Location via proxy:   [ UP ]  
[Report a bug]   [Manage cookies]                
skip to main content
research-article

Joint optimization of day-ahead of a microgrid including demand response and electric vehicles

Published: 20 November 2024 Publication History

Abstract

In this work, we discuss how to schedule responsive loads and electric vehicles at the same time in a microgrid that utilizes wind and PV electricity to save running costs and pollutants. The proposed methodology utilizes EVs for reducing high levels of electricity consumption during peak periods and modifying demand curves, and responsive loads for supplying reserves required to offset the inherent uncertainties of PV and wind generation. In addition, a two-step approach is provided for estimating the anticipated operating cost of the microgrid, which includes both energy and reserve. Minimizing generating and reserve power costs is the first step. The second step is to minimize costs connected with unit scheduling modifications caused by variations in wind and PV production. As a powerful and efficient optimization strategy, improved sunflower optimization (ISFO) algorithm is subsequently employed to solve the corresponding objective optimization problem. Results obtained for an MG on an hourly basis throughout the day show that the ISFO algorithm outperforms other conventional methods. It should be noted that three scenarios have been established to examine how the MG's day-ahead performance is affected by the combined scheduling of EVs and controlled loads. Scenarios 3 remarkably lower than the values presented in Scenarios 1 and 2, the three cost terms the generating cost, the reserve cost, and the starting cost of units are determined as $742.87, $10.16, and $6.01, correspondingly, in this scenario.

References

[1]
Abedi S, Alimardani A, Gharehpetian GB, Riahy GH, and Hosseinian SH A comprehensive method for optimal power management and design of hybrid RES-based autonomous energy systems Renew Sustain Energy Rev 2012 16 3 1577-1587
[2]
Aghaei J, Niknam T, Azizipanah-Abarghooee R, and Arroyo JM Scenario-based dynamic economic emission dispatch considering load and wind power uncertainties Int J Electr Power Energy Syst 2013 1 47 351-367
[3]
Amiri F and Moradi MH Design of a new control method for dynamic control of the two-area microgrid Soft Comput 2023 27 10 6727-6747
[4]
Ashtari B, Alizadeh Bidgoli M, Babaei M, and Ahmarinejad A A two-stage energy management framework for optimal scheduling of multi-microgrids with generation and demand forecasting Neural Comput Appl 2022 34 14 12159-12173
[5]
Askarzadeh A and Gharibi M A novel approach for optimal power scheduling of distributed energy resources in microgrids Soft Comput 2022 26 8 4045-4056
[6]
Basu M Day-ahead scheduling of isolated microgrid integrated demand side management Soft Comput 2024 28 6 5015-5027
[7]
Beraldi P, De Simone F, and Violi A Generating scenario trees: a parallel integrated simulation–optimization approach J Comput Appl Math 2010 233 9 2322-2331
[8]
Dey B, Bhattacharyya B, Srivastava A, and Shivam K Solving energy management of renewable integrated microgrid systems using crow search algorithm Soft Comput 2020 24 10433-10454
[9]
Entezari S, Abdolazimi O, Fakhrzad MB, Shishebori D, and Ma J A Bi-objective stochastic blood type supply chain configuration and optimization considering time-dependent routing in post-disaster relief logistics Comput Ind Eng 2024 1 188 109899
[10]
Gomes GF, da Cunha SS, and Ancelotti AC A sunflower optimization (SFO) algorithm applied to damage identification on laminated composite plates Eng Comput 2019 1 35 619-626
[11]
Hai T, Zhou J, and Latifi M Stochastic energy scheduling in microgrid with real-time and day-ahead markets in the presence of renewable energy resources Soft Comput 2023 27 22 16881-16896
[12]
Han S, Han S, Sezaki K (2011) Optimal control of the plug-in electric vehicles for V2G frequency regulation using quadratic programming. InISGT 2011, pp 1–6. IEEE.
[13]
Hussien AM, Hasanien HM, and Mekhamer SF Sunflower optimization algorithm-based optimal PI control for enhancing the performance of an autonomous operation of a microgrid Ain Shams Eng J 2021 12 2 1883-1893
[14]
Jadoun VK, Sharma N, Jha P, Malik H, and Garcia Márquez FP Optimal scheduling of dynamic pricing based v2g and g2v operation in microgrid using improved elephant herding optimization Sustainability 2021 13 14 7551
[15]
Jagatheesan K, Boopathi D, Samanta S, Anand B, and Dey N Grey wolf optimization algorithm-based PID controller for frequency stabilization of interconnected power generating system Soft Comput 2024 28 6 5057-5070
[16]
Kabatepe B and Türkay M A bi-criteria optimization model to analyze the impacts of electric vehicles on costs and emissions Comput Chem Eng 2017 12 102 156-168
[17]
Kavousi-Fard A, Abunasri A, Zare A, and Hoseinzadeh R Impact of plug-in hybrid electric vehicles charging demand on the optimal energy management of renewable micro-grids Energy 2014 15 78 904-915
[18]
Li J, Liu L, Huang G, and Zeng G A fuzzy-set approach for addressing uncertainties in risk assessment of hydrocarbon-contaminated site Water Air Soil Pollut 2006 171 5-18
[19]
Lin J, Leung KC, and Li VO Optimal scheduling with vehicle-to-grid regulation service IEEE Internet Things J 2014 1 6 556-569
[20]
Moghimi H, Ahmadi A, Aghaei J, and Rabiee A Stochastic techno-economic operation of power systems in the presence of distributed energy resources Int J Electr Power Energy Syst 2013 45 1 477-488
[21]
Mohammadi S, Mozafari B, Solimani S, and Niknam T An adaptive modified firefly optimisation algorithm based on hong's point estimate method to optimal operation management in a microgrid with consideration of uncertainties Energy 2013 1 51 339-348
[22]
Mohammadi S, Soleymani S, and Mozafari B Scenario-based stochastic operation management of microgrid including wind, photovoltaic, micro-turbine, fuel cell and energy storage devices Int J Electr Power Energy Syst 2014 1 54 525-535
[23]
Morais H, Sousa T, Vale Z, and Faria P Evaluation of the electric vehicle impact in the power demand curve in a smart grid environment Energy Convers Manage 2014 1 82 268-282
[24]
Patel S, Ghosh A, and Ray PK Optimum control of power flow management in PV, wind, and battery-integrated hybrid microgrid systems by implementing in real-time digital simulator-based platform Soft Comput 2023 27 15 10863-10891
[25]
Penangsang O (2016) Economic dispatch of multi microgrid systems with renewable energy sources using particle swarm optimization. In: 2016 international seminar on intelligent technology and its applications (ISITIA), pp 595–600. IEEE
[26]
Razavi SE, Nezhad AE, Mavalizadeh H, Raeisi F, and Ahmadi A Robust hydrothermal unit commitment: a mixed-integer linear framework Energy 2018 15 165 593-602
[27]
Shaheen AM, Elattar EE, El-Sehiemy RA, and Elsayed AM An improved sunflower optimization algorithm-based Monte Carlo simulation for efficiency improvement of radial distribution systems considering wind power uncertainty IEEE Access 2020 28 9 2332-2344
[28]
Shojaabadi S, Abapour S, Abapour M, and Nahavandi A Simultaneous planning of plug-in hybrid electric vehicle charging stations and wind power generation in distribution networks considering uncertainties Renew Energy 2016 1 99 237-252
[29]
Soares J, Morais H, Sousa T, Vale Z, and Faria P Day-ahead resource scheduling including demand response for electric vehicles IEEE Trans Smart Grid 2013 4 1 596-605
[30]
Vandana CP, Chaturvedi A, Ambala S, Dineshkumar R, Ramesh JV, and Alfurhood BS Optimizing residential DC microgrid energy management system using artificial intelligence Soft Comput 2023 24 1-8
[31]
Yang Z, Li K, and Foley A Computational scheduling methods for integrating plug-in electric vehicles with power systems: a review Renew Sustain Energy Rev 2015 1 51 396-416
[32]
Yao W, Zhao J, Wen F, Xue Y, and Ledwich G A hierarchical decomposition approach for coordinated dispatch of plug-in electric vehicles IEEE Trans Power Syst 2013 28 3 2768-2778
[33]
Yuan Z, Wang W, Wang H, and Razmjooy N A new technique for optimal estimation of the circuit-based PEMFCs using developed sunflower optimization algorithm Energy Rep 2020 1 6 662-671
[34]
Zhao B, Shi Y, Dong X, Luan W, and Bornemann J Short-term operation scheduling in renewable-powered microgrids: a duality-based approach IEEE Trans Sustain Energy 2013 5 1 209-217

Recommendations

Comments

Information & Contributors

Information

Published In

cover image Soft Computing - A Fusion of Foundations, Methodologies and Applications
Soft Computing - A Fusion of Foundations, Methodologies and Applications  Volume 28, Issue 21
Nov 2024
575 pages

Publisher

Springer-Verlag

Berlin, Heidelberg

Publication History

Published: 20 November 2024
Accepted: 20 June 2024

Author Tags

  1. Microgrid
  2. Demand response
  3. PV
  4. Wind
  5. ISFO algorithm
  6. Electrical vehicles

Qualifiers

  • Research-article

Contributors

Other Metrics

Bibliometrics & Citations

Bibliometrics

Article Metrics

  • 0
    Total Citations
  • 0
    Total Downloads
  • Downloads (Last 12 months)0
  • Downloads (Last 6 weeks)0
Reflects downloads up to 25 Jan 2025

Other Metrics

Citations

View Options

View options

Figures

Tables

Media

Share

Share

Share this Publication link

Share on social media