2015
DOI: 10.1016/j.cor.2014.11.001
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Operational planning of combined heat and power plants through genetic algorithms for mixed 0–1 nonlinear programming

Abstract: a b s t r a c tThis paper is concerned with short-term (up to 24 h) operational planning in combined heat and power plants for district energy applications. In such applications, heat and power demands fluctuate on an hourly basis due to changing weather conditions, time-of-day factors and consumer requirements. Plant energy efficiency is highly dependent on ambient temperature and operating load since equipment efficiencies are nonlinear functions of these parameters. In operational planning strategies, nonli… Show more

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Cited by 36 publications
(14 citation statements)
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References 30 publications
(31 reference statements)
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“…The greatest advantage of the genetic algorithm is that it typically performs well in a global search and has a wide application in global optimization. Therefore, a genetic algorithm may be seen to have a specific advantage in processing complex nonlinear programing (Gopalakrishnan & Kosanovic, ). Thus, the developed, nonlinear GP issue in this study was solved using a genetic algorithm.…”
Section: Methodsmentioning
confidence: 99%
“…The greatest advantage of the genetic algorithm is that it typically performs well in a global search and has a wide application in global optimization. Therefore, a genetic algorithm may be seen to have a specific advantage in processing complex nonlinear programing (Gopalakrishnan & Kosanovic, ). Thus, the developed, nonlinear GP issue in this study was solved using a genetic algorithm.…”
Section: Methodsmentioning
confidence: 99%
“…That there are only a handful of matching problem areas to which genetic algorithms have been applied as the solution approach. For example, Gopalakrishnan and Kosanovic (2015) solved an operational planning problem for combined heat and power plants through genetic algorithms and mixed 0-1 nonlinear programming [16]. Touat et al (2017) constructed a hybridization of genetic algorithms and fuzzy logic for the single-machine scheduling with flexible maintenance problem under human resource constraints [17].…”
Section: Safe Matching Decision-makingmentioning
confidence: 99%
“…Since a stochastic and fuzzy system demonstrates complex nonlinear characteristics in its objectives and constraints which are not easy to be converted into deterministic variables, it is difficult to solve a large-scale nonlinear problem by traditional algorithms. Fortunately, many heuristic algorithms such as genetic algorithm have been developed by researchers to solve deterministic problems [28] as well as nonlinear problems [29]. In order to apply genetic algorithm in stochastic and fuzzy urban drainage system, its nondeterministic variables would be sampled based on probability and possibility distribution method and then a simulation model could be developed [30].…”
Section: An Improved Genetic Algorithm For Stochastic and Fuzzy Systemmentioning
confidence: 99%