<p><P>This book is dedicated to Prof. J. Kapur and his contributions to the field of entropy measures and maximum entropy applications. Eminent scholars in various fields of applied information theory have been invited to contribute to this Festschrift, collected on the occasion of his 75<SUP>th</SU
Minimum entropy production principle
โ Scribed by Jaynes E.T.
- Year
- 1980
- Tongue
- English
- Leaves
- 23
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
It seems intuitively reasonable that Gibbs' variational principle determining the conditions of heterogeneous equilibrium can be generalized to nonequilibrium conditions. That is, a nonequilibrium steady state should be the one that makes some kind of generalized entropy production stationary; and even in the presence of irreversible fluxes, the condition for migrational equilibrium should still be the equality of some generalized chemical potentials.
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