2018
DOI: 10.1140/epjb/e2017-80371-5
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A generalized entropy optimization and Maxwell–Boltzmann distribution

Abstract: Abstract. Based on the results of the diffusion entropy analysis of Super-Kamiokande solar neutrino data, a generalized entropy, introduced earlier by the first author is optimized under various conditions and it is shown that Maxwell-Boltzmann distribution, Raleigh distribution and other distributions can be obtained through such optimization procedures. Some properties of the entropy measure are examined and then Maxwell-Boltzmann and Raleigh densities are extended to multivariate cases. Connections to geome… Show more

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“…e vehicle scheduling problem with specified requirements is studied in [18,19], and particle swarm optimization is used to solve it. From the perspective of traditional VRP, literature [20] proposes a model based on the dual satisfaction of employees and customers and devises a hybrid algorithm to solve it. e vehicle route optimization model of urban distribution is proposed in literature [21] based on the calculation of vehicle travel time between nodes of the distribution network.…”
Section: Related Workmentioning
confidence: 99%
“…e vehicle scheduling problem with specified requirements is studied in [18,19], and particle swarm optimization is used to solve it. From the perspective of traditional VRP, literature [20] proposes a model based on the dual satisfaction of employees and customers and devises a hybrid algorithm to solve it. e vehicle route optimization model of urban distribution is proposed in literature [21] based on the calculation of vehicle travel time between nodes of the distribution network.…”
Section: Related Workmentioning
confidence: 99%