Data-Driven Robust Optimal Operation of Thermal Energy Storage in Industrial Clusters
Industrial waste heat recovery is an attractive option having the simultaneous benefits of reducing energy costs as well as carbon emissions. In this context, thermal energy storage can be used along with an optimal operation strategy like model predictive control (MPC) to realize significant energy...
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doaj-0f340aea75b041349b57aa95d5b4338f2020-11-25T01:12:28ZengMDPI AGProcesses2227-97172020-02-018219410.3390/pr8020194pr8020194Data-Driven Robust Optimal Operation of Thermal Energy Storage in Industrial ClustersMandar Thombre0Zawadi Mdoe1Johannes Jäschke2Department of Chemical Engineering, Norwegian University of Science and Technology, N-7491 Trondheim, NorwayDepartment of Chemical Engineering, Norwegian University of Science and Technology, N-7491 Trondheim, NorwayDepartment of Chemical Engineering, Norwegian University of Science and Technology, N-7491 Trondheim, NorwayIndustrial waste heat recovery is an attractive option having the simultaneous benefits of reducing energy costs as well as carbon emissions. In this context, thermal energy storage can be used along with an optimal operation strategy like model predictive control (MPC) to realize significant energy savings. However, conventional control methods offer little robustness against uncertainty in terms of daily operation, where supply and demand of energy in the cluster can vary significantly from their predicted profiles. A major concern is that ignoring the uncertainties in the system may lead to the system violating critical constraints that affect the quality of the end-product of the participating processes. To this end, we present a method to make optimal energy storage and discharge decisions, while rigorously handling this uncertainty. We employ multivariate data analysis on historical industrial data to implement a multistage nonlinear MPC scheme based on a scenario-tree formulation, where the economic objective is to minimize energy costs. Principal component analysis (PCA) is used to detect outliers in the industrial data on heat profiles, and to select appropriate scenarios for building the scenario-tree in the multistage MPC formulation. The results show that this data-driven robust MPC approach is successfully able to keep the system from violating any operating constraints. The solutions obtained are not overly conservative, even in the presence of significant deviations between the predicted and actual heat profiles. This leads to an energy-efficient utilization of the storage unit, benefiting all the stakeholders involved in heat-exchange in the cluster.https://www.mdpi.com/2227-9717/8/2/194industrial clustersthermal energy storageuncertaintyrobust model predictive controlenergy-efficiencydata-driven |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Mandar Thombre Zawadi Mdoe Johannes Jäschke |
spellingShingle |
Mandar Thombre Zawadi Mdoe Johannes Jäschke Data-Driven Robust Optimal Operation of Thermal Energy Storage in Industrial Clusters Processes industrial clusters thermal energy storage uncertainty robust model predictive control energy-efficiency data-driven |
author_facet |
Mandar Thombre Zawadi Mdoe Johannes Jäschke |
author_sort |
Mandar Thombre |
title |
Data-Driven Robust Optimal Operation of Thermal Energy Storage in Industrial Clusters |
title_short |
Data-Driven Robust Optimal Operation of Thermal Energy Storage in Industrial Clusters |
title_full |
Data-Driven Robust Optimal Operation of Thermal Energy Storage in Industrial Clusters |
title_fullStr |
Data-Driven Robust Optimal Operation of Thermal Energy Storage in Industrial Clusters |
title_full_unstemmed |
Data-Driven Robust Optimal Operation of Thermal Energy Storage in Industrial Clusters |
title_sort |
data-driven robust optimal operation of thermal energy storage in industrial clusters |
publisher |
MDPI AG |
series |
Processes |
issn |
2227-9717 |
publishDate |
2020-02-01 |
description |
Industrial waste heat recovery is an attractive option having the simultaneous benefits of reducing energy costs as well as carbon emissions. In this context, thermal energy storage can be used along with an optimal operation strategy like model predictive control (MPC) to realize significant energy savings. However, conventional control methods offer little robustness against uncertainty in terms of daily operation, where supply and demand of energy in the cluster can vary significantly from their predicted profiles. A major concern is that ignoring the uncertainties in the system may lead to the system violating critical constraints that affect the quality of the end-product of the participating processes. To this end, we present a method to make optimal energy storage and discharge decisions, while rigorously handling this uncertainty. We employ multivariate data analysis on historical industrial data to implement a multistage nonlinear MPC scheme based on a scenario-tree formulation, where the economic objective is to minimize energy costs. Principal component analysis (PCA) is used to detect outliers in the industrial data on heat profiles, and to select appropriate scenarios for building the scenario-tree in the multistage MPC formulation. The results show that this data-driven robust MPC approach is successfully able to keep the system from violating any operating constraints. The solutions obtained are not overly conservative, even in the presence of significant deviations between the predicted and actual heat profiles. This leads to an energy-efficient utilization of the storage unit, benefiting all the stakeholders involved in heat-exchange in the cluster. |
topic |
industrial clusters thermal energy storage uncertainty robust model predictive control energy-efficiency data-driven |
url |
https://www.mdpi.com/2227-9717/8/2/194 |
work_keys_str_mv |
AT mandarthombre datadrivenrobustoptimaloperationofthermalenergystorageinindustrialclusters AT zawadimdoe datadrivenrobustoptimaloperationofthermalenergystorageinindustrialclusters AT johannesjaschke datadrivenrobustoptimaloperationofthermalenergystorageinindustrialclusters |
_version_ |
1725166150020497408 |