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Title Future Of Sustainable Renewable-Based Energy Systems In Smart City Industry: Interruptible Load Scheduling Perspective
ID_Doc 27522
Authors Yang H.; Zhang S.; Zeng J.; Tang S.; Xiong S.
Year 2023
Published Solar Energy, 263
DOI http://dx.doi.org/10.1016/j.solener.2023.111866
Abstract As the industrial and household loads continue to grow in smart cities, power supply and usage balance is getting more challenging. The increase in supply-side energy production is one method of alleviating peak demand proposed by a few investigations. As peak loads last for a short time, additional installations might be required. In addition, facilities that store energy can be used to reduce peak demand. As a consequence of the previous investigation, interruptible load regulation was not taken into account in optimizing system performance. The regulation of interruptible loads can greatly reduce system peak loads in smart city and within the concept of microgrids (MGs). The study proposes an interruptible load scheduling (ILS) scheme that considers consumer subsidy rates with the goal of reducing the peak load of the MG and its operating prices. To this end, a digital twin is developed in which the consumer interruption load time and minimal per-day load decrease restrictions have been completely met in the scheme. The ILS model is solved using a combination of the Min-Conflict Algorithm and the Gray Wolf Optimization Algorithm. Furthermore, simulations demonstrate the efficiency of the suggested algorithm and the show the substantial benefits of the scheme in reducing peak loads and operating prices in smart cities. © 2023
Author Keywords Digital twin; Interruptible load scheduling; Peak load; Smart city; User subsidy rate


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