Matches in SemOpenAlex for { <https://semopenalex.org/work/W2977221689> ?p ?o ?g. }
- W2977221689 endingPage "2040" @default.
- W2977221689 startingPage "2040" @default.
- W2977221689 abstract "In this research, a novel enhanced gravitational search algorithm (EGSA) is proposed to resolve the multi-objective optimization model, considering the power generation of a hydropower enterprise and the peak operation requirement of a power system. In the proposed method, the standard gravity search algorithm (GSA) was chosen as the fundamental execution framework; the opposition learning strategy was adopted to increase the convergence speed of the swarm; the mutation search strategy was chosen to enhance the individual diversity; the elastic-ball modification strategy was used to promote the solution feasibility. Additionally, a practical constraint handling technique was introduced to improve the quality of the obtained agents, while the technique for order preference by similarity to an ideal solution method (TOPSIS) was used for the multi-objective decision. The numerical tests of twelve benchmark functions showed that the EGSA method could produce better results than several existing evolutionary algorithms. Then, the hydropower system located on the Wu River of China was chosen to test the engineering practicality of the proposed method. The results showed that the EGSA method could obtain satisfying scheduling schemes in different cases. Hence, an effective optimization method was provided for the multi-objective operation of hydropower system." @default.
- W2977221689 created "2019-10-03" @default.
- W2977221689 creator A5005035346 @default.
- W2977221689 creator A5025879011 @default.
- W2977221689 creator A5033992808 @default.
- W2977221689 creator A5039084645 @default.
- W2977221689 creator A5091690586 @default.
- W2977221689 date "2019-09-29" @default.
- W2977221689 modified "2023-10-18" @default.
- W2977221689 title "Multi-Objective Operation of Cascade Hydropower Reservoirs Using TOPSIS and Gravitational Search Algorithm with Opposition Learning and Mutation" @default.
- W2977221689 cites W1102883814 @default.
- W2977221689 cites W1888289137 @default.
- W2977221689 cites W1917220576 @default.
- W2977221689 cites W1972132749 @default.
- W2977221689 cites W1979115862 @default.
- W2977221689 cites W1992030915 @default.
- W2977221689 cites W2001979953 @default.
- W2977221689 cites W2014484138 @default.
- W2977221689 cites W2023570469 @default.
- W2977221689 cites W2029111824 @default.
- W2977221689 cites W2035470091 @default.
- W2977221689 cites W2039911195 @default.
- W2977221689 cites W2044206952 @default.
- W2977221689 cites W2044451664 @default.
- W2977221689 cites W2046648914 @default.
- W2977221689 cites W2060037118 @default.
- W2977221689 cites W2060111599 @default.
- W2977221689 cites W2061438946 @default.
- W2977221689 cites W2061705024 @default.
- W2977221689 cites W2067231246 @default.
- W2977221689 cites W2069790524 @default.
- W2977221689 cites W2070283188 @default.
- W2977221689 cites W2072665078 @default.
- W2977221689 cites W2072955302 @default.
- W2977221689 cites W2085432006 @default.
- W2977221689 cites W2087993000 @default.
- W2977221689 cites W2099998624 @default.
- W2977221689 cites W2103887885 @default.
- W2977221689 cites W2290883490 @default.
- W2977221689 cites W2304023353 @default.
- W2977221689 cites W2317652305 @default.
- W2977221689 cites W2320880965 @default.
- W2977221689 cites W2416040310 @default.
- W2977221689 cites W2523495036 @default.
- W2977221689 cites W2548720625 @default.
- W2977221689 cites W2560237449 @default.
- W2977221689 cites W2593445235 @default.
- W2977221689 cites W2604438643 @default.
- W2977221689 cites W2611704908 @default.
- W2977221689 cites W2621851029 @default.
- W2977221689 cites W2623832670 @default.
- W2977221689 cites W2625620334 @default.
- W2977221689 cites W2745003183 @default.
- W2977221689 cites W2760225670 @default.
- W2977221689 cites W2768657012 @default.
- W2977221689 cites W2781875619 @default.
- W2977221689 cites W2790206624 @default.
- W2977221689 cites W2791637324 @default.
- W2977221689 cites W2792805370 @default.
- W2977221689 cites W2796301380 @default.
- W2977221689 cites W2800152306 @default.
- W2977221689 cites W2800499720 @default.
- W2977221689 cites W2802223979 @default.
- W2977221689 cites W2808027051 @default.
- W2977221689 cites W2808223626 @default.
- W2977221689 cites W2810051205 @default.
- W2977221689 cites W2883117701 @default.
- W2977221689 cites W2886356923 @default.
- W2977221689 cites W2889738976 @default.
- W2977221689 cites W2894560469 @default.
- W2977221689 cites W2896339273 @default.
- W2977221689 cites W2902248801 @default.
- W2977221689 cites W2908412011 @default.
- W2977221689 cites W2910284364 @default.
- W2977221689 cites W2912548394 @default.
- W2977221689 cites W2915364104 @default.
- W2977221689 cites W2922475237 @default.
- W2977221689 cites W2927742509 @default.
- W2977221689 cites W2939411050 @default.
- W2977221689 cites W2948268507 @default.
- W2977221689 cites W2948269858 @default.
- W2977221689 cites W2949533264 @default.
- W2977221689 cites W2950095140 @default.
- W2977221689 cites W2958709854 @default.
- W2977221689 cites W2959915043 @default.
- W2977221689 cites W2961468932 @default.
- W2977221689 cites W2969226653 @default.
- W2977221689 cites W2969228760 @default.
- W2977221689 cites W589766567 @default.
- W2977221689 cites W890507621 @default.
- W2977221689 cites W2064351132 @default.
- W2977221689 doi "https://doi.org/10.3390/w11102040" @default.
- W2977221689 hasPublicationYear "2019" @default.
- W2977221689 type Work @default.
- W2977221689 sameAs 2977221689 @default.
- W2977221689 citedByCount "7" @default.
- W2977221689 countsByYear W29772216892019 @default.
- W2977221689 countsByYear W29772216892020 @default.