2020
DOI: 10.1109/access.2020.3018587
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Optimal Operation of Integrated Energy System Based on Exergy Analysis and Adaptive Genetic Algorithm

Abstract: Due to the rising tensions surrounding the energy industry in response to the depletion of non-renewable energy sources and pollution of the environment, it is especially important to improve the energy utilization rate of integrated energy systems (IESs). Exergy is an important index to measure energy quality. Therefore, this paper proposes an IES operation optimization method based on exergy analysis and an adaptive genetic algorithm. First, based on the energy network theory, a unified expression of the exe… Show more

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Cited by 27 publications
(13 citation statements)
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“…Arabli et al (2013) studies the integrated optimization problem of the heating ventilation system (HVAC) powered by wind-solar storage and uses the genetic algorithm (GA)-based two-point estimation method to optimize the model. Chen et al (2020) established an exergy analysis model for the hybrid energy system using an adaptive genetic algorithm and verified the validity of the model for the Bali hybrid energy system model. There are also some other new algorithms that can also be used to solve the configuration optimization problem of hybrid energy systems, such as ant colony algorithm (Abdolvahhab and Ehsan, 2015), big bang-big crunch algorithm (Saeedeh and Shirzad, 2016) and bee swarm algorithm (Akbar and Alireza, 2014).…”
Section: Intelligent Optimization Techniquesmentioning
confidence: 88%
“…Arabli et al (2013) studies the integrated optimization problem of the heating ventilation system (HVAC) powered by wind-solar storage and uses the genetic algorithm (GA)-based two-point estimation method to optimize the model. Chen et al (2020) established an exergy analysis model for the hybrid energy system using an adaptive genetic algorithm and verified the validity of the model for the Bali hybrid energy system model. There are also some other new algorithms that can also be used to solve the configuration optimization problem of hybrid energy systems, such as ant colony algorithm (Abdolvahhab and Ehsan, 2015), big bang-big crunch algorithm (Saeedeh and Shirzad, 2016) and bee swarm algorithm (Akbar and Alireza, 2014).…”
Section: Intelligent Optimization Techniquesmentioning
confidence: 88%
“…Adaptive genetic algorithm [23] can be used as a kind of genetic algorithm, and the general way of realization is similar to that of genetic algorithm. First, analyze various variables for initial and evolution and then determine the scale of occurrence of each biological population, the probability of crossover, the probability of occurrence of mutation, and a series of parameters.…”
Section: Methodsmentioning
confidence: 99%
“…In order to solve the above model efficiently, a solution method combining a genetic algorithm [29] and interval analysis method is adopted in this paper, and it is based on affine coordinate transformation. Its basic process is shown in Figure 3.…”
Section: Algorithm Flowmentioning
confidence: 99%