstrate that the proposed PhI-GPR method can accurately forecast and estimate both observed and unobserved states.
arXiv Detail & Related papers (2020-10-09T14:18:31Z) - N-BEATS neural network for mid-term electricity load forecasting [8.430502131775722]
We show that our proposed deep neural network modeling approach is effective at solving the mid-term electricity load forecasting problem.
It is simple to implement and train, it does not require signal preprocessing, and it is equipped with a forecast bias reduction mechanism.
The empirical study shows that proposed neural network clearly outperforms all competitors in terms of both accuracy and forecast bias.
arXiv Detail & Related papers (2020-09-24T21:48:08Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.