A Deep Neural Network-Assisted Approach to Enhance Short-Term Optimal Operational Scheduling of a Microgrid

The inherent variability of large-scale renewable energy generation leads to significant difficulties in microgrid energy management. Likewise, the effects of human behaviors in response to the changes in electricity tariffs as well as seasons result in changes in electricity consumption. Thus, prop...

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Main Authors: Fatma Yaprakdal, M. Berkay Yılmaz, Mustafa Baysal, Amjad Anvari-Moghaddam
Format: Article
Language:English
Published: MDPI AG 2020-02-01
Series:Sustainability
Subjects:
Online Access:https://www.mdpi.com/2071-1050/12/4/1653
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spelling doaj-b346ecec20bc473fa237b19134eeeab02020-11-25T01:15:29ZengMDPI AGSustainability2071-10502020-02-01124165310.3390/su12041653su12041653A Deep Neural Network-Assisted Approach to Enhance Short-Term Optimal Operational Scheduling of a MicrogridFatma Yaprakdal0M. Berkay Yılmaz1Mustafa Baysal2Amjad Anvari-Moghaddam3Faculty of Electrical and Electronics Engineering, Yildiz Technical University, Davutpasa Campus, 34220 Esenler, Istanbul, TurkeyComputer Engineering Department, Akdeniz University, Antalya Campus, Dumlupinar Boulevard, 07058 Antalya, TurkeyFaculty of Electrical and Electronics Engineering, Yildiz Technical University, Davutpasa Campus, 34220 Esenler, Istanbul, TurkeyDepartment of Energy Technology, Aalborg University, 9220 Aalborg East, DenmarkThe inherent variability of large-scale renewable energy generation leads to significant difficulties in microgrid energy management. Likewise, the effects of human behaviors in response to the changes in electricity tariffs as well as seasons result in changes in electricity consumption. Thus, proper scheduling and planning of power system operations require accurate load demand and renewable energy generation estimation studies, especially for short-term periods (hour-ahead, day-ahead). The time-sequence variation in aggregated electrical load and bulk photovoltaic power output are considered in this study to promote the supply-demand balance in the short-term optimal operational scheduling framework of a reconfigurable microgrid by integrating the forecasting results. A bi-directional long short-term memory units based deep recurrent neural network model, DRNN Bi-LSTM, is designed to provide accurate aggregated electrical load demand and the bulk photovoltaic power generation forecasting results. The real-world data set is utilized to test the proposed forecasting model, and based on the results, the DRNN Bi-LSTM model performs better in comparison with other methods in the surveyed literature. Meanwhile, the optimal operational scheduling framework is studied by simultaneously making a day-ahead optimal reconfiguration plan and optimal dispatching of controllable distributed generation units which are considered as optimal operation solutions. A combined approach of basic and selective particle swarm optimization methods, PSO&SPSO, is utilized for that combinatorial, non-linear, non-deterministic polynomial-time-hard (NP-hard), complex optimization study by aiming minimization of the aggregated real power losses of the microgrid subject to diverse equality and inequality constraints. A reconfigurable microgrid test system that includes photovoltaic power and diesel distributed generators is used for the optimal operational scheduling framework. As a whole, this study contributes to the optimal operational scheduling of reconfigurable microgrid with electrical energy demand and renewable energy forecasting by way of the developed DRNN Bi-LSTM model. The results indicate that optimal operational scheduling of reconfigurable microgrid with deep learning assisted approach could not only reduce real power losses but also improve system in an economic way.https://www.mdpi.com/2071-1050/12/4/1653day-ahead operational schedulingreconfigurable microgriddrnn bi-lstmaggregated load forecastingbulk photovoltaic power generation forecasting
collection DOAJ
language English
format Article
sources DOAJ
author Fatma Yaprakdal
M. Berkay Yılmaz
Mustafa Baysal
Amjad Anvari-Moghaddam
spellingShingle Fatma Yaprakdal
M. Berkay Yılmaz
Mustafa Baysal
Amjad Anvari-Moghaddam
A Deep Neural Network-Assisted Approach to Enhance Short-Term Optimal Operational Scheduling of a Microgrid
Sustainability
day-ahead operational scheduling
reconfigurable microgrid
drnn bi-lstm
aggregated load forecasting
bulk photovoltaic power generation forecasting
author_facet Fatma Yaprakdal
M. Berkay Yılmaz
Mustafa Baysal
Amjad Anvari-Moghaddam
author_sort Fatma Yaprakdal
title A Deep Neural Network-Assisted Approach to Enhance Short-Term Optimal Operational Scheduling of a Microgrid
title_short A Deep Neural Network-Assisted Approach to Enhance Short-Term Optimal Operational Scheduling of a Microgrid
title_full A Deep Neural Network-Assisted Approach to Enhance Short-Term Optimal Operational Scheduling of a Microgrid
title_fullStr A Deep Neural Network-Assisted Approach to Enhance Short-Term Optimal Operational Scheduling of a Microgrid
title_full_unstemmed A Deep Neural Network-Assisted Approach to Enhance Short-Term Optimal Operational Scheduling of a Microgrid
title_sort deep neural network-assisted approach to enhance short-term optimal operational scheduling of a microgrid
publisher MDPI AG
series Sustainability
issn 2071-1050
publishDate 2020-02-01
description The inherent variability of large-scale renewable energy generation leads to significant difficulties in microgrid energy management. Likewise, the effects of human behaviors in response to the changes in electricity tariffs as well as seasons result in changes in electricity consumption. Thus, proper scheduling and planning of power system operations require accurate load demand and renewable energy generation estimation studies, especially for short-term periods (hour-ahead, day-ahead). The time-sequence variation in aggregated electrical load and bulk photovoltaic power output are considered in this study to promote the supply-demand balance in the short-term optimal operational scheduling framework of a reconfigurable microgrid by integrating the forecasting results. A bi-directional long short-term memory units based deep recurrent neural network model, DRNN Bi-LSTM, is designed to provide accurate aggregated electrical load demand and the bulk photovoltaic power generation forecasting results. The real-world data set is utilized to test the proposed forecasting model, and based on the results, the DRNN Bi-LSTM model performs better in comparison with other methods in the surveyed literature. Meanwhile, the optimal operational scheduling framework is studied by simultaneously making a day-ahead optimal reconfiguration plan and optimal dispatching of controllable distributed generation units which are considered as optimal operation solutions. A combined approach of basic and selective particle swarm optimization methods, PSO&SPSO, is utilized for that combinatorial, non-linear, non-deterministic polynomial-time-hard (NP-hard), complex optimization study by aiming minimization of the aggregated real power losses of the microgrid subject to diverse equality and inequality constraints. A reconfigurable microgrid test system that includes photovoltaic power and diesel distributed generators is used for the optimal operational scheduling framework. As a whole, this study contributes to the optimal operational scheduling of reconfigurable microgrid with electrical energy demand and renewable energy forecasting by way of the developed DRNN Bi-LSTM model. The results indicate that optimal operational scheduling of reconfigurable microgrid with deep learning assisted approach could not only reduce real power losses but also improve system in an economic way.
topic day-ahead operational scheduling
reconfigurable microgrid
drnn bi-lstm
aggregated load forecasting
bulk photovoltaic power generation forecasting
url https://www.mdpi.com/2071-1050/12/4/1653
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