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¿¬±¸¼º°ú > HIGHLY CITED PAPERS (HCP)

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SCIE Article

[Excluded]Incentive-based demand response for smart grid with reinforcement learning and deep neural network
Author Lu, Renzhi; Hong, Hong, Seung Ho;
Corresponding Author Info Prof. Hong, Seung Ho (ÀüÀÚ°øÇкΠȫ½ÂÈ£ ±³¼ö)
Professor
E-mail ¸ÞÀÏ shhong@hanyang.ac.kr
Document Type
Source APPLIED ENERGY 2019, 236, 937-949
Times Cited Excluded
External Information pdfhttps://doi.org/10.1016/j.apenergy.2018.12.061
Abstract [History]
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[Abstract]
Balancing electricity generation and consumption is essential for smoothing the power grids. Any mismatch between energy supply and demand would increase costs to both the service provider and customers and may even cripple the entire grid. This paper proposes a novel real-time incentive-based demand response algorithm for smart grid systems with reinforcement learning and deep neural network, aiming to help the service provider to purchase energy resources from its subscribed customers to balance energy fluctuations and enhance grid reliability. In particular, to overcome the future uncertainties, deep neural network is used to predict the unknown prices and energy demands. After that, reinforcement learning is adopted to obtain the optimal incentive rates for different customers considering the profits of both service provider and customers. Simulation results show that this proposed incentive-based demand response algorithm induces demand side participation, promotes service provider and customers profitabilities, and improves system reliability by balancing energy resources, which can be regarded as a win-win strategy for both service provider and customers.
Web of Science Categories Energy & Fuels; Engineering, Chemical
Funding
Language
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Scalable 3-D Carbon Nitride Sponge as an Efficient Metal-Free Bifunctional Oxygen Electrocatalyst for Rechargeable Zn-Air Batteries

Author(s) : Shinde, Sambhaji; Lee, Chi-Ho; Sami, Abdul; Kim, Dong-Hyung; Lee, Sang...

Source : ACS NANO  2017, 11, 1, 347-357

Time Cited : excluded

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Scalable 3-D Carbon Nitride Sponge as an Efficient Metal-Free Bifunctional Oxygen Electrocatalyst for Rechargeable Zn-Air Batteries

Author(s) : Shinde, Sambhaji; Lee, Chi-Ho; Sami, Abdul; Kim, Dong-Hyung; Lee, Sang...

Source : ACS NANO  2017, 11, 1, 347-357

Time Cited : excluded

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[Excluded] Estimation of gamma-rays, and fast and the thermal neutrons attenuation characteristics for bismuth tellurite and bismuth boro-tellurite glass systems

Author(s) : Lakshminarayana, G; Kebaili, I; Dong, MG; Al-Buriahi, MS; Dahshan, A; ...

Source : JOURNAL OF MATERIALS SCIENCE  J Mater Sci (2020) 55:5750–5771

Time Cited : Excluded

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[Excluded] Estimation of gamma-rays, and fast and the thermal neutrons attenuation characteristics for bismuth tellurite and bismuth boro-tellurite glass systems

Author(s) : Lakshminarayana, G; Kebaili, I; Dong, MG; Al-Buriahi, MS; Dahshan, A; ...

Source : JOURNAL OF MATERIALS SCIENCE  J Mater Sci (2020) 55:5750–5771

Time Cited : Excluded

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[Excluded]A Real-Time Demand-Response Algorithm for Smart Grids: A Stackelberg Game Approach

Author(s) : Yu, M; Hong, SH

Source : IEEE TRANSACTIONS ON SMART GRID  2016, 7, 879-888

Time Cited : Excluded

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[Excluded]A Dynamic pricing demand response algorithm for smart grid: Reinforcement learning approach

Author(s) : Lu, RZ; Hong, SH; Zhang, XF

Source : APPLIED ENERGY  2018,15, 220-230

Time Cited : Excluded

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[Excluded]Incentive-based demand response for smart grid with reinforcement learning and deep neural network

Author(s) : Lu, Renzhi; Hong, Hong, Seung Ho;

Source : APPLIED ENERGY  2019, 236, 937-949

Time Cited : Excluded

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[Excluded] An Incentive-Based Demand Response (DR) Model Considering Composited DR Resources

Author(s) : Yu, Mengmeng; Hong, Seung Ho; Ding, Yuemin; Ye, Xun

Source : IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS  2019, 66, 1488-1498

Time Cited : Excluded

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[Excluded] Combined effect of El Nino-Southern Oscillation and Pacific Decadal Oscillation on the East Asian winter monsoon

Author(s) : Kim, Ji-Won; Yeh, Sang-Wook; Chang, Eun-Chul

Source : CLIMATE DYNAMICS  2014, 42, 3-4, 957-971

Time Cited : Excluded

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[Excluded] Novel visible light active graphitic C3N4-TiO2 composite photocatalyst: Synergistic synthesis, growth

Author(s) : Sridharan, Kishore; Jang, Eunyong; Park, Tae Joo

Source : APPLIED CATALYSIS B-ENVIRONMENTAL  2013, 142, 718-728

Time Cited : Excluded

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Author(s) : Kumar, K. Suresh; Shin, Kyung-Hoon

Source : ECOTOXICOLOGY AND ENVIRONMENTAL SAFETY  2015, 113, 329-352

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[Excluded] Effect of supplementary cementitious materials on reduction of CO2 emissions from concrete

Author(s) : Yang, Keun-Hyeok; Jung, Yeon-Back; Cho, Myung-Sug; Tae, Sung-Ho

Source : JOURNAL OF CLEANER PRODUCTION  2015, 103, 774-783

Time Cited : Excluded

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[Excluded] Engineering of cell microenvironment-responsive polypeptide nanovehicle co-encapsulating a synergistic combination of small molecules for effective chemotherapy in solid tumors

Author(s) : Ramasamy, Thiruganesh; Ruttala, Hima Bindu; Chitrapriya, Nataraj; Poud...

Source : ACTA BIOMATERIALIA  2017, 48, 131-143

Time Cited : Excluded

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[Excluded] Ag/Au/Polypyrrole Core-shell Nanowire Network for Transparent, Stretchable and Flexible Supercapacitor in Wearable Energy Devices

Author(s) : Moon, Hyunjin; Lee, Habeom; Kwon, Jinhyeong; Suh, Young Duk; Kim, Dong...

Source : SCIENTIFIC REPORTS  2017, 7, 41981

Time Cited : Excluded

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[Excluded] Emission of bisphenol analogues including bisphenol A and bisphenol F from wastewater treatment plan

Author(s) : Lee, Sunggyu; Liao, Chunyang; Song, Geum-Ju; Ra, Kongtae; Kannan, Kuru...

Source : CHEMOSPHERE  2015, 119, 1000-1006

Time Cited : Excluded

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